A Multiple Instance Learning Approach toward Optimal Classification of Pathology Slides

M. Dundar, S. Badve, V. Raykar, R. Jain, Olcay Sertel, M. Gürcan
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引用次数: 41

Abstract

Pathology slides are diagnosed based on the histological descriptors extracted from regions of interest (ROIs) identified on each slide by the pathologists. A slide usually contains multiple regions of interest and a positive (cancer) diagnosis is confirmed when at least one of the ROIs in the slide is identified as positive. For a negative diagnosis the pathologist has to rule out cancer for each and every ROI available. Our research is motivated toward computer-assisted classification of digitized slides. The objective in this study is to develop a classifier to optimize classification accuracy at the slide level. Traditional supervised training techniques which are trained to optimize classifier performance at the ROI level yield suboptimal performance in this problem. We propose a multiple instance learning approach based on the implementation of the large margin principle with different loss functions defined for positive and negative samples. We consider the classification of intraductal breast lesions as a case study, and perform experimental studies comparing our approach against the state-of-the-art.
病理切片最佳分类的多实例学习方法
病理切片是根据病理学家从每张切片上确定的感兴趣区域(roi)提取的组织学描述符进行诊断的。一张幻灯片通常包含多个感兴趣的区域,当幻灯片中至少有一个roi被确定为阳性时,就可以确诊为阳性(癌症)。对于阴性诊断,病理学家必须为每个可用的ROI排除癌症。我们的研究目的是对数字化幻灯片进行计算机辅助分类。本研究的目的是开发一个分类器,以优化在幻灯片水平的分类精度。传统的监督训练技术是为了在ROI水平上优化分类器的性能而训练的,在这个问题上产生了次优的性能。我们提出了一种基于大裕度原理的多实例学习方法,并为正样本和负样本定义了不同的损失函数。我们考虑导管内乳腺病变的分类作为一个案例研究,并进行实验研究,比较我们的方法与最先进的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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