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Protein function in precision medicine: deep understanding with machine learning

机译:精密医学中的蛋白质功能:通过机器学习深入理解

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摘要

Precision medicine and personalized health efforts propose leveraging complex molecular, medical and family history, along with other types of personal data toward better life. We argue that this ambitious objective will require advanced and specialized machine learning solutions. Simply skimming some low-hanging results off the data wealth might have limited potential. Instead, we need to better understand all parts of the system to define medically relevant causes and effects: how do particular sequence variants affect particular proteins and pathways? How do these effects, in turn, cause the health or disease-related phenotype? Toward this end, deeper understanding will not simply diffuse from deeper machine learning, but from more explicit focus on understanding protein function, context-specific protein interaction networks, and impact of variation on both.
机译:精准医学和个性化健康工作建议利用复杂的分子,医学和家族史以及其他类型的个人数据来改善生活。我们认为,这个雄心勃勃的目标将需要先进且专业的机器学习解决方案。简单地从数据财富中获取一些低调的结果可能具有有限的潜力。相反,我们需要更好地理解系统的所有部分,以定义医学上相关的原因和结果:特定的序列变体如何影响特定的蛋白质和途径?这些影响又如何导致健康或疾病相关的表型?为此,更深入的理解将不只是从更深入的机器学习中扩散而已,而是从更明确地关注蛋白质功能,特定于上下文的蛋白质相互作用网络以及变异对两者的影响中获得。

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