Randhawa Inderpal S, Sigalov Grigori
Food Allergy Institute, Long Beach, CA, United States.
Front Physiol. 2025 Jul 14;16:1649114. doi: 10.3389/fphys.2025.1649114. eCollection 2025.
Clinical trials of a treatment in traditional mass medicine are based on the concept of proof of efficacy. It must be proven for a group of subjects that meet certain selection criteria. Subject variability must be demonstrated to exist and yet not to invalidate the proof of efficacy. If so, it is assumed that new patients meeting the same selection criteria would have a uniform response to treatment, irrespective of their individual traits. However, the variability that can be ignored for a group should not be ignored for an individual. Standard statistical methods are designed to estimate an average effect size for large enough groups, but they cannot predict an expected effect size for a single patient. Such predictions based on the patient's individual characteristics, rather than on their classification as a member of a target population or study group, are possible in personalized medicine. The latter employs multivariable predictive models via advanced mathematical methods implemented in Artificial Intelligence (AI), and it incorporates the subject variability in the predictive models to improve their accuracy and selectivity. There is a common misconception that personalized medicine belongs in a narrow area of rare diseases or genotype-guided care. In this paper, we argue that AI has potential to improve the treatment success estimates in traditional mass medicine as well at no extra cost to researchers. The clinical trial data on subject variability that are already routinely collected only need to be analyzed and interpreted using the methods of personalized medicine. To implement such improvements in medical practice, they need to be acknowledged and regulated by FDA and its counterparts in other countries.
传统大众医学中一种治疗方法的临床试验基于疗效证明的概念。对于符合某些选择标准的一组受试者,必须证明其疗效。必须证明受试者存在变异性,但这并不会使疗效证明无效。如果是这样,那么可以假定,符合相同选择标准的新患者对治疗会有一致的反应,而不论其个体特征如何。然而,对于一个群体可以忽略的变异性,对于个体却不应被忽略。标准统计方法旨在估计足够大群体的平均效应大小,但它们无法预测单个患者的预期效应大小。在个性化医疗中,可以根据患者的个体特征而非将其作为目标人群或研究组的成员进行分类来做出此类预测。后者通过人工智能(AI)中实施的先进数学方法采用多变量预测模型,并将受试者变异性纳入预测模型以提高其准确性和选择性。有一种常见的误解,认为个性化医疗只适用于罕见疾病或基因型指导护理的狭窄领域。在本文中,我们认为人工智能有潜力在不增加研究人员额外成本的情况下提高传统大众医学中的治疗成功估计。已经常规收集的关于受试者变异性的临床试验数据只需要使用个性化医疗的方法进行分析和解释。为了在医疗实践中实现这种改进,它们需要得到美国食品药品监督管理局(FDA)及其在其他国家的对应机构的认可和监管。