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A Deep Learning Model and Human-Machine Fusion for Prediction of EBV-associated Gastric Cancer from Histopathology

Nature Communications(2022)

Department of Pathology | School of Computer Science and Engineering | Department of Urology

Cited 49|Views35
Abstract
Epstein–Barr virus-associated gastric cancer (EBVaGC) shows a robust response to immune checkpoint inhibitors. Therefore, a cost-efficient and accessible tool is needed for discriminating EBV status in patients with gastric cancer. Here we introduce a deep convolutional neural network called EBVNet and its fusion with pathologists for predicting EBVaGC from histopathology. The EBVNet yields an averaged area under the receiver operating curve (AUROC) of 0.969 from the internal cross validation, an AUROC of 0.941 on an external dataset from multiple institutes and an AUROC of 0.895 on The Cancer Genome Atlas dataset. The human-machine fusion significantly improves the diagnostic performance of both the EBVNet and the pathologist. This finding suggests that our EBVNet could provide an innovative approach for the identification of EBVaGC and may help effectively select patients with gastric cancer for immunotherapy.
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Gastric cancer,Machine learning,Tumour virus infections,Science,Humanities and Social Sciences,multidisciplinary
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要点】:本研究提出了一种深度学习模型EBVNet,结合人类病理学家经验,用于从组织病理学图像预测EBV相关胃癌,提高了诊断性能,为免疫治疗患者筛选提供了创新方法。

方法】:研究采用深度卷积神经网络(EBVNet)对组织病理学图像进行分析,并通过与病理学家的结合,提升了模型预测的准确性。

实验】:通过内部交叉验证,外部多机构数据集和癌症基因组图谱(The Cancer Genome Atlas)数据集进行实验,EBVNet在内部验证中达到了平均AUROC为0.969,外部数据集AUROC为0.941,癌症基因组图谱数据集AUROC为0.895,人类-机器融合显著提高了EBVNet和病理学家的诊断性能。