人工智能在癌症治疗的基因组医学中越来越多的应用——前景和潜在的缺陷。

Olivia O'Connor, Terri P McVeigh
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引用次数: 0

摘要

基因组医学领域产生了大量的数据集,需要对这些数据集进行快速分析,以在癌症治疗中产生临床可操作的见解。人工智能在数据、处理和从数据集中学习方面蓬勃发展,其准确性和效率是传统计算算法无法实现的。基于患者的基因组序列,人工智能可以更早地发现癌症,为个性化治疗计划提供信息,并为预测提供见解。然而,这一有价值的工具遭到了质疑,利益相关者担心数据安全、人工智能因幻觉而犯错误的责任以及对临床工作的威胁。这篇综述强调了在癌症治疗的基因组医学中使用人工智能的好处和潜在问题,旨在减少临床医生和数据科学家之间的知识差距,并促进人工智能在癌症治疗中的未来部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Increasing use of artificial intelligence in genomic medicine for cancer care- the promise and potential pitfalls.

The field of genomic medicine produces large datasets, which need to be rapidly analysed to produce clinically actionable insights in cancer care. Artificial intelligence thrives on data, processing and learning from datasets with a degree of accuracy and efficiency that traditional computing algorithms can not achieve. Based on a patient's genome sequence, AI could allow earlier detection of cancer, inform personalised treatment plans and provide insights into prognostication. However, this valuable tool is met with skepticism, with stakeholders concerned over data security, liability for AI's mistakes due to hallucination and the threat to clinical jobs. This review highlights both the benefits and potential problems of using AI in genomic medicine for cancer care, with the aim to lessen the knowledge gap between clinicians and data scientists and facilitate the future deployment of AI in cancer care.

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