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Developing a ‘personalome’ for precision medicine: emerging methods that compute interpretable effect sizes from single-subject transcriptomes

机译:开发精密医学的个人组:新兴的方法可从单受试者转录组计算出可解释的效应大小

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摘要

The development of computational methods capable of analyzing -omics data at the individual level is critical for the success of precision medicine. Although unprecedented opportunities now exist to gather data on an individual’s -omics profile (‘personalome’), interpreting and extracting meaningful information from single-subject -omics remain underdeveloped, particularly for quantitative non-sequence measurements, including complete transcriptome or proteome expression and metabolite abundance. Conventional bioinformatics approaches have largely been designed for making population-level inferences about ‘average’ disease processes; thus, they may not adequately capture and describe individual variability. Novel approaches intended to exploit a variety of -omics data are required for identifying individualized signals for meaningful interpretation. In this review—intended for biomedical researchers, computational biologists and bioinformaticians—we survey emerging computational and translational informatics methods capable of constructing a single subject's ‘personalome’ for predicting clinical outcomes or therapeutic responses, with an emphasis on methods that provide interpretable readouts. Key points: (i) the single-subject analytics of the transcriptome shows the greatest development to date and, (ii) the methods were all validated in simulations, cross-validations or independent retrospective data sets. This survey uncovers a growing field that offers numerous opportunities for the development of novel validation methods and opens the door for future studies focusing on the interpretation of comprehensive ‘personalomes’ through the integration of multiple -omics, providing valuable insights into individual patient outcomes and treatments.
机译:能够在个人层面分析组学数据的计算方法的发展对于精密医学的成功至关重要。尽管现在存在空前的机会来收集个人-组学概况(“ personalome”)上的数据,但是从单主体-组学上解释和提取有意义的信息仍然不发达,特别是对于定量非序列测量,包括完整的转录组或蛋白质组表达和代谢产物丰富。传统的生物信息学方法在很大程度上是为了对“平均”疾病过程进行人口层次的推论。因此,它们可能无法充分捕捉和描述个体差异。需要使用旨在利用各种组学数据的新颖方法来识别个性化信号以进行有意义的解释。在本综述中(针对生物医学研究人员,计算生物学家和生物信息学家),我们调查了新兴的计算和翻译信息学方法,这些方法能够构建单个受试者的“个人组”以预测临床结果或治疗反应,重点在于提供可解释的读数的方法。要点:(i)转录组的单主题分析显示了迄今为止最大的发展,并且(ii)所有方法均在模拟,交叉验证或独立的回顾性数据集中得到了验证。这项调查发现了一个不断发展的领域,该领域为开发新颖的验证方法提供了许多机会,并为将来的研究之门打开了大门,该研究的重点是通过整合多个组学来提供全面的“个性化组”的解释,从而为各个患者的结果和治疗提供有价值的见解。

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