Owkin Lab, Owkin, Inc., New York, NY, USA.
Department of Biopathology, MESOPATH/MESOBANK Cancer Center Léon Bérard, Lyon, France.
Nat Med. 2019 Oct;25(10):1519-1525. doi: 10.1038/s41591-019-0583-3. Epub 2019 Oct 7.
Malignant mesothelioma (MM) is an aggressive cancer primarily diagnosed on the basis of histological criteria. The 2015 World Health Organization classification subdivides mesothelioma tumors into three histological types: epithelioid, biphasic and sarcomatoid MM. MM is a highly complex and heterogeneous disease, rendering its diagnosis and histological typing difficult and leading to suboptimal patient care and decisions regarding treatment modalities. Here we have developed a new approach-based on deep convolutional neural networks-called MesoNet to accurately predict the overall survival of mesothelioma patients from whole-slide digitized images, without any pathologist-provided locally annotated regions. We validated MesoNet on both an internal validation cohort from the French MESOBANK and an independent cohort from The Cancer Genome Atlas (TCGA). We also demonstrated that the model was more accurate in predicting patient survival than using current pathology practices. Furthermore, unlike classical black-box deep learning methods, MesoNet identified regions contributing to patient outcome prediction. Strikingly, we found that these regions are mainly located in the stroma and are histological features associated with inflammation, cellular diversity and vacuolization. These findings suggest that deep learning models can identify new features predictive of patient survival and potentially lead to new biomarker discoveries.
恶性间皮瘤(MM)是一种侵袭性癌症,主要基于组织学标准进行诊断。2015 年世界卫生组织分类将间皮瘤肿瘤分为三种组织学类型:上皮样、双相和肉瘤样 MM。MM 是一种高度复杂和异质的疾病,使其诊断和组织学分型变得困难,并导致患者护理不佳和治疗方式决策不佳。在这里,我们开发了一种新的基于深度卷积神经网络的方法——MesoNet,可以从全幻灯片数字化图像中准确预测间皮瘤患者的总生存期,而无需病理学家提供任何局部注释区域。我们在法国 MESOBANK 的内部验证队列和癌症基因组图谱(TCGA)的独立队列上验证了 MesoNet。我们还证明,该模型在预测患者生存方面比使用当前的病理实践更准确。此外,与传统的黑盒深度学习方法不同,MesoNet 确定了对患者预后预测有贡献的区域。引人注目的是,我们发现这些区域主要位于基质中,是与炎症、细胞多样性和空泡化相关的组织学特征。这些发现表明,深度学习模型可以识别预测患者生存的新特征,并可能导致新的生物标志物发现。