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Slow Feature Analysis for Mitotic Event Recognition

  • Chu, Jinghui (School of Electronic Information Engineering, Tianjin University) ;
  • Liang, Hailan (School of Electronic Information Engineering, Tianjin University) ;
  • Tong, Zheng (School of Electronic Information Engineering, Tianjin University) ;
  • Lu, Wei (School of Electronic Information Engineering, Tianjin University)
  • Received : 2016.08.09
  • Accepted : 2017.01.02
  • Published : 2017.03.31

Abstract

Mitotic event recognition is a crucial and challenging task in biomedical applications. In this paper, we introduce the slow feature analysis and propose a fully-automated mitotic event recognition method for cell populations imaged with time-lapse phase contrast microscopy. The method includes three steps. First, a candidate sequence extraction method is utilized to exclude most of the sequences not containing mitosis. Next, slow feature is learned from the candidate sequences using slow feature analysis. Finally, a hidden conditional random field (HCRF) model is applied for the classification of the sequences. We use a supervised SFA learning strategy to learn the slow feature function because the strategy brings image content and discriminative information together to get a better encoding. Besides, the HCRF model is more suitable to describe the temporal structure of image sequences than nonsequential SVM approaches. In our experiment, the proposed recognition method achieved 0.93 area under curve (AUC) and 91% accuracy on a very challenging phase contrast microscopy dataset named C2C12.

Keywords

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