将人工智能和机器学习集成到癌症临床试验中。

IF 2.6 3区 医学 Q3 ONCOLOGY Seminars in Radiation Oncology Pub Date : 2023-10-01 DOI:10.1016/j.semradonc.2023.06.004
John Kang , Amit K. Chowdhry , Stephanie L. Pugh , John H. Park
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引用次数: 0

摘要

肿瘤学的实践需要分析和综合丰富的数据。从患者的检查以确定是否符合接受治疗的资格,到治疗后的监测,从业者必须根据他们对手头信息的最佳理解,不断地权衡、评估和权衡决策。这些复杂的多因素决策有很大的机会受益于数据驱动的机器学习(ML)方法,以推动人工智能(AI)的发展。在过去的5年里,我们看到人工智能从一个简单的有希望的机会转变为用于前瞻性试验。在这里,我们回顾了人工智能在临床试验中的最新努力,这些努力使指针朝着改进可操作结果的预测方向发展,例如预测急性护理就诊、短期死亡率和病理性结外扩张。然后,我们停下来思考,这些人工智能模型如何提出与读者可能更熟悉的传统统计模型不同的问题;那么读者应该如何对他们不太熟悉的人工智能模型进行概念化和解释。最后,我们认为人工智能在肿瘤学领域有着很好的未来机会,着眼于让数据通过无监督学习和生成模型为我们提供信息,而不是要求人工智能执行特定功能。
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Integrating Artificial Intelligence and Machine Learning Into Cancer Clinical Trials

The practice of oncology requires analyzing and synthesizing abundant data. From the patient's workup to determine eligibility to the therapies received to the post-treatment surveillance, practitioners must constantly juggle, evaluate, and weigh decision-making based on their best understanding of information at hand. These complex, multifactorial decisions have a tremendous opportunity to benefit from data-driven machine learning (ML) methods to drive opportunities in artificial intelligence (AI). Within the past 5 years, we have seen AI move from simply a promising opportunity to being used in prospective trials. Here, we review recent efforts of AI in clinical trials that have moved the needle towards improved prediction of actionable outcomes, such as predicting acute care visits, short term mortality, and pathologic extranodal extension. We then pause and reflect on how these AI models ask a different question than traditional statistics models that readers may be more familiar with; how then should readers conceptualize and interpret AI models that they are not as familiar with. We end with what we believe are promising future opportunities for AI in oncology, with an eye towards allowing the data to inform us through unsupervised learning and generative models, rather than asking AI to perform specific functions.

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来源期刊
CiteScore
5.80
自引率
0.00%
发文量
48
审稿时长
>12 weeks
期刊介绍: Each issue of Seminars in Radiation Oncology is compiled by a guest editor to address a specific topic in the specialty, presenting definitive information on areas of rapid change and development. A significant number of articles report new scientific information. Topics covered include tumor biology, diagnosis, medical and surgical management of the patient, and new technologies.
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