School of Pharmacy, Newcastle University School of Pharmacy, Newcastle Upon Tyne, UK.
Faculty of Medical Sciences, Population Health Sciences Institute, Newcastle University, Newcastle upon Tyne, UK.
BMJ Health Care Inform. 2023 Aug;30(1). doi: 10.1136/bmjhci-2023-100784.
Predictive models have been used in clinical care for decades. They can determine the risk of a patient developing a particular condition or complication and inform the shared decision-making process. Developing artificial intelligence (AI) predictive models for use in clinical practice is challenging; even if they have good predictive performance, this does not guarantee that they will be used or enhance decision-making. We describe nine stages of developing and evaluating a predictive AI model, recognising the challenges that clinicians might face at each stage and providing practical tips to help manage them.
The nine stages included clarifying the clinical question or outcome(s) of interest (output), identifying appropriate predictors (features selection), choosing relevant datasets, developing the AI predictive model, validating and testing the developed model, presenting and interpreting the model prediction(s), licensing and maintaining the AI predictive model and evaluating the impact of the AI predictive model. The introduction of an AI prediction model into clinical practice usually consists of multiple interacting components, including the accuracy of the model predictions, physician and patient understanding and use of these probabilities, expected effectiveness of subsequent actions or interventions and adherence to these. Much of the difference in whether benefits are realised relates to whether the predictions are given to clinicians in a timely way that enables them to take an appropriate action.
The downstream effects on processes and outcomes of AI prediction models vary widely, and it is essential to evaluate the use in clinical practice using an appropriate study design.
预测模型在临床护理中已经使用了几十年。它们可以确定患者出现特定疾病或并发症的风险,并为共同决策过程提供信息。开发用于临床实践的人工智能(AI)预测模型具有挑战性;即使它们具有良好的预测性能,也不能保证它们将被使用或增强决策。我们描述了开发和评估预测 AI 模型的九个阶段,认识到临床医生在每个阶段可能面临的挑战,并提供实用技巧来帮助管理这些挑战。
九个阶段包括明确感兴趣的临床问题或结果(输出),确定适当的预测因素(特征选择),选择相关数据集,开发 AI 预测模型,验证和测试开发的模型,展示和解释模型预测,许可和维护 AI 预测模型以及评估 AI 预测模型的影响。AI 预测模型引入临床实践通常由多个相互作用的组件组成,包括模型预测的准确性、医生和患者对这些概率的理解和使用、后续行动或干预措施的预期效果以及对这些措施的依从性。是否实现收益的很大一部分差异与预测是否及时提供给临床医生,以便他们采取适当的行动有关。
AI 预测模型对流程和结果的下游影响差异很大,因此使用适当的研究设计评估其在临床实践中的使用至关重要。