Applications of artificial intelligence in clinical laboratory genomics

IF 2.8 3区 医学 Q2 GENETICS & HEREDITY
Swaroop Aradhya, Flavia M. Facio, Hillery Metz, Toby Manders, Alexandre Colavin, Yuya Kobayashi, Keith Nykamp, Britt Johnson, Robert L. Nussbaum
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引用次数: 3

Abstract

The transition from analog to digital technologies in clinical laboratory genomics is ushering in an era of “big data” in ways that will exceed human capacity to rapidly and reproducibly analyze those data using conventional approaches. Accurately evaluating complex molecular data to facilitate timely diagnosis and management of genomic disorders will require supportive artificial intelligence methods. These are already being introduced into clinical laboratory genomics to identify variants in DNA sequencing data, predict the effects of DNA variants on protein structure and function to inform clinical interpretation of pathogenicity, link phenotype ontologies to genetic variants identified through exome or genome sequencing to help clinicians reach diagnostic answers faster, correlate genomic data with tumor staging and treatment approaches, utilize natural language processing to identify critical published medical literature during analysis of genomic data, and use interactive chatbots to identify individuals who qualify for genetic testing or to provide pre-test and post-test education. With careful and ethical development and validation of artificial intelligence for clinical laboratory genomics, these advances are expected to significantly enhance the abilities of geneticists to translate complex data into clearly synthesized information for clinicians to use in managing the care of their patients at scale.

Abstract Image

人工智能在临床实验室基因组学中的应用。
临床实验室基因组学从模拟技术向数字技术的转变正在开创一个“大数据”时代,其方式将超过人类使用传统方法快速、可复制地分析这些数据的能力。准确评估复杂的分子数据以促进基因组疾病的及时诊断和管理将需要支持性的人工智能方法。这些已经被引入临床实验室基因组学,以识别DNA测序数据中的变体,预测DNA变体对蛋白质结构和功能的影响,为致病性的临床解释提供信息,将表型本体与通过外显子组或基因组测序识别的遗传变体联系起来,帮助临床医生更快地得出诊断答案,将基因组数据与肿瘤分期和治疗方法相关联,在分析基因组数据期间利用自然语言处理来识别关键的已发表医学文献,并使用交互式聊天机器人来识别有资格进行基因检测的个人或提供检测前和检测后教育。随着人工智能在临床实验室基因组学中的谨慎和合乎道德的开发和验证,这些进展有望显著提高遗传学家将复杂数据转化为清晰合成信息的能力,供临床医生用于大规模管理患者护理。
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来源期刊
CiteScore
7.00
自引率
0.00%
发文量
42
审稿时长
>12 weeks
期刊介绍: Seminars in Medical Genetics, Part C of the American Journal of Medical Genetics (AJMG) , serves as both an educational resource and review forum, providing critical, in-depth retrospectives for students, practitioners, and associated professionals working in fields of human and medical genetics. Each issue is guest edited by a researcher in a featured area of genetics, offering a collection of thematic reviews from specialists around the world. Seminars in Medical Genetics publishes four times per year.
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