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基于弱监督学习的全幻灯片肺癌图像分析。

Weakly Supervised Deep Learning for Whole Slide Lung Cancer Image Analysis.

出版信息

IEEE Trans Cybern. 2020 Sep;50(9):3950-3962. doi: 10.1109/TCYB.2019.2935141. Epub 2019 Sep 2.

Abstract

Histopathology image analysis serves as the gold standard for cancer diagnosis. Efficient and precise diagnosis is quite critical for the subsequent therapeutic treatment of patients. So far, computer-aided diagnosis has not been widely applied in pathological field yet as currently well-addressed tasks are only the tip of the iceberg. Whole slide image (WSI) classification is a quite challenging problem. First, the scarcity of annotations heavily impedes the pace of developing effective approaches. Pixelwise delineated annotations on WSIs are time consuming and tedious, which poses difficulties in building a large-scale training dataset. In addition, a variety of heterogeneous patterns of tumor existing in high magnification field are actually the major obstacle. Furthermore, a gigapixel scale WSI cannot be directly analyzed due to the immeasurable computational cost. How to design the weakly supervised learning methods to maximize the use of available WSI-level labels that can be readily obtained in clinical practice is quite appealing. To overcome these challenges, we present a weakly supervised approach in this article for fast and effective classification on the whole slide lung cancer images. Our method first takes advantage of a patch-based fully convolutional network (FCN) to retrieve discriminative blocks and provides representative deep features with high efficiency. Then, different context-aware block selection and feature aggregation strategies are explored to generate globally holistic WSI descriptor which is ultimately fed into a random forest (RF) classifier for the image-level prediction. To the best of our knowledge, this is the first study to exploit the potential of image-level labels along with some coarse annotations for weakly supervised learning. A large-scale lung cancer WSI dataset is constructed in this article for evaluation, which validates the effectiveness and feasibility of the proposed method. Extensive experiments demonstrate the superior performance of our method that surpasses the state-of-the-art approaches by a significant margin with an accuracy of 97.3%. In addition, our method also achieves the best performance on the public lung cancer WSIs dataset from The Cancer Genome Atlas (TCGA). We highlight that a small number of coarse annotations can contribute to further accuracy improvement. We believe that weakly supervised learning methods have great potential to assist pathologists in histology image diagnosis in the near future.

摘要

组织病理学图像分析是癌症诊断的金标准。对于患者的后续治疗,高效、准确的诊断是非常关键的。到目前为止,计算机辅助诊断在病理领域还没有得到广泛应用,因为目前已经解决的任务只是冰山一角。全切片图像(WSI)分类是一个极具挑战性的问题。首先,注释的稀缺严重阻碍了开发有效方法的步伐。对 WSI 进行像素级勾画注释既耗时又乏味,这给构建大规模训练数据集带来了困难。此外,高倍放大场中存在的各种异质肿瘤模式实际上是主要障碍。此外,由于计算成本不可估量,千兆像素级的 WSI 无法直接进行分析。如何设计弱监督学习方法,最大限度地利用临床实践中易于获得的全切片级标签,是非常有吸引力的。为了克服这些挑战,本文提出了一种弱监督方法,用于快速有效地对整个肺肿瘤图像进行分类。我们的方法首先利用基于补丁的全卷积网络(FCN)来检索有区别的块,并以高效率提供具有代表性的深度特征。然后,探索不同的上下文感知块选择和特征聚合策略,以生成全局整体 WSI 描述符,最终将其输入随机森林(RF)分类器进行图像级预测。据我们所知,这是首次利用图像级标签和一些粗略注释进行弱监督学习的研究。本文构建了一个大规模的肺癌 WSI 数据集进行评估,验证了所提出方法的有效性和可行性。大量实验证明了我们的方法的优越性,与最先进的方法相比,我们的方法的准确率达到了 97.3%,具有显著优势。此外,我们的方法在癌症基因组图谱(TCGA)公共肺癌 WSI 数据集上也取得了最佳性能。我们强调,少量的粗略注释可以有助于进一步提高准确性。我们相信,弱监督学习方法在不久的将来有望辅助病理学家进行组织学图像诊断。

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