Prediction of Treatment Response in Triple Negative Breast Cancer From Whole Slide Images

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Peter Naylor, Tristan Lazard, G. Bataillon, M. Laé, A. Vincent-Salomon, A. Hamy, F. Reyal, Thomas Walter
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引用次数: 3

Abstract

The automatic analysis of stained histological sections is becoming increasingly popular. Deep Learning is today the method of choice for the computational analysis of such data, and has shown spectacular results for large datasets for a large variety of cancer types and prediction tasks. On the other hand, many scientific questions relate to small, highly specific cohorts. Such cohorts pose serious challenges for Deep Learning, typically trained on large datasets. In this article, we propose a modification of the standard nested cross-validation procedure for hyperparameter tuning and model selection, dedicated to the analysis of small cohorts. We also propose a new architecture for the particularly challenging question of treatment prediction, and apply this workflow to the prediction of response to neoadjuvant chemotherapy for Triple Negative Breast Cancer.
从全幻灯片图像预测三阴性乳腺癌的治疗反应
染色组织切片的自动分析正变得越来越流行。深度学习是当今对此类数据进行计算分析的首选方法,并在用于各种癌症类型和预测任务的大型数据集上显示出惊人的结果。另一方面,许多科学问题与小的、高度特定的群体有关。这样的群体对深度学习构成了严峻的挑战,深度学习通常是在大数据集上训练的。在本文中,我们提出了对标准嵌套交叉验证程序的修改,用于超参数调整和模型选择,专门用于小队列的分析。我们还为治疗预测这一特别具有挑战性的问题提出了一个新的架构,并将该工作流程应用于三阴性乳腺癌新辅助化疗反应的预测。
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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