整合多模式生物医学数据预测癌症分级和患者生存。

John H Phan, Ryan Hoffman, Sonal Kothari, Po-Yen Wu, May D Wang
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引用次数: 13

摘要

生物医学研究的大数据时代催生了大型队列数据库,如癌症基因组图谱(TCGA)。这些数据库通常包含数百个匹配的患者样本,用于基因组学、蛋白质组学、成像和临床数据模式,从而实现对人类疾病的整体和多模式综合分析。利用TCGA肾癌和卵巢癌数据,我们通过结合组织病理学图像和RNA-seq数据进行了一项多模式数据整合的新研究。我们比较了多数投票和堆叠泛化两种综合预测方法的性能。结果表明,多种数据模式的整合提高了癌症分级和预后的预测。具体来说,堆叠泛化是一种集成多个数据模式以产生单一预测结果的方法,优于单数据模式预测和多数投票。此外,堆叠泛化揭示了每种数据模态(以及每种数据模态中的特定特征)对最终预测结果的贡献,并可能提供解释预测性能的生物学见解。
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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Integration of Multi-Modal Biomedical Data to Predict Cancer Grade and Patient Survival.

The Big Data era in Biomedical research has resulted in large-cohort data repositories such as The Cancer Genome Atlas (TCGA). These repositories routinely contain hundreds of matched patient samples for genomic, proteomic, imaging, and clinical data modalities, enabling holistic and multi-modal integrative analysis of human disease. Using TCGA renal and ovarian cancer data, we conducted a novel investigation of multi-modal data integration by combining histopathological image and RNA-seq data. We compared the performances of two integrative prediction methods: majority vote and stacked generalization. Results indicate that integration of multiple data modalities improves prediction of cancer grade and outcome. Specifically, stacked generalization, a method that integrates multiple data modalities to produce a single prediction result, outperforms both single-data-modality prediction and majority vote. Moreover, stacked generalization reveals the contribution of each data modality (and specific features within each data modality) to the final prediction result and may provide biological insights to explain prediction performance.

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