References
- Murphy KP. Machine learning: a probabilistic perspective, 1st ed. Cambridge: The MIT Press, 2012:25
- Fenton JJ, Taplin SH, Carney PA, Abraham L, Sickles EA, D'Orsi C, et al. Influence of computer-aided detection on performance of screening mammography. N Engl J Med 2007;356:1399-1409 https://doi.org/10.1056/NEJMoa066099
- Lehman CD, Wellman RD, Buist DS, Kerlikowske K, Tosteson AN, Miglioretti DL, et al. Diagnostic accuracy of digital screening mammography with and without computer-aided detection. JAMA Intern Med 2015;175:1828-1837 https://doi.org/10.1001/jamainternmed.2015.5231
- Wang Q, Garrity GM, Tiedje JM, Cole JR. Naive Bayesian classifier for rapid assignment of rRNA sequences into the new bacterial taxonomy. Appl Environ Microbiol 2007;73:5261-5267 https://doi.org/10.1128/AEM.00062-07
- Byvatov E, Fechner U, Sadowski J, Schneider G. Comparison of support vector machine and artificial neural network systems for drug/nondrug classification. J Chem Inf Comput Sci 2003;43:1882-1889 https://doi.org/10.1021/ci0341161
- Tong S, Chang E, eds. Support vector machine active learning for image retrieval. Proceedings of the 9th ACM International Conference on Multimedia; 2001 October 5-September 30; Ottawa, Canada. New York: ACM, 2001:107
- Arbib MA. The handbook of brain theory and neural networks, 2nd ed. Boston: The MIT Press, 2003
- Drucker H, Burges CJC, Kaufman L, Smola A, Vapnik V. Support vector regression machines. Adv Neural Inf Process Syst 1997;9:155-161
- Yu PS, Chen ST, Chang IF. Support vector regression for realtime flood stage forecasting. J Hydrol 2006;328:704-716 https://doi.org/10.1016/j.jhydrol.2006.01.021
- Tay FEH, Cao L. Application of support vector machines in financial time series forecasting. Omega 2001;29:309-317 https://doi.org/10.1016/S0305-0483(01)00026-3
- Haykin SS. Neural networks: a comprehensive foundation. New York: Macmillan College Publishing, 1994:107-116
- Kiwiel KC. Convergence and efficiency of subgradient methods for quasiconvex minimization. Mathe Program 2001;90:1-25 https://doi.org/10.1007/PL00011414
- Deng L, Hinton G, Kingsbury B, eds. New types of deep neural network learning for speech recognition and related applications: an overview. Proceedings of 2013 IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP); 2013 May 26-31; Vancouver, Canada. IEEE, 2013:8599-8603
- Hinton GE, Osindero S, Teh YW. A fast learning algorithm for deep belief nets. Neural Comput 2006;18:1527-1554 https://doi.org/10.1162/neco.2006.18.7.1527
- A Neural Network Playground-TensorFlow. Playground. tensorflow.org Web site. http://playground.tensorflow.org. Accessed April 1, 2017
- Jia Y, Shelhamer E, Donahue J, Karayev S, Long J, Girshick R, et al., eds. Caffe: convolutional architecture for fast feature embedding. Proceedings of the 22nd ACM International Conference on Multimedia; 2014 November 3-7; Orlando, FL, USA. New York: ACM, 2014:675-678
- Yu D, Eversole A, Seltzer ML, Yao K, Huang Z, Guenter B, et al. An introduction to computational networks and the computational network toolkit. New York: Microsoft Research, 2014
- Abadi M, Barham P, Chen J, Chen Z, Davis A, Dean J, et al., eds. TensorFlow: a system for large-scale machine learning. Proceedings of the 12th USENIX Symposium on Operating Systems Design and Implementation; 2016 November 2-4; Savannah, GA, USA. Berkeley: USENIX Association, 2016:265-283
- The Theano Development Team, Al-Rfou R, Alain G, Almahairi A, Angermueller C, Bahdanau D, et al. Theano: a python framework for fast computation of mathematical expressions. ArXiv org Web site. https://arxiv.org/abs/1605.02688. Accessed April 1, 2017
- Collobert R, van der Maaten L, Joulin A, eds. Torchnet: an open-source platform for (deep) learning research. Proceedings of the 33rd International Conference on Machine Learning (ICML-2016); 2016 June 19-24; New York, NY, USA. New York: JMLR, 2016
- Hubel DH, Wiesel TN. Receptive fields and functional architecture of monkey striate cortex. J Physiol 1968;195:215-243 https://doi.org/10.1113/jphysiol.1968.sp008455
- An intuitive explanation of convolutional neural networks. Ujjwalkarn.me Web site. https://ujjwalkarn.me/2016/08/11/intuitive-explanation-convnets/. Accessed April 1, 2017
- Krizhevsky A, Sutskever I, Hinton GE, eds. ImageNet classification with deep convolutional neural networks. Proceedings of the 25th International Conference on Neural Information Processing Systems; 2012 December 3-6; Lake Tahoe, NV, USA: Curran Associates Inc., 2012:1-9
- Mikolov T, Karafiat M, Burget L, Cernocky J, Khudanpur S, eds. Recurrent neural network based language model. Proceedings of the 11th Annual Conference of the International Speech Communication Association (INTERSPEECH 2010); 2010 September 26-30; Makuhari, Japan. International Speech Communication Association, 2010:1045-1048
- Gregor K, Danihelka I, Graves A, Rezende DJ, Wierstra D, eds. DRAW: a recurrent neural network for image generation. Proceedings of the 32nd International Conference on Machine Learning (ICML-2015); 2015 July 6-11; Lille, France. JMLR, 2015:1462-1471
- Cires˛an D, Meier U, Masci J, Schmidhuber J. Multi-column deep neural network for traffic sign classification. Neural Netw 2012;32:333-338 https://doi.org/10.1016/j.neunet.2012.02.023
- Ning F, Delhomme D, LeCun Y, Piano F, Bottou L, Barbano PE. Toward automatic phenotyping of developing embryos from videos. IEEE Trans Image Process 2005;14:1360-1371 https://doi.org/10.1109/TIP.2005.852470
- Chen LC, Papandreou G, Kokkinos I, Murphy K, Yuille AL. Semantic image segmentation with deep convolutional nets and fully connected CRFs. ArXiv.org Web site. https://arxiv.org/abs/1412.7062. Accessed April 1, 2017
- Russakovsky O, Deng J, Su H, Krause J, Satheesh S, Ma S, et al. ImageNet Large Scale Visual Recognition Challenge. Int J Comput Vis 2015;115:211-252 https://doi.org/10.1007/s11263-015-0816-y
- Dahl GE, Sainath TN, Hinton GE, eds. Improving deep neural networks for LVCSR using rectified linear units and dropout. Proceedings of the 38th IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP '13); 2013 May 26-31; Vancouver, Canada. IEEE, 2013:8609-8613
- Krizhevsky A, Sutskever I, Hinton GE. ImageNet classification with deep convolutional neural networks. In: Pereira F, Burges CJC, Bottou L, Weinberger KQ, eds. Advances in neural information processing system 25. Nevada: Curran Associates Inc., 2012:1097-1105
- Large Scale Visual Recognition Challenge 2016 (ILSVRC2016) results. Image-net.org Website. http://image-net.org/challenges/LSVRC/2016/. Accessed April 1, 2017
- Ren S, He K, Girshick R, Sun J, eds. Faster R-CNN: towards real-time object detection with region proposal networks. Proceedings of the 28th International Conference on Neural Information Processing Systems (NIPS-2015); 2015 December 7-12; Montreal, Canada. Cambridge: MIT Press, 2015:91-99
- Shelhamer E, Long J, Darrell T. Fully convolutional networks for semantic segmentation. IEEE Trans Pattern Anal Mach Intell 2017;39:640-651 https://doi.org/10.1109/TPAMI.2016.2572683
- Johnson J, Karpathy A, Fei LF, eds. DenseCap: fully convolutional localization networks for dense captioning. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2016 June 27-30; Seattle, WA, USA. IEEE, 2016:4565-4574
- Antol S, Agrawal A, Lu J, Mitchell M, Batra D, Zitnick CL, et al, eds. VQA: visual question answering. Proceedings of the IEEE International Conference on Computer Vision (ICCV); 2015 December 7-13; Santiago, Chile. IEEE, 2015:2425-2433
- Antoniol G, Fiutem R, Flor R, Lazzari G. Radiological reporting based on voice recognition. In: Bass LJ, Gornostaev J, Unger C, eds. Human-Computer Interaction. Proceedings of the third International Conference, EWHCI'93 Moscow; 1993 August 3-7; Moscow, Russia. Moscow: Springer, 1993:242-253
- Antoniol G, Brugnara F, Dalla Palma F, Lazzari G, Moser E. A.RE.S.: an interface for automatic reporting by speech. In: Adlassnig KP, Grabner G, Bengtsson S, Hansen R, eds. Proceedings of Medical Informatics Europe 1991; 1991 August 19-22; Vienna, Austria. Berlin, Heidelberg: Springer-Verlag; 1991:150-154
- Bahl LR, Jelinek F, Mercer RL. A maximum likelihood approach to continuous speech recognition. IEEE Trans Pattern Anal Mach Intell 1983;5:179-190
- Baker JK. Trainable grammars for speech recognition. J Acousti Soc Am 1979;65(S1):S132
- Middleton I, Damper RI. Segmentation of magnetic resonance images using a combination of neural networks and active contour models. Med Eng Phys 2004;26:71-86 https://doi.org/10.1016/S1350-4533(03)00137-1
- Pereira S, Pinto A, Alves V, Silva CA. Brain tumor segmentation using convolutional neural networks in MRI images. IEEE Trans Med Imaging 2016;35:1240-1251 https://doi.org/10.1109/TMI.2016.2538465
- Moeskops P, Viergever MA, Mendrik AM, de Vries LS, Benders MJ, Isgum I. Automatic segmentation of MR brain images with a convolutional neural network. IEEE Trans Med Imaging 2016;35:1252-1261 https://doi.org/10.1109/TMI.2016.2548501
- Ciresan D, Giusti A, Gambardella LM, Schmidhuber J, eds. Deep neural networks segment neuronal membranes in electron microscopy images. Proceedings of the 25th International Conference on Neural Information Processing Systems; 2012 December 3-6; Lake Tahoe, NV, USA. Curran Associates Inc., 2012:2843-2851
- Prasoon A, Petersen K, Igel C, Lauze F, Dam E, Nielsen M. Deep feature learning for knee cartilage segmentation using a triplanar convolutional neural network. Med Image Comput Comput Assist Interv 2013;16(Pt 2):246-253
- Glavan CC, Holban S. Segmentation of bone structure in X-ray images using convolutional neural network. Adv Electr Comput Eng 2013;13:87-94 https://doi.org/10.4316/AECE.2013.01015
- Cires˛an DC, Giusti A, Gambardella LM, Schmidhuber J. Mitosis detection in breast cancer histology images with deep neural networks. Med Image Comput Comput Assist Interv 2013;16(Pt 2):411-418
- Kang K, Wang X. Fully convolutional neural networks for crowd segmentation. ArXiv.org Web site. http://arxiv.org/abs/1411.4464. Accessed April 1, 2017
- Roura E, Oliver A, Cabezas M, Valverde S, Pareto D, Vilanova JC, et al. A toolbox for multiple sclerosis lesion segmentation. Neuroradiology 2015;57:1031-1043 https://doi.org/10.1007/s00234-015-1552-2
- Brosch T, Yoo Y, Tang LYW, Li DKB, Traboulsee A, Tam R. Deep convolutional encoder networks for multiple sclerosis lesion segmentation. In: Navab N, Hornegger J, Wells WM, Frangi AF, eds. Medical Image Computing and Computer-Assisted Intervention-MICCAI 2015. New York: Spinger, 2015:3-11
- Brosch T, Tang LY, Yoo Y, Li DK, Traboulsee A, Tam R. Deep 3D convolutional encoder networks with shortcuts for multiscale feature integration applied to multiple sclerosis lesion segmentation. IEEE Trans Med Imaging 2016;35:1229-1239 https://doi.org/10.1109/TMI.2016.2528821
- LeCun Y, Bottou L, Bengio Y, Haffner P. Gradient-based learning applied to document recognition. Proc IEEE 1998;86:2278-2324 https://doi.org/10.1109/5.726791
- Zeiler MD, Taylor GW, Fergus R, eds. Adaptive deconvolutional networks for mid and high level feature learning. Proceedings of the 2011 International Conference on Computer Vision; 2011 November 6-13; Barcelona, Spain. Washington, DC: IEEE Computer Society, 2011:2018-2025
- Wohlhart P, Lepetit V, eds. Learning descriptors for object recognition and 3D pose estimation. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:3109-3118
- Dollar P, Welinder P, Perona P, eds. Cascaded pose regression. Proceedings of 2010 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2010 June 13-18; San Francisco, CA, USA. IEEE, 2010:1078-1085
- Zach C, Sanchez AP, Pham MT, eds. A dynamic programming approach for fast and robust object pose recognition from range images. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:196-203
- Mottaghi R, Xiang Y, Savarese S, eds. A coarse-to-fine model for 3D pose estimation and sub-category recognition. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:418-426
- Shun Miao, Wang ZJ, Rui Liao. A CNN regression approach for real-time 2D/3D registration. IEEE Trans Med Imaging 2016;35:1352-1363 https://doi.org/10.1109/TMI.2016.2521800
- Zhao L, Jia K. Deep Adaptive Log-demons: diffeomorphic image registration with very large deformations. Comput Math Methods Med 2015;2015:836202
- Mao J, Xu W, Yang Y, Wang J, Huang Z, Yuille A. Explain images with multimodal recurrent neural networks. ArXiv.org Web site. https://arxiv.org/abs/1410.1090. Accessed April 1, 2017
- Socher R, Karpathy A, Le QV, Manning CD, Ng AY. Grounded compositional semantics for finding and describing images with sentences. Trans Assoc Comput Linguist 2014;2:207-218
- Kiros R, Salakhutdinov R, Zemel RS. Unifying visual-semantic embeddings with multimodal neural language models. ArXiv. org Web site. https://arxiv.org/abs/1411.2539. Accessed April 1, 2017
- Donahue J, Hendricks LA, Rohrbach M, Venugopalan S, Guadarrama S, Saenko K, et al. Long-term recurrent convolutional networks for visual recognition and description. IEEE Trans Pattern Anal Mach Intell 2017;39:677-691 https://doi.org/10.1109/TPAMI.2016.2599174
- Vinyals O, Toshev A, Bengio S, Erhan D, eds. Show and tell: a neural image caption generator. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:3156-3164
- Fang H, Gupta S, Iandola F, Srivastava R, Deng L, Dollar P, et al., eds. From captions to visual concepts and back. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:1473-1482
- Chen X, Zitnick CL. Mind's eye: a recurrent visual representation for image caption generation. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:2422-2431
- Bengio Y, Simard P, Frasconi P. Learning long-term dependencies with gradient descent is difficult. IEEE Trans Neural Netw 1994;5:157-166 https://doi.org/10.1109/72.279181
- Karpathy A, Li FF. Deep visual-semantic alignments for generating image descriptions. IEEE Trans Pattern Anal Mach Intell 2016;39:664-676
- Hodosh M, Young P, Hockenmaier J. Framing image description as a ranking task: data, models and evaluation metrics. J Artif Intell Res 2013;47:853-899 https://doi.org/10.1613/jair.3994
- Young P, Lai A, Hodosh M, Hockenmaier J. From image descriptions to visual denotations: new similarity metrics for semantic inference over event descriptions. Trans Assoc Comput Linguist 2014;2:67-78
- Lin TY, Maire M, Belongie S, Hays J, Perona P, Ramanan D, et al. Microsoft COCO: common objects in context. In: Fleet D, Pajdla T, Schiele B, Tuytelaars T, eds. Computer Vision-ECCV 2014. New York: Springer, 2014:740-755
- Shi Y, Suk HI, Gao Y, Shen D. Joint coupled-feature representation and coupled boosting for AD diagnosis. Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit 2014;2014:2721-2728
- Hofmanninger J, Langs G, eds. Mapping visual features to semantic profiles for retrieval in medical imaging. Proceedings of 2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:457-465
- Subbanna N, Precup D, Arbel T, eds. Iterative multilevel MRF leveraging context and voxel information for brain tumour segmentation in MRI. Proceedings of the 27th IEEE Conference on Computer Vision and Pattern Recognition (CVPR 2014); 2014 June 23-28; Columbus, OH, USA. IEEE, 2014:400-405
- Ngo TA, Carneiro G, eds. Fully automated non-rigid segmentation with distance regularized level set evolution initialized and constrained by deep-structured inference. Proceedings of 2014 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2014 June 23-28; Columbus, OH, USA. IEEE, 2014:3118-3125
- Ledig C, Shi W, Bai W, Rueckert D, eds. Patch-based evaluation of image segmentation. Proceedings of 2014 IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2014 June 23-28; Columbus, OH, USA. IEEE, 2014:3065-3072
- Rupprecht C, Peter L, Navab N, eds. Image segmentation in twenty questions. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR); 2015 June 7-12; Boston, MA, USA. IEEE, 2015:3314-3322
- Kulkarni G, Premraj V, Ordonez V, Dhar S, Li S, Choi Y, et al. Babytalk: understanding and generating simple image descriptions. IEEE Trans Pattern Anal Mach Intell 2013;35:2891-2903 https://doi.org/10.1109/TPAMI.2012.162
- Feng Y, Lapata M, eds. How many words is a picture worth? Automatic caption generation for news images. Proceedings of the 48th Annual Meeting of the Association for Computational Linguistics; 2010 July 11-16; Uppsala, Sweden. Stroudsburg: Association for Computational Linguistics, 2010:1239-1249
- Farhadi A, Hejrati M, Sadeghi MA, Young P, Rashtchian C, Hockenmaier J, et al. Every picture tells a story: generating sentences from images. In: Daniilidis K, Maragos P, Paragios N, eds. Computer Vision-ECCV 2010. Berlin, Heidelberg: Springer, 2010:15-29
- Shin HC, Roberts K, Lu L, Fushman DD, Yao J, Summers RM, eds. Learning to read chest X-rays: recurrent neural cascade model for automated image annotation. Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition; 2016 June 27-30; Las Vegas, NV, USA. IEEE, 2016
- Bogoni L, Ko JP, Alpert J, Anand V, Fantauzzi J, Florin CH, et al. Impact of a computer-aided detection (CAD) system integrated into a picture archiving and communication system (PACS) on reader sensitivity and efficiency for the detection of lung nodules in thoracic CT exams. J Digit Imaging 2012;25:771-781 https://doi.org/10.1007/s10278-012-9496-0
- Welter P, Hocken C, Deserno TM, Grouls C, Gunther RW. Workflow management of content-based image retrieval for CAD support in PACS environments based on IHE. Int J Comput Assist Radiol Surg 2010;5:393-400 https://doi.org/10.1007/s11548-010-0416-9
- Le AH, Liu B, Huang HK. Integration of computer-aided diagnosis/detection (CAD) results in a PACS environment using CAD-PACS toolkit and DICOM SR. Int J Comput Assist Radiol Surg 2009;4:317-329 https://doi.org/10.1007/s11548-009-0297-y
- Zhou Z. Data security assurance in CAD-PACS integration. Comput Med Imaging Graph 2007;31:353-360 https://doi.org/10.1016/j.compmedimag.2007.02.013
- Wang D, Khosla A, Gargeya R, Irshad H, Beck AH. Deep learning for identifying metastatic breast cancer. ArXiv.org Web site. https://arxiv.org/pdf/1606.05718.pdf. Accessed April 1, 2017
- Hua KL, Hsu CH, Hidayati SC, Cheng WH, Chen YJ. Computer-aided classification of lung nodules on computed tomography images via deep learning technique. Onco Targets Ther 2015;8:2015-2022
- Kumar D, Wong A, Clausi DA, eds. Lung Nodule Classification Using Deep Features in CT Images. Proceedings of 2015 12th Conference on Computer and Robot Vision; 2015 June 3-5; Halifax, Canada. IEEE, 2015:133-138
- Suk HI, Lee SW, Shen D; Alzheimer's Disease Neuroimaging Initiative. Hierarchical feature representation and multimodal fusion with deep learning for AD/MCI diagnosis. Neuroimage 2014;101:569-582 https://doi.org/10.1016/j.neuroimage.2014.06.077
- Suk HI, Shen D. Deep learning-based feature representation for AD/MCI classification. Med Image Comput Comput Assist Interv 2013;16(Pt 2):583-590
- Liu S, Lis S, Cai W, Pujol S, Kikinis R, Feng D, eds. Early diagnosis of Alzheimer's disease with deep learning. Proceedings of the IEEE 11th International Symposium on Biodmedical Imaging; 2014 April 29-May 2; Beijing, China. IEEE, 2014:1015-1018
- Cheng JZ, Ni D, Chou YH, Qin J, Tiu CM, Chang YC, et al. Computer-aided diagnosis with deep learning architecture: applications to breast lesions in US images and pulmonary nodules in CT scans. Sci Rep 2016;6:24454 https://doi.org/10.1038/srep24454
- Kallenberg M, Petersen K, Nielsen M, Ng AY, Pengfei Diao, Igel C, et al. Unsupervised deep learning applied to breast density segmentation and mammographic risk scoring. IEEE Trans Med Imaging 2016;35:1322-1331 https://doi.org/10.1109/TMI.2016.2532122
- Chen J, Chen J, Ding HY, Pan QS, Hong WD, Xu G, et al. Use of an artificial neural network to construct a model of predicting deep fungal infection in lung cancer patients. Asian Pac J Cancer Prev 2015;16:5095-5099 https://doi.org/10.7314/APJCP.2015.16.12.5095
- Spantel. SpeechRite. Capterra.com Web site. http://www.capterra.com/speech-recognition-software/spotlight/142035/SpeechRite/Spantel. Accessed April 1, 2017
- Radiology Dictation & Transcription. 2ascribe.com Web site. https://www.2ascribe.com/transcription-services/radiologydictation-transcription. Accessed April 1, 2017
- Liu Y, Wang J. PACS and digital medicine: essential principles and modern practice, 1st ed. Boca Raton: CRC Press, 2010
- Collins FS, Varmus H. A new initiative on precision medicine. N Engl J Med 2015;372:793-795 https://doi.org/10.1056/NEJMp1500523
- Aerts HJ, Velazquez ER, Leijenaar RT, Parmar C, Grossmann P, Carvalho S, et al. Decoding tumour phenotype by noninvasive imaging using a quantitative radiomics approach. Nat Commun 2014;5:4006 https://doi.org/10.1038/ncomms5006
- Hesketh RL, Zhu AX, Oklu R. Radiomics and circulating tumor cells: personalized care in hepatocellular carcinoma? Diagn Interv Radiol 2015;21:78-84 https://doi.org/10.5152/dir.2014.14237
- Scikit-learn algorithm cheat-sheet. Scikit-learn.org Web site. http://scikit-learn.org/stable/tutorial/machine_learning_map/. Accessed April 1, 2017
Cited by
- Deep into the Brain: Artificial Intelligence in Stroke Imaging vol.19, pp.3, 2017, https://doi.org/10.5853/jos.2017.02054
- CT colonography interpretation: how to maximize polyp detection and minimize overcalling vol.43, pp.3, 2017, https://doi.org/10.1007/s00261-018-1455-x
- Rise of Deep Learning for Genomic, Proteomic, and Metabolomic Data Integration in Precision Medicine vol.22, pp.10, 2018, https://doi.org/10.1089/omi.2018.0097
- Automation, machine learning, and artificial intelligence in echocardiography: A brave new world vol.35, pp.9, 2017, https://doi.org/10.1111/echo.14086
- Methodologic Guide for Evaluating Clinical Performance and Effect of Artificial Intelligence Technology for Medical Diagnosis and Prediction vol.286, pp.3, 2018, https://doi.org/10.1148/radiol.2017171920
- Current Applications and Future Impact of Machine Learning in Radiology vol.288, pp.2, 2017, https://doi.org/10.1148/radiol.2018171820
- Applications of Artificial Intelligence in Ophthalmology: General Overview vol.2018, pp.None, 2017, https://doi.org/10.1155/2018/5278196
- Age of Data in Contemporary Research Articles Published in Representative General Radiology Journals vol.19, pp.6, 2018, https://doi.org/10.3348/kjr.2018.19.6.1172
- Principles for evaluating the clinical implementation of novel digital healthcare devices vol.61, pp.12, 2017, https://doi.org/10.5124/jkma.2018.61.12.765
- Artificial Intelligence in Medicine: Beginner's Guide vol.78, pp.5, 2017, https://doi.org/10.3348/jksr.2018.78.5.301
- Connecting Technological Innovation in Artificial Intelligence to Real-world Medical Practice through Rigorous Clinical Validation: What Peer-reviewed Medical Journals Could Do vol.33, pp.22, 2017, https://doi.org/10.3346/jkms.2018.33.e152
- Application of Artificial Intelligence in Coronary Computed Tomography Angiography vol.11, pp.6, 2017, https://doi.org/10.1007/s12410-018-9453-5
- End-to-end deep neural network for optical inversion in quantitative photoacoustic imaging vol.43, pp.12, 2017, https://doi.org/10.1364/ol.43.002752
- Artificial intelligence in radiology vol.18, pp.8, 2017, https://doi.org/10.1038/s41568-018-0016-5
- Artificial intelligence: a new clinical support tool for stress echocardiography vol.15, pp.8, 2017, https://doi.org/10.1080/17434440.2018.1497482
- Deep Learning and Medical Diagnosis: A Review of Literature vol.2, pp.3, 2017, https://doi.org/10.3390/mti2030047
- Artificial intelligence as a medical device in radiology: ethical and regulatory issues in Europe and the United States vol.9, pp.5, 2017, https://doi.org/10.1007/s13244-018-0645-y
- Age-related Macular Degeneration detection using deep convolutional neural network vol.87, pp.None, 2017, https://doi.org/10.1016/j.future.2018.05.001
- Artificial intelligence and echocardiography vol.5, pp.4, 2018, https://doi.org/10.1530/erp-18-0056
- Deep learning and the evaluation of pulmonary fibrosis vol.6, pp.11, 2017, https://doi.org/10.1016/s2213-2600(18)30371-0
- Performance of the deep convolutional neural network based magnetic resonance image scoring algorithm for differentiating between tuberculous and pyogenic spondylitis vol.8, pp.None, 2017, https://doi.org/10.1038/s41598-018-31486-3
- From hype to reality: data science enabling personalized medicine vol.16, pp.1, 2018, https://doi.org/10.1186/s12916-018-1122-7
- Convolutional Neural Network-Based Automatic Classification for Algal Morphogenesis vol.83, pp.3, 2017, https://doi.org/10.1508/cytologia.83.301
- Artificial intelligence in medical imaging: threat or opportunity? Radiologists again at the forefront of innovation in medicine vol.2, pp.None, 2017, https://doi.org/10.1186/s41747-018-0061-6
- Radiomic features and multilayer perceptron network classifier: a robust MRI classification strategy for distinguishing glioblastoma from primary central nervous system lymphoma vol.9, pp.None, 2017, https://doi.org/10.1038/s41598-019-42276-w
- Review of Underground Storage Tank Condition Monitoring Techniques vol.255, pp.None, 2017, https://doi.org/10.1051/matecconf/201925502009
- A NOVEL METHOD TO ISCHEMIC HEART DISEASE DETECTION BASED ON NON-INVASIVE ECG IMAGING vol.19, pp.3, 2017, https://doi.org/10.1142/s0219519419500027
- Deep convolutional neural networks for mammography: advances, challenges and applications vol.20, pp.11, 2017, https://doi.org/10.1186/s12859-019-2823-4
- Will Artificial Intelligence Translate Big Data Into Improved Medical Care or Be a Source of Confusing Intrusion? A Discussion Between a (Cautious) Physician Informatician and an (Optimistic) Medical vol.21, pp.11, 2019, https://doi.org/10.2196/16272
- A Glimpse on Trends and Characteristics of Recent Articles Published in the Korean Journal of Radiology vol.20, pp.12, 2019, https://doi.org/10.3348/kjr.2019.0928
- What should medical students know about artificial intelligence in medicine? vol.16, pp.None, 2017, https://doi.org/10.3352/jeehp.2019.16.18
- Prognostic and Predictive Values of Metabolic Parameters of 18 F-FDG PET/CT in Patients With Non-Small Cell Lung Cancer Treated With Chemotherapy vol.18, pp.None, 2017, https://doi.org/10.1177/1536012119846025
- Osteoporosis detection in panoramic radiographs using a deep convolutional neural network-based computer-assisted diagnosis system: a preliminary study vol.48, pp.1, 2017, https://doi.org/10.1259/dmfr.20170344
- Deep Learning: A Review for the Radiation Oncologist vol.9, pp.None, 2019, https://doi.org/10.3389/fonc.2019.00977
- Computer vs human: Deep learning versus perceptual training for the detection of neck of femur fractures vol.63, pp.1, 2017, https://doi.org/10.1111/1754-9485.12828
- Artificial Intelligence in Breast Imaging: Potentials and Limitations vol.212, pp.2, 2019, https://doi.org/10.2214/ajr.18.20532
- CT Image Conversion among Different Reconstruction Kernels without a Sinogram by Using a Convolutional Neural Network vol.20, pp.2, 2017, https://doi.org/10.3348/kjr.2018.0249
- Imaging Informatics: A New Horizon for Radiology in the Era of Artificial Intelligence, Big Data, and Data Science vol.80, pp.2, 2017, https://doi.org/10.3348/jksr.2019.80.2.176
- Artificial intelligence in medical imaging of the liver vol.25, pp.6, 2017, https://doi.org/10.3748/wjg.v25.i6.672
- Fully automated detection of retinal disorders by image-based deep learning vol.257, pp.3, 2017, https://doi.org/10.1007/s00417-018-04224-8
- Convolutional Neural Networks for Radiologic Images: A Radiologist’s Guide vol.290, pp.3, 2017, https://doi.org/10.1148/radiol.2018180547
- Design Characteristics of Studies Reporting the Performance of Artificial Intelligence Algorithms for Diagnostic Analysis of Medical Images: Results from Recently Published Papers vol.20, pp.3, 2017, https://doi.org/10.3348/kjr.2019.0025
- Artificial intelligence and machine learning for human reproduction and embryology presented at ASRM and ESHRE 2018 vol.36, pp.4, 2017, https://doi.org/10.1007/s10815-019-01408-x
- Development of Predictive Models in Patients with Epiphora Using Lacrimal Scintigraphy and Machine Learning vol.53, pp.2, 2017, https://doi.org/10.1007/s13139-019-00574-1
- Application of artificial intelligence in gastroenterology vol.25, pp.14, 2017, https://doi.org/10.3748/wjg.v25.i14.1666
- Optimised deep learning features for improved melanoma detection vol.78, pp.9, 2017, https://doi.org/10.1007/s11042-018-6734-6
- Governance of automated image analysis and artificial intelligence analytics in healthcare vol.74, pp.5, 2019, https://doi.org/10.1016/j.crad.2019.02.005
- Effect of a Deep Learning Framework-Based Computer-Aided Diagnosis System on the Diagnostic Performance of Radiologists in Differentiating between Malignant and Benign Masses on Breast Ultrasonography vol.20, pp.5, 2017, https://doi.org/10.3348/kjr.2018.0530
- Deep Learning/Artificial Intelligence and Blood-Based DNA Epigenomic Prediction of Cerebral Palsy vol.20, pp.9, 2017, https://doi.org/10.3390/ijms20092075
- Deep Learning and Big Data in Healthcare: A Double Review for Critical Beginners vol.9, pp.11, 2017, https://doi.org/10.3390/app9112331
- Automated diagnosis of celiac disease by video capsule endoscopy using DAISY Descriptors vol.43, pp.6, 2017, https://doi.org/10.1007/s10916-019-1285-6
- Assessment of the response of hepatocellular carcinoma to interventional radiology treatments vol.15, pp.15, 2019, https://doi.org/10.2217/fon-2018-0747
- Applications of deep learning for the analysis of medical data vol.42, pp.6, 2017, https://doi.org/10.1007/s12272-019-01162-9
- Effect of Training and Testing Condition of Convolutional Neural Network on evaluating Osteoporosis vol.43, pp.3, 2017, https://doi.org/10.17779/kaomp.2019.43.3.001
- Application of machine learning in rheumatic disease research vol.34, pp.4, 2017, https://doi.org/10.3904/kjim.2018.349
- Understanding Image Classification Using TensorFlow Deep Learning - Convolution Neural Network : vol.3, pp.2, 2017, https://doi.org/10.4018/ijhiot.2019070103
- Deep learning-enabled accurate normalization of reconstruction kernel effects on emphysema quantification in low-dose CT vol.64, pp.13, 2019, https://doi.org/10.1088/1361-6560/ab28a1
- Overview of Deep Learning in Gastrointestinal Endoscopy vol.13, pp.4, 2017, https://doi.org/10.5009/gnl18384
- Effectiveness of Deep Learning Algorithms to Determine Laterality in Radiographs vol.32, pp.4, 2017, https://doi.org/10.1007/s10278-019-00226-y
- Fully Automatic Segmentation of Acute Ischemic Lesions on Diffusion-Weighted Imaging Using Convolutional Neural Networks: Comparison with Conventional Algorithms vol.20, pp.8, 2019, https://doi.org/10.3348/kjr.2018.0615
- Differences in Osteoporosis Readings on Dental Panoramic Radiographs according to Convolutional Neural Network Test Data vol.43, pp.4, 2017, https://doi.org/10.17779/kaomp.2019.43.4.001
- Fully automated identification of skin morphology in raster‐scan optoacoustic mesoscopy using artificial intelligence vol.46, pp.9, 2019, https://doi.org/10.1002/mp.13725
- Comparing the predictive ability of a commercial artificial intelligence early warning system with physician judgement for clinical deterioration in hospitalised general internal medicine patients: a vol.9, pp.10, 2017, https://doi.org/10.1136/bmjopen-2019-032187
- Effect of Data Augmentation of F-18-Florbetaben Positron-Emission Tomography Images by Using Deep Learning Convolutional Neural Network Architecture for Amyloid Positive Patients vol.75, pp.8, 2017, https://doi.org/10.3938/jkps.75.597
- The Current State of Artificial Intelligence in Medical Imaging and Nuclear Medicine vol.1, pp.1, 2019, https://doi.org/10.1259/bjro.20190037
- Deep Convolution Neural Network for Malignancy Detection and Classification in Microscopic Uterine Cervix Cell Images vol.20, pp.11, 2019, https://doi.org/10.31557/apjcp.2019.20.11.3447
- Blockchain based Bone-age Predication System for Sharing Medical Images vol.20, pp.11, 2019, https://doi.org/10.9728/dcs.2019.20.11.2177
- Deep learning to differentiate parkinsonian disorders separately using single midsagittal MR imaging: a proof of concept study vol.29, pp.12, 2019, https://doi.org/10.1007/s00330-019-06327-0
- Machine learning can accurately predict pre-admission baseline hemoglobin and creatinine in intensive care patients vol.2, pp.1, 2017, https://doi.org/10.1038/s41746-019-0192-z
- How scientific mobility can help current and future radiology research: a radiology trainee’s perspective vol.10, pp.1, 2017, https://doi.org/10.1186/s13244-019-0773-z
- Artificial intelligence, machine learning, computer-aided diagnosis, and radiomics: advances in imaging towards to precision medicine vol.52, pp.6, 2019, https://doi.org/10.1590/0100-3984.2019.0049
- Deep learning approach for automatic out-of-plane needle localisation for semi-automatic ultrasound probe calibration vol.6, pp.6, 2017, https://doi.org/10.1049/htl.2019.0075
- A bird’s-eye view of deep learning in bioimage analysis vol.18, pp.None, 2017, https://doi.org/10.1016/j.csbj.2020.08.003
- Efficacy of deep convolutional neural network algorithm for the identification and classification of dental implant systems, using panoramic and periapical radiographs : A pilot study vol.99, pp.26, 2017, https://doi.org/10.1097/md.0000000000020787
- Survey of the Knowledge of Korean Radiology Residents on Medical Artificial Intelligence vol.81, pp.6, 2017, https://doi.org/10.3348/jksr.2019.0179
- Assessment of a Deep Learning Algorithm for the Detection of Rib Fractures on Whole-Body Trauma Computed Tomography vol.21, pp.7, 2020, https://doi.org/10.3348/kjr.2019.0653
- Radiomics and Deep Learning: Hepatic Applications vol.21, pp.4, 2017, https://doi.org/10.3348/kjr.2019.0752
- Radiomics and Deep Learning from Research to Clinical Workflow: Neuro-Oncologic Imaging vol.21, pp.10, 2017, https://doi.org/10.3348/kjr.2019.0847
- Characteristics of Recent Articles Published in the Korean Journal of Radiology Based on the Citation Frequency vol.21, pp.12, 2020, https://doi.org/10.3348/kjr.2020.1322
- Diagnostic Value of Breast Lesions Between Deep Learning-Based Computer-Aided Diagnosis System and Experienced Radiologists: Comparison the Performance Between Symptomatic and Asymptomatic Patients vol.10, pp.None, 2020, https://doi.org/10.3389/fonc.2020.01070
- Classification and Segmentation of Hyperspectral Data of Hepatocellular Carcinoma Samples Using 1‐D Convolutional Neural Network vol.97, pp.1, 2017, https://doi.org/10.1002/cyto.a.23871
- Diagnosis of cystic lesions using panoramic and cone beam computed tomographic images based on deep learning neural network vol.26, pp.1, 2017, https://doi.org/10.1111/odi.13223
- Fusion High-Resolution Network for Diagnosing ChestX-ray Images vol.9, pp.1, 2020, https://doi.org/10.3390/electronics9010190
- Automated Machine Learning Diagnostic Support System as a Computational Biomarker for Detecting Drug-Induced Liver Injury Patterns in Whole Slide Liver Pathology Images vol.18, pp.1, 2017, https://doi.org/10.1089/adt.2019.919
- Deep learning in gastric tissue diseases: a systematic review vol.7, pp.1, 2017, https://doi.org/10.1136/bmjgast-2019-000371
- Machine Learning Techniques for Quantification of Knee Segmentation from MRI vol.2020, pp.None, 2017, https://doi.org/10.1155/2020/6613191
- CT-Based Quantitative Analysis for Pathological Features Associated With Postoperative Recurrence and Potential Application Upon Artificial Intelligence: A Narrative Review With a Focus on Chronic Sub vol.19, pp.None, 2020, https://doi.org/10.1177/1536012120914773
- Machine Learning in Orthodontics: Introducing a 3d Auto-segmentation and Auto-landmark Finder of Cbct Images To Assess Maxillary Constriction in Unilateral Impacted Canine patients vol.90, pp.1, 2017, https://doi.org/10.2319/012919-59.1
- Deep Learning for Automated Delineation of Pediatric Cerebral Arteries on Pre-operative Brain Magnetic Resonance Imaging vol.7, pp.None, 2017, https://doi.org/10.3389/fsurg.2020.517375
- Feasibility of fully automated classification of whole slide images based on deep learning vol.24, pp.1, 2020, https://doi.org/10.4196/kjpp.2020.24.1.89
- Assessment of a Machine Learning Model Applied to Harmonized Electronic Health Record Data for the Prediction of Incident Atrial Fibrillation vol.3, pp.1, 2017, https://doi.org/10.1001/jamanetworkopen.2019.19396
- Computer-Aided System Application Value for Assessing Hip Development vol.11, pp.None, 2020, https://doi.org/10.3389/fphys.2020.587161
- Deep learning with ultrasonography: automated classification of liver fibrosis using a deep convolutional neural network vol.30, pp.2, 2020, https://doi.org/10.1007/s00330-019-06407-1
- Detection of microcytic hypochromia using cbc and blood film features extracted from convolution neural network by different classifiers vol.79, pp.7, 2017, https://doi.org/10.1007/s11042-019-07927-0
- Artificial Intelligence in the Management of Intracranial Aneurysms: Current Status and Future Perspectives vol.41, pp.3, 2017, https://doi.org/10.3174/ajnr.a6468
- Convolutional Neural Network Technology in Endoscopic Imaging: Artificial Intelligence for Endoscopy vol.53, pp.2, 2020, https://doi.org/10.5946/ce.2020.054
- Automated segmentation of the left ventricle from MR cine imaging based on deep learning architecture vol.6, pp.2, 2017, https://doi.org/10.1088/2057-1976/ab7363
- Deep learning in fracture detection: a narrative review vol.91, pp.2, 2020, https://doi.org/10.1080/17453674.2019.1711323
- Deep learning in Emergency Medicine: Recent contributions and methodological challenges vol.16, pp.1, 2020, https://doi.org/10.4081/ecj.2020.8573
- Ensemble Deep Learning Models for Heart Disease Classification: A Case Study from Mexico vol.11, pp.4, 2017, https://doi.org/10.3390/info11040207
- 손목 관절 단순 방사선 영상에서 딥 러닝을 이용한 전후방 및 측면 영상 분류와 요골 영역 분할 vol.41, pp.2, 2017, https://doi.org/10.9718/jber.2020.41.2.94
- A method of using deep learning to predict three‐dimensional dose distributions for intensity‐modulated radiotherapy of rectal cancer vol.21, pp.5, 2020, https://doi.org/10.1002/acm2.12849
- Radiomics and Machine Learning in Oral Healthcare vol.14, pp.3, 2017, https://doi.org/10.1002/prca.201900040
- Myths and facts about artificial intelligence: why machine- and deep-learning will not replace interventional radiologists vol.37, pp.5, 2020, https://doi.org/10.1007/s12032-020-01368-8
- PUB-SalNet: A Pre-Trained Unsupervised Self-Aware Backpropagation Network for Biomedical Salient Segmentation vol.13, pp.5, 2017, https://doi.org/10.3390/a13050126
- A Review of Atrial Fibrillation Detection Methods as a Service vol.17, pp.9, 2017, https://doi.org/10.3390/ijerph17093093
- Current Applications and Future Perspectives of Brain Tumor Imaging vol.81, pp.3, 2020, https://doi.org/10.3348/jksr.2020.81.3.467
- A machine learning approach for handling big data produced by high resolution mass spectrometry after data independent acquisition of small molecules - Proof of concept study using an artificial neura vol.12, pp.6, 2017, https://doi.org/10.1002/dta.2775
- Artificial intelligence and convolution neural networks assessing mammographic images: a narrative literature review vol.67, pp.2, 2017, https://doi.org/10.1002/jmrs.385
- Identification of Epileptic EEG Signals Using Convolutional Neural Networks vol.10, pp.12, 2020, https://doi.org/10.3390/app10124089
- Human postprandial responses to food and potential for precision nutrition vol.26, pp.6, 2017, https://doi.org/10.1038/s41591-020-0934-0
- AI 의료영상 분석의 개요 및 연구 현황에 대한 고찰 vol.43, pp.3, 2020, https://doi.org/10.17946/jrst.2020.43.3.195
- Next-generation robotics in gastrointestinal surgery vol.17, pp.7, 2017, https://doi.org/10.1038/s41575-020-0290-z
- A Survey on Blood Image Diseases Detection Using Deep Learning : vol.11, pp.3, 2017, https://doi.org/10.4018/ijssmet.2020070102
- Artificial intelligence in automatic classification of invasive ductal carcinoma breast cancer in digital pathology images vol.34, pp.None, 2020, https://doi.org/10.34171/mjiri.34.140
- Automated detection of chronic kidney disease using higher-order features and elongated quinary patterns from B-mode ultrasound images vol.32, pp.15, 2020, https://doi.org/10.1007/s00521-019-04025-y
- Using deep learning techniques in medical imaging: a systematic review of applications on CT and PET vol.53, pp.6, 2017, https://doi.org/10.1007/s10462-019-09788-3
- Skin Lesion Segmentation Using Stochastic Region-Merging and Pixel-Based Markov Random Field vol.12, pp.8, 2017, https://doi.org/10.3390/sym12081224
- Improvement of Heterogeneous Transfer Learning Efficiency by Using Hebbian Learning Principle vol.10, pp.16, 2017, https://doi.org/10.3390/app10165631
- Computer-aided diagnosis systems for osteoporosis detection: a comprehensive survey vol.58, pp.9, 2020, https://doi.org/10.1007/s11517-020-02171-3
- Multi-Reader–Multi-Split Annotation of Emphysema in Computed Tomography vol.33, pp.5, 2017, https://doi.org/10.1007/s10278-020-00378-2
- Deep learning in interstitial lung disease—how long until daily practice vol.30, pp.11, 2017, https://doi.org/10.1007/s00330-020-06986-4
- Deep Learning in Selected Cancers’ Image Analysis-A Survey vol.6, pp.11, 2020, https://doi.org/10.3390/jimaging6110121
- An Efficient Lightweight CNN and Ensemble Machine Learning Classification of Prostate Tissue Using Multilevel Feature Analysis vol.10, pp.22, 2017, https://doi.org/10.3390/app10228013
- Deep-Learning-Based Computer-Aided Systems for Breast Cancer Imaging: A Critical Review vol.10, pp.22, 2017, https://doi.org/10.3390/app10228298
- Deep learning enables automated localization of the metastatic lymph node for thyroid cancer on 131 I post-ablation whole-body planar scans vol.10, pp.None, 2020, https://doi.org/10.1038/s41598-020-64455-w
- Robust performance of deep learning for distinguishing glioblastoma from single brain metastasis using radiomic features: model development and validation vol.10, pp.None, 2017, https://doi.org/10.1038/s41598-020-68980-6
- Early prediction of neoadjuvant chemotherapy response for advanced breast cancer using PET/MRI image deep learning vol.10, pp.1, 2017, https://doi.org/10.1038/s41598-020-77875-5
- Time-ResNeXt for epilepsy recognition based on EEG signals in wireless networks vol.2020, pp.1, 2017, https://doi.org/10.1186/s13638-020-01810-5
- Deep learning‐based digitization of prostate brachytherapy needles in ultrasound images vol.47, pp.12, 2017, https://doi.org/10.1002/mp.14508
- Design Patterns for Resource-Constrained Automated Deep-Learning Methods vol.1, pp.4, 2017, https://doi.org/10.3390/ai1040031
- The role of artificial intelligence in medical imaging research vol.2, pp.1, 2017, https://doi.org/10.1259/bjro.20190031
- Artificial intelligence in radiology: does it impact medical students preference for radiology as their future career? vol.2, pp.1, 2017, https://doi.org/10.1259/bjro.20200037
- 심층강화학습을 이용한 Convolutional Network 기반 전산화단층영상 잡음 저감 기술 개발 vol.14, pp.7, 2020, https://doi.org/10.7742/jksr.2020.14.7.991
- AI applications in robotics, diagnostic image analysis and precision medicine: Current limitations, future trends, guidelines on CAD systems for medicine vol.24, pp.None, 2017, https://doi.org/10.1016/j.imu.2021.100596
- A brief comparative study of the potentialities and limitations of machine-learning algorithms and statistical techniques vol.266, pp.None, 2017, https://doi.org/10.1051/e3sconf/202126602001
- Future artificial intelligence tools and perspectives in medicine vol.31, pp.4, 2017, https://doi.org/10.1097/mou.0000000000000884
- A Real-World Clinical Implementation of Automated Processing Using Intelligent Work Aid for Rapid Reformation at the Orbitomeatal Line in Head Computed Tomography vol.56, pp.9, 2021, https://doi.org/10.1097/rli.0000000000000779
- Realistic High-Resolution Body Computed Tomography Image Synthesis by Using Progressive Growing Generative Adversarial Network: Visual Turing Test vol.9, pp.3, 2021, https://doi.org/10.2196/23328
- A Three-Dimensional Deep Convolutional Neural Network for Automatic Segmentation and Diameter Measurement of Type B Aortic Dissection vol.22, pp.2, 2021, https://doi.org/10.3348/kjr.2020.0313
- Artificial intelligence for the management of pancreatic diseases vol.33, pp.2, 2021, https://doi.org/10.1111/den.13875
- Current state of artificial intelligence applications in ophthalmology and their potential to influence clinical practice vol.8, pp.1, 2017, https://doi.org/10.1080/23311916.2021.1920707
- Medical Image Classification Algorithm Based on Visual Attention Mechanism-MCNN vol.2021, pp.None, 2017, https://doi.org/10.1155/2021/6280690
- The role of convolutional neural networks in scanning probe microscopy: a review vol.12, pp.None, 2017, https://doi.org/10.3762/bjnano.12.66
- Machine learning in dental, oral and craniofacial imaging: a review of recent progress vol.9, pp.None, 2021, https://doi.org/10.7717/peerj.11451
- Research Progress of Deep Learning in the Diagnosis and Prevention of Stroke vol.2021, pp.None, 2017, https://doi.org/10.1155/2021/5213550
- Integration of pre-surgical blood test results predict microvascular invasion risk in hepatocellular carcinoma vol.19, pp.None, 2021, https://doi.org/10.1016/j.csbj.2021.01.014
- Docking-generated multiple ligand poses for bootstrapping bioactivity classifying Machine Learning: Repurposing covalent inhibitors for COVID-19-related TMPRSS2 as case study vol.19, pp.None, 2017, https://doi.org/10.1016/j.csbj.2021.08.023
- Comparison of Diagnosis Accuracy between a Backpropagation Artificial Neural Network Model and Linear Regression in Digestive Disease Patients: an Empirical Research vol.2021, pp.None, 2021, https://doi.org/10.1155/2021/6662779
- Developing a Recognition System for Diagnosing Melanoma Skin Lesions Using Artificial Intelligence Algorithms vol.2021, pp.None, 2017, https://doi.org/10.1155/2021/9998379
- High-Efficiency Classification of White Blood Cells Based on Object Detection vol.2021, pp.None, 2017, https://doi.org/10.1155/2021/1615192
- The Value of Convolutional Neural Network-Based Magnetic Resonance Imaging Image Segmentation Algorithm to Guide Targeted Controlled Release of Doxorubicin Nanopreparation vol.2021, pp.None, 2017, https://doi.org/10.1155/2021/9032017
- Automatic Cephalometric Landmark Identification System Based on the Multi-Stage Convolutional Neural Networks with CBCT Combination Images vol.21, pp.2, 2017, https://doi.org/10.3390/s21020505
- Artificial intelligence for ultrasonography: unique opportunities and challenges vol.40, pp.1, 2017, https://doi.org/10.14366/usg.20078
- Artificial intelligence in musculoskeletal ultrasound imaging vol.40, pp.1, 2017, https://doi.org/10.14366/usg.20080
- Reducing False-Positives in Lung Nodules Detection Using Balanced Datasets vol.9, pp.None, 2021, https://doi.org/10.3389/fpubh.2021.671070
- Ankle fracture classification using deep learning: automating detailed AO Foundation/Orthopedic Trauma Association (AO/OTA) 2018 malleolar fracture identification reaches a high degree of correct clas vol.92, pp.1, 2017, https://doi.org/10.1080/17453674.2020.1837420
- Construction of patient service system based on QFD in internet of things vol.77, pp.3, 2017, https://doi.org/10.1007/s11227-020-03359-y
- Basic of machine learning and deep learning in imaging for medical physicists vol.83, pp.None, 2021, https://doi.org/10.1016/j.ejmp.2021.03.026
- Challenges facing quantitative large-scale optical super-resolution, and some simple solutions vol.24, pp.3, 2021, https://doi.org/10.1016/j.isci.2021.102134
- Accelerating Deep Neural Networks implementation: A survey vol.15, pp.2, 2017, https://doi.org/10.1049/cdt2.12016
- Combining Initial Radiographs and Clinical Variables Improves Deep Learning Prognostication in Patients with COVID-19 from the Emergency Department vol.3, pp.2, 2021, https://doi.org/10.1148/ryai.2020200098
- Deep Generative Adversarial Networks: Applications in Musculoskeletal Imaging vol.3, pp.3, 2017, https://doi.org/10.1148/ryai.2021200157
- Automated Spleen Injury Detection Using 3D Active Contours and Machine Learning vol.23, pp.4, 2017, https://doi.org/10.3390/e23040382
- Detection of Postural Control in Young and Elderly Adults Using Deep and Machine Learning Methods with Joint-Node Plots vol.21, pp.9, 2021, https://doi.org/10.3390/s21093212
- Artificial Intelligence and Patient-Centered Decision-Making vol.34, pp.2, 2017, https://doi.org/10.1007/s13347-019-00391-6
- Detecting the Early Infarct Core on Non-Contrast CT Images with a Deep Learning Residual Network vol.30, pp.6, 2017, https://doi.org/10.1016/j.jstrokecerebrovasdis.2021.105752
- Pulmonary Functional Imaging: Part 1-State-of-the-Art Technical and Physiologic Underpinnings vol.299, pp.3, 2017, https://doi.org/10.1148/radiol.2021203711
- Sounding out the hidden data: A concise review of deep learning in photoacoustic imaging vol.246, pp.12, 2017, https://doi.org/10.1177/15353702211000310
- Automatic Segmentation of Choroid Layer Using Deep Learning on Spectral Domain Optical Coherence Tomography vol.11, pp.12, 2017, https://doi.org/10.3390/app11125488
- 딥러닝을 이용한 벼 도복 면적 추정 vol.66, pp.2, 2017, https://doi.org/10.7740/kjcs.2021.66.2.105
- Transfer Learning for an Automated Detection System of Fractures in Patients with Maxillofacial Trauma vol.11, pp.14, 2017, https://doi.org/10.3390/app11146293
- Artificial intelligence in small intestinal diseases: Application and prospects vol.27, pp.25, 2017, https://doi.org/10.3748/wjg.v27.i25.3734
- Development of U-Net Breast Density Segmentation Method for Fat-Sat MR Images Using Transfer Learning Based on Non-Fat-Sat Model vol.34, pp.4, 2017, https://doi.org/10.1007/s10278-021-00472-z
- Artificial intelligence and the medical physics profession - A Swedish perspective vol.88, pp.None, 2021, https://doi.org/10.1016/j.ejmp.2021.07.009
- Crystal-Site-Based Artificial Neural Networks for Material Classification vol.11, pp.9, 2017, https://doi.org/10.3390/cryst11091039
- Understanding the predictive value and methods of risk assessment based on coronary computed tomographic angiography in populations with coronary artery disease: a review vol.4, pp.3, 2021, https://doi.org/10.1093/pcmedi/pbab018
- Artificial intelligence for hepatitis evaluation vol.27, pp.34, 2017, https://doi.org/10.3748/wjg.v27.i34.5715
- Deep learning-based automated quantification of the hepatorenal index for evaluation of fatty liver by ultrasonography vol.40, pp.4, 2017, https://doi.org/10.14366/usg.20179
- Deep Learning-Based In Vitro Detection Method for Cellular Impurities in Human Cell-Processed Therapeutic Products vol.11, pp.20, 2021, https://doi.org/10.3390/app11209755
- Detection of COVID-19 in Chest X-ray Images: A Big Data Enabled Deep Learning Approach vol.18, pp.19, 2017, https://doi.org/10.3390/ijerph181910147
- Deep Mining Generation of Lung Cancer Malignancy Models from Chest X-ray Images vol.21, pp.19, 2017, https://doi.org/10.3390/s21196655
- Leveraging Artificial Intelligence (AI) Capabilities for COVID-19 Containment vol.39, pp.3, 2021, https://doi.org/10.1007/s00354-021-00128-0
- An Artificial Intelligence Hypothetical Approach for Masseter Muscle Segmentation on Ultrasonography in Patients With Bruxism vol.12, pp.2, 2021, https://doi.org/10.1177/23202068211005611
- An Artificial Intelligence Hypothetical Approach for Masseter Muscle Segmentation on Ultrasonography in Patients With Bruxism vol.12, pp.2, 2021, https://doi.org/10.1177/23202068211005611
- A Data Augmentation Method for War Trauma Using the War Trauma Severity Score and Deep Neural Networks vol.10, pp.21, 2017, https://doi.org/10.3390/electronics10212657
- Application of Deep Learning Models for Automated Identification of Parkinson’s Disease: A Review (2011-2021) vol.21, pp.21, 2017, https://doi.org/10.3390/s21217034
- Radiomics in hepatocellular carcinoma: A state-of-the-art review vol.13, pp.11, 2017, https://doi.org/10.4251/wjgo.v13.i11.1599
- Performance analysis of classification and segmentation of cysts in panoramic dental images using convolutional neural network architecture vol.31, pp.4, 2021, https://doi.org/10.1002/ima.22625
- Texture Analysis of Tongue Coating in Traditional Chinese Medicine Based on Transfer Learning and Multi-Model Decision vol.22, pp.1, 2017, https://doi.org/10.1007/s11220-021-00332-8
- 20S proteasomes secreted by the malaria parasite promote its growth vol.12, pp.1, 2017, https://doi.org/10.1038/s41467-021-21344-8
- The new SUMPOT to predict postoperative complications using an Artificial Neural Network vol.11, pp.1, 2017, https://doi.org/10.1038/s41598-021-01913-z
- Deep negative volume segmentation vol.11, pp.1, 2017, https://doi.org/10.1038/s41598-021-95526-1
- Deep learning versus ophthalmologists for screening for glaucoma on fundus examination: A systematic review and meta‐analysis vol.49, pp.9, 2017, https://doi.org/10.1111/ceo.14000
- Cardiothoracic ratio measurement using artificial intelligence: observer and method validation studies vol.21, pp.1, 2017, https://doi.org/10.1186/s12880-021-00625-0
- Efficiency of a deep learning-based artificial intelligence diagnostic system in spontaneous intracerebral hemorrhage volume measurement vol.21, pp.1, 2021, https://doi.org/10.1186/s12880-021-00657-6
- Prediction of arrhythmia after intervention in children with atrial septal defect based on random forest vol.21, pp.1, 2017, https://doi.org/10.1186/s12887-021-02744-7
- Advanced thyroid carcinomas: neural network analysis of ultrasonographic characteristics vol.14, pp.1, 2021, https://doi.org/10.1186/s13044-021-00107-z
- Current updates in machine learning in the prediction of therapeutic outcome of hepatocellular carcinoma: what should we know? vol.12, pp.1, 2017, https://doi.org/10.1186/s13244-021-00977-9
- Artificial Intelligence Evidence-Based Current Status and Potential for Lower Limb Vascular Management vol.11, pp.12, 2017, https://doi.org/10.3390/jpm11121280
- AxonDeep: Automated Optic Nerve Axon Segmentation in Mice With Deep Learning vol.10, pp.14, 2017, https://doi.org/10.1167/tvst.10.14.22
- A Machine Learning Method for Detection of Surface Defects on Ceramic Tiles Using Convolutional Neural Networks vol.11, pp.1, 2017, https://doi.org/10.3390/electronics11010055
- A novel data augmentation based on Gabor filter and convolutional deep learning for improving the classification of COVID-19 chest X-Ray images vol.72, pp.no.pa, 2017, https://doi.org/10.1016/j.bspc.2021.103326
- Establishment of a 13 genes-based molecular prediction score model to discriminate the neurotoxic potential of food relevant-chemicals vol.355, pp.None, 2017, https://doi.org/10.1016/j.toxlet.2021.10.013