• 제목/요약/키워드: Patient Segmentation

검색결과 64건 처리시간 0.022초

세기조절 방사선 치료에서 CORVUS TPS를 이용한 $\textrm{IMFAST}^{TM}$ Segmentation Algorithm의 연구 (Study of $\textrm{IMFAST}^{TM}$ Segmentation Algorithm with CORVUS TPS for Intensity Modulated Radiation Therapy)

  • Lee, Se-Byeong;Jino Bak;Cho, Kwang-Hwan;Chu, Sung-Sil;Lee, Chang-Geol;Lee, Suk;Hongryll Pyo;Suh, Chang-Ok
    • 한국의학물리학회지:의학물리
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    • 제13권4호
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    • pp.181-186
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    • 2002
  • 세기조절 방사선 치료는 각각의 치료계획 시스템의 도스 최적화 알고리즘과 선형 가속기의 조합에 따라 다양하게 최적의 성능을 발휘 할 수 있다. 연세 암센터는 효과적인 방사선치료를 위하여 2002년 2월에 세기조절 방사선 치료 시스템을 도입하여 운영 중에 있으며 도입된 시스템은 CORVUS (Nomos, 미국) 치료계획 시스템과 LANTIS, PRIMEVIEW, PRIMART (Siemens, 미국)의 선형가속기 시스템으로 구성되어 있다. 최적화된 치료를 위해서는 CORVUS 치료계획기와 PRIMART 선형가속기의 적절한 조합 조건을 찾아 적용하는 것이 중요한 일이다. 이 Step & Shoot 방식의 세기조절 방사선 치료기는 Finite Size Pencil Beams (FSPB) 도스모델과 simulated annealing method의 도스 최적화 알고리즘 및 IMFAST의 segmentation 알고리즘을 사용하고 있다. 본 연구는 segmentation 알고리듬에 관한 것으로 두개의 기본 beamlet 크기(1.0$\times$1.0 $\textrm{cm}^2$ 와 0.5$\times$1.0$\textrm{cm}^2$)와 4가지의 빔 세기 단계(5%, 10%, 20%, 33%)의 option을 4명의 상이한 환자 case에 대하여 적용하고 비교해 보았다. 상대적으로 작은 target 부피를 갖는 경우 TPS상의 segmentation의 설정에 민감하게 target 도스분포가 변하였으며 작은 beamlet일수록 intensity step을 작게 할수록 최적의 도스분포를 보여주었다.

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오류 역전파 알고리즘을 이용한 자기 공명 영상 자동 세그멘테이션 (Automatic segmentation of magnetic resonance images using error back-propagation algorithm)

  • 최재호;조범준
    • 한국통신학회논문지
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    • 제22권11호
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    • pp.2425-2431
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    • 1997
  • 자기 공명 영상의 사용이 빈번해 짐에 따라 환자의 해부학적인 정확한 정보와 이를 빠르고 효과적으로 진단하는데 유용한 자동 영상 세그멘테이션 방법이 요구되고 있다. 본 논문에서는 오류 역전파 알고리즘으로 학습한 신경망을 이용하여 뇌의 자기 공명 영상을 자동적으로 세그멘테이션하는 방법을 제안한다. 특정 환자의 자기 공명 영상을 분할하여 학습시킨 신경망은 다른 환자의 자기 공명 영상도 자동적으로 세그멘테이션하여 뇌의 윤곽을 뚜렷하게 나타내었다.

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무릎 자기공명영상에서 지역적 확률 아틀라스 정렬 및 반복적 그래프 컷을 이용한 전방십자인대 분할 (Anterior Cruciate Ligament Segmentation in Knee MRI with Locally-aligned Probabilistic Atlas and Iterative Graph Cuts)

  • 이한상;홍헬렌
    • 정보과학회 논문지
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    • 제42권10호
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    • pp.1222-1230
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    • 2015
  • 무릎 자기공명영상에서 전방십자인대의 분할은 밝기값의 불균일성 및 주변 조직들과의 유사 밝기값 특성으로 인해 기존 분할기법의 적용에 한계가 있다. 본 논문에서는 지역적 정렬을 통한 확률아틀라스 생성 및 반복적 그래프 컷을 통한 다중아틀라스 기반 전방십자인대 분할기법을 제안한다. 첫째, 전역 및 지역적 다중아틀라스 강체정합을 통해 전방십자인대의 확률아틀라스를 생성한다. 둘째, 생성된 확률아틀라스를 이용하여 최대사후추정 및 그래프 컷을 통하여 전방십자인대 초기 분할을 수행한다. 셋째, 마스크 기반 강체정합을 통한 형상정보 개선 및 반복적 그래프 컷을 통해 전방십자인대 분할 개선을 수행한다. 제안방법의 성능평가를 위하여 육안평가 및 정확성평가를 수행하였으며, 평가 결과 제안방법의 Dice 유사도는 75.0%, 평균표면거리는 1.7화소, 제곱근표면거리는 2.7화소로서 기존 그래프 컷 방법에 비하여 전방 십자인대의 분할정확도가 각각 12.8%, 22.7%, 및 22.9% 향상된 것으로 나타났다.

복부 컴퓨터단층촬영 영상에서 다중 아틀라스 기반 위치적 정보를 사용한 계층적 장기 분할 (Hierarchical Organ Segmentation using Location Information based on Multi-atlas in Abdominal CT Images)

  • 김현진;김현아;이한상;홍헬렌
    • 한국멀티미디어학회논문지
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    • 제19권12호
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    • pp.1960-1969
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    • 2016
  • In this paper, we propose an automatic hierarchical organ segmentation method on abdominal CT images. First, similar atlases are selected using bone-based similarity registration and similarity of liver, kidney, and pancreas area. Second, each abdominal organ is roughly segmented using image-based similarity registration and intensity-based locally weighted voting. Finally, the segmented abdominal organ is refined using mask-based affine registration and intensity-based locally weighted voting. Especially, gallbladder and pancreas are hierarchically refined using location information of neighbor organs such as liver, left kidney and spleen. Our method was tested on a dataset of 12 portal-venous phase CT data. The average DSC of total organs was $90.47{\pm}1.70%$. Our method can be used for patient-specific abdominal organ segmentation for rehearsal of laparoscopic surgery.

병원이용빈도와 진료수익성 분석을 통한 외래환자 시장세분화 (Segmenting Outpatients by the Analysis of Usage and Revenue Indicators)

  • 류상희;백수경
    • 한국병원경영학회지
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    • 제7권4호
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    • pp.152-171
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    • 2002
  • The research objective is segmenting outpatients for CRM(Customer Relationship Management) in medical service. Using modified RFM(Recently, Frequency, Monetary) method based on frequency and profitability in the hospital, the data were analyzed with the data mining technique. The result can be summarized as follows : The outpatients were semented into the four groups: 1) the loyal patient group, who have kept visiting until recently and give high profitability; 2) potential loyal patient group, who give lower profitability but high frequency of use, 3) potential withdrawer patient group, who have lower frequency of use but give high profitability and; 4) withdrawer patient group, who give low frequency of use and have not visited recently.

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Brain Tumor Detection Based on Amended Convolution Neural Network Using MRI Images

  • Mohanasundari M;Chandrasekaran V;Anitha S
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제17권10호
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    • pp.2788-2808
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    • 2023
  • Brain tumors are one of the most threatening malignancies for humans. Misdiagnosis of brain tumors can result in false medical intervention, which ultimately reduces a patient's chance of survival. Manual identification and segmentation of brain tumors from Magnetic Resonance Imaging (MRI) scans can be difficult and error-prone because of the great range of tumor tissues that exist in various individuals and the similarity of normal tissues. To overcome this limitation, the Amended Convolutional Neural Network (ACNN) model has been introduced, a unique combination of three techniques that have not been previously explored for brain tumor detection. The three techniques integrated into the ACNN model are image tissue preprocessing using the Kalman Bucy Smoothing Filter to remove noisy pixels from the input, image tissue segmentation using the Isotonic Regressive Image Tissue Segmentation Process, and feature extraction using the Marr Wavelet Transformation. The extracted features are compared with the testing features using a sigmoid activation function in the output layer. The experimental findings show that the suggested model outperforms existing techniques concerning accuracy, precision, sensitivity, dice score, Jaccard index, specificity, Positive Predictive Value, Hausdorff distance, recall, and F1 score. The proposed ACNN model achieved a maximum accuracy of 98.8%, which is higher than other existing models, according to the experimental results.

Brain Hologram Visualization for Diagnosis of Tumors using Graphic Imaging

  • Nam, Jenie;Kim, Young Jae;Lee, Seung Hyun;Kim, Kwang Gi
    • Journal of Multimedia Information System
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    • 제3권3호
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    • pp.47-52
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    • 2016
  • This research paper examines the usage of graphic imaging in Holographic Projections to further advance the medical field. It highlights the importance and necessity of this technology as well as avant-garde techniques applied in the process of displaying images in digital holography. This paper also discusses the different types of applications for holograms in society today. Different tools were utilized to transfer a set of a cancer patient's brain tumor data into data used to produce a 3D holographic image. This image was produced through the transfer of data from one program to another. Through the use of semi-automatic segmentation through the seed region method, we were able to create a 3D visualization from Computed Tomography (CT) data.

Heart Extraction and Division between Left and Right Heart from Cardiac CTA

  • Kang, Ho Chul
    • International Journal of Internet, Broadcasting and Communication
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    • 제9권4호
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    • pp.19-24
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    • 2017
  • In this paper, we propose an automatic segmentation method of left and right heart in computed tomography angiography (CTA) using separating energy function. First, we smooth the images by applying anisotropic diffusion filter to remove noise. Then, the volume of interest (VOI) is detected by using k-means clustering. Finally, we extract the left and right heart with separating energy function which we proposed to split the heart. We tested our method in ten CT images and they were obtained from a different patient. For the evaluation of the computational performance of the proposed method, we measured the total processing time. The average of total processing time, from first step to third step, was $14.39{\pm}1.17s$. We expect for our method to be used in cardiac diagnosis for cardiologist.

An Automated Way to Detect Tumor in Liver

  • Meenu Sharma. Rafat Parveen
    • International Journal of Computer Science & Network Security
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    • 제23권10호
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    • pp.209-213
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    • 2023
  • In recent years, the image processing mechanisms are used widely in several medical areas for improving earlier detection and treatment stages, in which the time factor is very important to discover the disease in the patient as possible as fast, especially in various cancer tumors such as the liver cancer. Liver cancer has been attracting the attention of medical and sciatic communities in the latest years because of its high prevalence allied with the difficult treatment. Statistics indicate that liver cancer, throughout world, is the one that attacks the greatest number of people. Over the time, study of MR images related to cancer detection in the liver or abdominal area has been difficult. Early detection of liver cancer is very important for successful treatment. There are few methods available to detect cancerous cells. In this paper, an automatic approach that integrates the intensity-based segmentation and k-means clustering approach for detection of cancer region in MRI scan images of liver.

MRI와 3D 스캔 데이터를 이용한 3D 프린팅 유방 인공보형물의 제작 알고리즘 (Algorithm for Fabricating 3D Breast Implants by Using MRI and 3D Scan Data)

  • 정영진;최동헌;김구진
    • 한국멀티미디어학회논문지
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    • 제22권12호
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    • pp.1385-1395
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    • 2019
  • In this paper, we propose a method to fabricate a patient-specific breast implant using MRI images and 3D scan data. Existing breast implants for breast reconstruction surgery are primarily fabricated products for shaping, and among the limited types of implants, products similar to the patient's breast have been used. In fact, the larger the difference between the shape of the breast and the implant, the more frequent the postoperative side effects and the lower the satisfaction. Previous researches on the fabrication of patient-specific breast implants have used limited information based on only MRI images or on only 3D scan data. In this paper, we propose an algorithm for the fabrication of patient-specific breast implants that combines MRI images with 3D scan data, considering anatomical suitability for external shape, volume, and pectoral muscle. Experimental results show that we can produce precise breast implants using the proposed algorithm.