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Multi-modal advanced deep learning architectures for breast cancer survival prediction

机译:用于乳腺癌生存预测的多模态高级深度学习架构

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摘要

Breast cancer is the most frequently occurring cancer and has compelling contributions to increasing mortality rates among women. The manual prognosis and diagnosis of this disease take long hours, even for a medical professional. A model with better predictive power can benefit cancer patients from going through the toxic side effects and extra medical expenses related to unnecessary treatment. Medical professionals can be benefited from early-stage detection and selection of the appropriate cancer treatment plan. The availability of multi-modal cancer data, i.e., genomic details, histopathology images, and clinical details, supports the researchers in proceeding with the development of multi -modal based advanced deep-learning models. This research proposes gated attentive deep learning models stacked with random forest classifiers, which use multi-modal data and produce informative features to enhance the breast cancer prognosis prediction. It is designed as a bi-phase model; phase one uses a sigmoid gated attention convolutional neural network to generate the stacked features, while phase two passes the stacked features to the random forest classifier. The comparative study of the proposed and other existing methods over METABRIC (1980 patients) and TCGA-BRCA (1080 patients) datasets illustrate significant enhancements, 5.1% in sensitivity values, in the survival estimation of breast cancer patients. (c) 2021 Elsevier B.V. All rights reserved.
机译:乳腺癌是最常见的癌症,对妇女死亡率提高死亡率具有令人信服的贡献。手动预后和诊断这种疾病需要长时间,即使是医疗专业人员。具有更好预测力的模型可以使癌症患者受益于毒性副作用和与不必要的治疗相关的额外医疗费用。医疗专业人员可以从早期检测和选择适当的癌症治疗计划中受益。多模态癌症数据的可用性,即基因组细节,组织病理学图像和临床细节,支持研究人员继续开发基于多模的高级深度学习模型。本研究提出了与随机森林分类器堆叠的门控细深学习模型,它使用多模态数据并产生信息性功能以增强乳腺癌预测预测。它被设计为双相模型;第一阶段使用Sigmoid门控卷积神经网络来生成堆叠功能,而第二阶段将堆叠特征传递给随机林分类器。在乳腺癌患者的存活估计中,乳腺癌患者的存活估计,提出和TCGA-BRCA(1080名患者)和TCGA-BRCA(1080名患者)和TCGA-BRCA(1080名患者)和TCGA-BRCA(1080名患者)和TCGA-BRCA(1080名患者)数据集的比较研究表明了5.1%。 (c)2021 elestvier b.v.保留所有权利。

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