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Translating cancer genomics into precision medicine with artificial intelligence: applications, challenges and future perspectives

机译:用人工智能将癌症基因组学转换为精密药物:应用,挑战和未来观点

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摘要

In the field of cancer genomics, the broad availability of genetic information offered by next-generation sequencing technologies and rapid growth in biomedical publication has led to the advent of the big-data era. Integration of artificial intelligence (AI) approaches such as machine learning, deep learning, and natural language processing (NLP) to tackle the challenges of scalability and high dimensionality of data and to transform big data into clinically actionable knowledge is expanding and becoming the foundation of precision medicine. In this paper, we review the current status and future directions of AI application in cancer genomics within the context of workflows to integrate genomic analysis for precision cancer care. The existing solutions of AI and their limitations in cancer genetic testing and diagnostics such as variant calling and interpretation are critically analyzed. Publicly available tools or algorithms for key NLP technologies in the literature mining for evidence-based clinical recommendations are reviewed and compared. In addition, the present paper highlights the challenges to AI adoption in digital healthcare with regard to data requirements, algorithmic transparency, reproducibility, and real-world assessment, and discusses the importance of preparing patients and physicians for modern digitized healthcare. We believe that AI will remain the main driver to healthcare transformation toward precision medicine, yet the unprecedented challenges posed should be addressed to ensure safety and beneficial impact to healthcare.
机译:在癌症基因组学领域,下一代测序技术提供的遗传信息的广泛可用性和生物医学出版物的快速增长导致了大数据时代的出现。人工智能(AI)诸如机器学习,深度学习和自然语言处理(NLP)的方法的整合,以解决数据的可扩展性和高度的挑战,并将大数据转化为临床可操作的知识正在扩大和成为基础精密药。在本文中,我们在工作流程背景下审查了AI应用中AI应用中AI应用的现状和未来方向,以整合精密癌症护理的基因组分析。 AI的现有解决方案及其在癌症遗传检测和诊断中的局限性均可分析。综述并比较了用于基于证据的临床建议的文献挖掘中的关键NLP技术的公开工具或算法。此外,本文突出了对数据要求,算法透明度,再现性和现实世界评估的数字医疗保健在数字医疗保健中采用的挑战,并探讨了患者和医生为现代数字化医疗保健的重要性。我们认为,AI将仍将成为医疗保健转型对精确药物的主要驱动因素,但应解决所提出的前所未有的挑战,以确保对医疗保健的安全和有益的影响。

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