人工智能在神经系统疾病药物开发中的应用。

IF 5.6 2区 医学 Q1 CLINICAL NEUROLOGY
Sean Ekins, Thomas R Lane
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引用次数: 0

摘要

神经系统疾病包括1000多种疾病,造成巨大的人类健康和经济损失,也是一个极端的故事。一端是影响数百万人的复杂和异质性疾病,而另一端是少数个体的单基因和罕见疾病。缺少的是能够治疗或治愈这种疾病的药物。发现这些药物具有挑战性,因为开发这些药物的成本极高,或者在某些情况下对这些疾病的了解有限。经过几十年的药物发现研究,现在有相当多的数据可以用来帮助开发更有战略意义的新化合物。这包括具有靶点的高通量筛选数据,涉及神经系统疾病的蛋白质晶体结构和邻近数据,如分子特性,如血脑屏障通透性,以及一系列体外和体内毒性终点,对任何靶向中枢神经系统的药物都有价值。虽然计算工具已经开发并应用于神经系统疾病几十年了,但我们现在处于机器学习和人工智能(AI)的时代。这有望加快新分子的识别和发现。无论是使用单独的计算技术还是复杂的端到端方法,科学家都可以缩小他们制造和测试的分子范围,并研究更多以前可能无法达到的目标或疾病。这篇综述强调了人工智能的许多不同应用,可能会为神经系统疾病带来新的发现和治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of artificial intelligence in drug discovery for neurological diseases.

Neurological disease encompasses over 1000 disorders, exacts a massive human health and financial toll as well as being a story of extremes. At one end are diseases that are complex and heterogeneous affecting millions, while at the other there are monogenic and rare diseases, with a handful of individuals. What are absent are drugs that can treat or cure the disease. Discovering these is challenging, held back by extreme costs to develop them or in some cases by the limited understanding of the diseases. After decades of drug discovery research there is now considerable data available which can be used to help develop novel compounds more strategically. This includes high throughput screening data with targets, crystal structures of proteins implicated in neurological diseases and adjacent data such as properties of molecules like blood brain barrier permeability as well as an array of in vitro and in vivo toxicity endpoints valuable for any drug targeting the central nervous system. While computational tools have been developing and applied to neurological diseases for decades, we are now in the age of machine learning and artificial intelligence (AI). This promises the potential to expedite the identification and discovery of new molecules. Whether by using individual computational techniques or complex end-to-end approaches, scientists can narrow the molecules they make and test as well as study more targets or diseases which might have been out of reach previously. This review highlights the many different applications of AI potentially enabling new discoveries and treatments for neurological diseases.

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来源期刊
Neurotherapeutics
Neurotherapeutics 医学-神经科学
CiteScore
11.00
自引率
3.50%
发文量
154
审稿时长
6-12 weeks
期刊介绍: Neurotherapeutics® is the journal of the American Society for Experimental Neurotherapeutics (ASENT). Each issue provides critical reviews of an important topic relating to the treatment of neurological disorders written by international authorities. The Journal also publishes original research articles in translational neuroscience including descriptions of cutting edge therapies that cross disciplinary lines and represent important contributions to neurotherapeutics for medical practitioners and other researchers in the field. Neurotherapeutics ® delivers a multidisciplinary perspective on the frontiers of translational neuroscience, provides perspectives on current research and practice, and covers social and ethical as well as scientific issues.
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