Rashindrie Perera, Peter Savas, Damith Senanayake, Roberto Salgado, Heikki Joensuu, Sandra O’Toole, Jason Li, Sherene Loi, Saman Halgamuge
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引用次数: 0
摘要
肿瘤浸润淋巴细胞(TIL)在针对癌细胞的免疫反应中起着关键作用。现有的全切片图像(WSI)TIL分析深度学习方法需要大量的斑块级注释,通常需要劳动密集型的专家输入。为了解决这个问题,我们提出了一个名为 "高效注释分割和基于注意力的分类器(ANSAC)"的框架。ANSAC 只需要玻片级标签就能将 WSI 划分为 TIL 分数高与低,二元类别由专家定义的阈值划分。ANSAC 自动分割与 TIL 评估相关的肿瘤和基质区域,省去了大量的人工标注。此外,它还利用注意力模型生成地图,突出显示最相关的分类区域。我们在四个乳腺癌数据集上对 ANSAC 进行了评估,结果表明,与三种基线方法相比,ANSAC 在识别 TIL 相关区域方面有了实质性的改进,在保留的测试数据集上,分类改进率高达 8%。此外,我们还对一种著名的方法提出了预处理修改建议,将其性能提高了 6%。Perera 等人开发了一种机器学习方法,用于将整张切片图像划分为肿瘤浸润淋巴细胞的二元类别。他们将该方法与两个成熟的模型进行了比对,并将整个处理管道作为开放源代码提供。
Annotation-efficient deep learning for breast cancer whole-slide image classification using tumour infiltrating lymphocytes and slide-level labels
Tumour-Infiltrating Lymphocytes (TILs) are pivotal in the immune response against cancer cells. Existing deep learning methods for TIL analysis in whole-slide images (WSIs) demand extensive patch-level annotations, often requiring labour-intensive specialist input. To address this, we propose a framework named annotation-efficient segmentation and attention-based classifier (ANSAC). ANSAC requires only slide-level labels to classify WSIs as having high vs. low TIL scores, with the binary classes divided by an expert-defined threshold. ANSAC automatically segments tumour and stroma regions relevant to TIL assessment, eliminating extensive manual annotations. Furthermore, it uses an attention model to generate a map that highlights the most pertinent regions for classification. Evaluating ANSAC on four breast cancer datasets, we demonstrate substantial improvements over three baseline methods in identifying TIL-relevant regions, with up to 8% classification improvement on a held-out test dataset. Additionally, we propose a pre-processing modification to a well-known method, enhancing its performance up to 6%. Perera et al. developed a machine-learning approach for classifying whole-slide images into binary categories of tumour-infiltrating lymphocytes. They have benchmarked it against two established models and made the entire processing pipeline available as open source.