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Translational Physiology: Artificial intelligence physiological genomics and precision medicine

机译:转化生理学:人工智能生理基因组学和精密医学

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摘要

Big data are a major driver in the development of precision medicine. Efficient analysis methods are needed to transform big data into clinically-actionable knowledge. To accomplish this, many researchers are turning toward machine learning (ML), an approach of artificial intelligence (AI) that utilizes modern algorithms to give computers the ability to learn. Much of the effort to advance ML for precision medicine has been focused on the development and implementation of algorithms and the generation of ever larger quantities of genomic sequence data and electronic health records. However, relevance and accuracy of the data are as important as quantity of data in the advancement of ML for precision medicine. For common diseases, physiological genomic readouts in disease-applicable tissues may be an effective surrogate to measure the effect of genetic and environmental factors and their interactions that underlie disease development and progression. Disease-applicable tissue may be difficult to obtain, but there are important exceptions such as kidney needle biopsy specimens. As AI continues to advance, new analytical approaches, including those that go beyond data correlation, need to be developed and ethical issues of AI need to be addressed. Physiological genomic readouts in disease-relevant tissues, combined with advanced AI, can be a powerful approach for precision medicine for common diseases.
机译:大数据是精密医学发展的主要动力。需要有效的分析方法来将大数据转化为可用于临床的知识。为了实现这一目标,许多研究人员正在转向机器学习(ML),这是一种利用现代算法使计算机具有学习能力的人工智能(AI)方法。推进精密医学ML的大部分努力都集中在算法的开发和实现以及越来越多的基因组序列数据和电子健康记录的生成上。但是,数据的相关性和准确性与精确医学ML的发展一样重要。对于常见疾病,疾病适用组织中的生理基因组读数可能是衡量遗传和环境因素的影响以及构成疾病发展和进展的相互作用的有效替代方法。适用于疾病的组织可能很难获得,但也有重要的例外,例如肾穿刺活检标本。随着AI的不断发展,需要开发新的分析方法,包括超越数据关联的分析方法,并且需要解决AI的道德问题。与疾病相关的组织中的生理基因组读数,再加上先进的AI,可以成为针对常见疾病的精准医学的有力方法。

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