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Machine learning for integrating data in biology and medicine: Principles, practice, and opportunities

机译:用于整合生物学和医学数据的机器学习:原则,实践和机遇

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摘要

New technologies have enabled the investigation of biology and human health at an unprecedented scale and in multiple dimensions. These dimensions include a myriad of properties describing genome, epigenome, transcriptome, microbiome, phenotype, and lifestyle. No single data type, however, can capture the complexity of all the factors relevant to understanding a phenomenon such as a disease. Integrative methods that combine data from multiple technologies have thus emerged as critical statistical and computational approaches. The key challenge in developing such approaches is the identification of effective models to provide a comprehensive and relevant systems view. An ideal method can answer a biological or medical question, identifying important features and predicting outcomes, by harnessing heterogeneous data across several dimensions of biological variation. In this Review, we describe the principles of data integration and discuss current methods and available implementations. We provide examples of successful data integration in biology and medicine. Finally, we discuss current challenges in biomedical integrative methods and our perspective on the future development of the field.
机译:新技术使得在前所未有的规模和多维方面的生物学和人类健康调查。这些尺寸包括描述基因组,外形组,转录组,微生物组,表型和生活方式的无数属性。然而,没有单一数据类型可以捕获与理解诸如疾病等现象相关的所有因素的复杂性。因此,将来自多种技术的数据组合的集成方法已成为关键的统计和计算方法。开发此类方法方面的关键挑战是确定有效模型,以提供全面和相关的系统视图。一种理想的方法可以通过利用在生物变化的几个维度上利用异质数据来回答生物学或医学问题,识别重要特征和预测结果。在本次审查中,我们描述了数据集成的原则,并讨论了当前方法和可用实现。我们提供了生物学和医学成功的数据集成的例子。最后,我们讨论了生物医学综合方法中的当前挑战,以及对该领域未来发展的看法。

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