Exploration of Genomic, Proteomic, and Histopathological Image Data Integration Methods for Clinical Prediction.

A Poruthoor, J H Phan, S Kothari, May D Wang
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Abstract

The emergence of large multi-platform and multi-scale data repositories in biomedicine has enabled the exploration of data integration for holistic decision making. In this research, we investigate multi-modal genomic, proteomic, and histopathological image data integration for prediction of ovarian cancer clinical endpoints in The Cancer Genome Atlas (TCGA). Specifically, we study two data integration techniques, simple data concatenation and ensemble classification, to determine whether they can improve prediction of ovarian cancer grade or patient survival. Results indicate that integration via ensemble classification is more effective than simple data concatenation. We also highlight several key factors impacting data integration outcome such as predictability of endpoint, class prevalence, and unbalanced representation of features from different data modalities.

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基因组学、蛋白质组学和组织病理学图像数据整合方法在临床预测中的应用探索。
生物医学领域多平台、多尺度大型数据存储库的出现,使人们能够探索如何整合数据以进行整体决策。在这项研究中,我们研究了癌症基因组图谱(TCGA)中用于预测卵巢癌临床终点的多模态基因组、蛋白质组和组织病理图像数据整合。具体来说,我们研究了两种数据整合技术--简单数据串联和集合分类,以确定它们是否能改善卵巢癌分级或患者生存率的预测。结果表明,通过集合分类进行整合比简单数据合并更有效。我们还强调了影响数据整合结果的几个关键因素,如终点的可预测性、等级的普遍性以及来自不同数据模式的特征的不平衡表示。
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