Weakly supervised deep learning for cervical histopathology images analysis

Lei Shi, Jing Xu, Yameng Zhang, Guohua Zhao, Yufei Gao
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Abstract

Cervical cancer is the second most common malignancy in women, while is prevented through diagnosing and treating cervical precancerous lesions. Clinically, histopathological image analysis is recognized as the gold standard for diagnosis. However, the diagnosis of cervical precancerous lesions is challenging due to the massive size of whole slide images and subjective grading without precise quantification criteria. Most existing computer aided diagnosis approaches are patches-based, first learning patch-wise features and then aggregating these local features to infer the final prediction. Cropping pathology images into patches restrains the contextual information available to those networks, causing failing to learn clinically relevant structural representations. To address the above problems, this paper proposes a novel weakly supervised learning method called general attention network (GANet) for grading cervical precancerous lesions. A bag-of-instances pattern is introduced to overcome the limitation of the high resolution of whole slide images. Moreover, based on two transformer blocks, the proposed model is able to encode the dependencies among bags and instances that are beneficial to capture much more informative contexts, and thus produce more discriminative WSI descriptors. Finally, extensive experiments are conducted on a public cervical histology dataset and the results show that GANet achieves the state-of-the-art performance.
弱监督深度学习用于宫颈组织病理学图像分析
子宫颈癌是妇女中第二大常见的恶性肿瘤,可通过诊断和治疗子宫颈癌前病变加以预防。在临床上,组织病理学图像分析被认为是诊断的金标准。然而,宫颈癌前病变的诊断是具有挑战性的,因为整个幻灯片图像的大小和主观分级没有精确的量化标准。大多数现有的计算机辅助诊断方法是基于补丁的,首先学习补丁智能特征,然后聚集这些局部特征来推断最终的预测。将病理图像裁剪成小块限制了这些网络可用的上下文信息,导致无法学习临床相关的结构表征。为了解决上述问题,本文提出了一种新的弱监督学习方法,称为一般注意网络(GANet),用于宫颈癌前病变分级。为了克服整个幻灯片图像的高分辨率限制,引入了实例袋模式。此外,基于两个转换块,所建议的模型能够对包和实例之间的依赖进行编码,这有利于捕获更多信息丰富的上下文,从而产生更具判别性的WSI描述符。最后,在公共宫颈组织学数据集上进行了大量实验,结果表明GANet达到了最先进的性能。
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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