Classification of iPSC colony images using hierarchical strategies with support vector machines

H. Joutsijoki, J. Rasku, Markus Haponen, Ivan Baldin, Y. Gizatdinova, M. Paci, Jyri Saarikoski, Kirsi Varpa, H. Siirtola, Jorge Avalos-Salguero, Kati Iltanen, J. Laurikkala, K. Penttinen, J. Hyttinen, K. Aalto-Setälä, M. Juhola
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引用次数: 6

Abstract

In this preliminary research we examine the suitability of hierarchical strategies of multi-class support vector machines for classification of induced pluripotent stem cell (iPSC) colony images. The iPSC technology gives incredible possibilities for safe and patient specific drug therapy without any ethical problems. However, growing of iPSCs is a sensitive process and abnormalities may occur during the growing process. These abnormalities need to be recognized and the problem returns to image classification. We have a collection of 80 iPSC colony images where each one of the images is prelabeled by an expert to class bad, good or semigood. We use intensity histograms as features for classification and we evaluate histograms from the whole image and the colony area only having two datasets. We perform two feature reduction procedures for both datasets. In classification we examine how different hierarchical constructions effect the classification. We perform thorough evaluation and the best accuracy was around 54% obtained with the linear kernel function. Between different hierarchical structures, in many cases there are no significant changes in results. As a result, intensity histograms are a good baseline for the classification of iPSC colony images but more sophisticated feature extraction and reduction methods together with other classification methods need to be researched in future.
基于支持向量机分层策略的iPSC群体图像分类
在本初步研究中,我们检验了多类支持向量机分级策略在诱导多能干细胞(iPSC)集落图像分类中的适用性。iPSC技术为安全和患者特异性药物治疗提供了难以置信的可能性,而没有任何伦理问题。然而,多能干细胞的生长是一个敏感的过程,在生长过程中可能会发生异常。这些异常需要被识别,问题又回到了图像分类。我们收集了80个iPSC集落图像,其中每个图像都由专家预先标记为坏,好或半好。我们使用强度直方图作为分类的特征,我们从整个图像和只有两个数据集的群体区域评估直方图。我们对两个数据集执行两个特征约简过程。在分类中,我们研究了不同层次结构对分类的影响。我们进行了全面的评估,使用线性核函数获得的最佳准确率约为54%。在不同的层次结构之间,在许多情况下,结果没有显著的变化。因此,强度直方图是iPSC群体图像分类的良好基线,但未来需要研究更复杂的特征提取和约简方法以及其他分类方法。
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