Machine learning is used in medicine to support physicians in examination, diagnosis, and predicting outcomes. One of the most dynamic area is the usage of patient generated health data from intensive care units. The goal of this paper is to demonstrate how we advance cross-patient ML model development by combining the patient's demographics data with their physiological data. We used a population of patients undergoing Carotid Enderarterectomy (CEA), where we studied differences in model performance and explainability when trained for all patients and one patient at a time. The results show that patients' demographics has a large impact on the performance and explainability and thus trustworthiness. We conclude that we can increase trust in ML models in a cross-patient context, by careful selection of models and patients based on their demographics and the surgical procedure.
翻译:医学用机器学习来支持医生进行检查、诊断和预测结果。最活跃的领域之一是使用从特护单位获得的病人健康数据。本文的目的是通过将病人的人口数据与生理数据相结合,说明我们如何推进跨住院ML模式的开发。我们使用的是接受Carotid Enderarterecterectomy(CEA)的病人,我们在那里研究了模型性能的差异,以及每次培训所有病人和一位病人时的可解释性。结果显示,病人的人口结构对性能、可解释性以及因此的可信赖性有很大影响。我们的结论是,我们可以根据病人的人口和外科手术程序仔细选择模型和病人。