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Deep biomarkers of aging and longevity: from research to applications

机译:衰老和长寿的深层生物标志物:从研究到应用

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摘要

Multiple recent advances in machine learning enabled computer systems to exceed human performance in many tasks including voice, text, and speech recognition and complex strategy games. Aging is a complex multifactorial process driven by and resulting in the many minute changes transpiring at every level of the human organism. Deep learning systems trained on the many measurable features changing in time can generalize and learn the many biological processes on the population and individual levels. The deep age predictors can help advance aging research by establishing causal relationships in non-linear systems. Deep aging clocks can be used for identification of novel therapeutic targets, evaluating the efficacy of the various interventions, data quality control, data economics, prediction of health trajectories, mortality, and many other applications. Here we present the current state of development of the deep aging clocks in the context of the pharmaceutical research and development and clinical applications.
机译:机器学习方面的多项最新进展使计算机系统在许多任务(包括语音,文本和语音识别以及复杂的策略游戏)中的性能超越了人类。衰老是一个复杂的多因素过程,由人类有机体的各个层面驱动并导致许多微小的变化发生。接受了许多随时间变化的可测量特征训练的深度学习系统,可以推广和学习人口和个人层面上的许多生物过程。深度预测器可以通过在非线性系统中建立因果关系来帮助推进老化研究。深度时钟可以用于识别新的治疗靶标,评估各种干预措施的功效,数据质量控制,数据经济学,健康轨迹预测,死亡率以及许多其他应用。在这里,我们介绍了在药物研发和临床应用的背景下深层老化时钟的发展现状。

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