Frontiers of medical decision-making in the modern age of data analytics
本文综述了利用工业工程和运筹学模型改善医疗决策的进展,强调数据驱动方法在电子健康记录等数据中的应用,并展望了未来研究方向。
Recent decades have seen considerable advances in developing Industrial Engineering/Operations Research (IE/OR) models for improving decision-making in healthcare. These approaches span the full range of descriptive, predictive, and prescriptive models for supporting patients' and clinicians' decision-making. The pervasive use of information technology to collect and store electronic health records, insurance claims, genomic information, and other observational data has opened new doors for developing, validating, and applying these types of data-driven IE/OR models. This article describes opportunities at the frontier of medical decision-making, emphasizing the intersection of medicine, data analytics, and operations research. Many of the examples covered intersect the fields of statistics, machine learning, and artificial intelligence. A series of motivating examples illustrate the possibilities and some promising future research directions.