Ted Rogers School of Information Technology Management, Toronto Metropolitan University, Toronto, ON, Canada.
Cancer Control. 2024 Jan-Dec;31:10732748241264704. doi: 10.1177/10732748241264704.
Therapeutic resistance is a major challenge facing the design of effective cancer treatments. Adaptive cancer therapy is in principle the most viable approach to manage cancer's adaptive dynamics through drug combinations with dose timing and modulation. However, there are numerous open issues facing the clinical success of adaptive therapy. Chief among these issues is the feasibility of real-time predictions of treatment response which represent a bedrock requirement of adaptive therapy. Generative artificial intelligence has the potential to learn prediction models of treatment response from clinical, molecular, and radiomics data about patients and their treatments. The article explores this potential through a proposed integration model of Generative Pre-Trained Transformers (GPTs) in a closed loop with adaptive treatments to predict the trajectories of disease progression. The conceptual model and the challenges facing its realization are discussed in the broader context of artificial intelligence integration in oncology.
治疗抵抗是有效癌症治疗设计面临的主要挑战。自适应癌症治疗原则上是通过药物组合与剂量定时和调节来管理癌症适应性动态的最可行方法。然而,自适应治疗的临床成功面临着许多悬而未决的问题。其中最主要的问题是实时预测治疗反应的可行性,这是自适应治疗的一个基本要求。生成式人工智能有可能从关于患者及其治疗的临床、分子和放射组学数据中学习治疗反应的预测模型。本文通过提出的将生成式预训练转换器(GPT)与自适应治疗相结合的闭环集成模型来探索这种潜力,以预测疾病进展的轨迹。该概念模型及其实现所面临的挑战在人工智能在肿瘤学中的整合的更广泛背景下进行了讨论。