UMIT–University for Health Sciences, Medical Informatics and Technology,Hall/Tyrol, Austria (US)
Departments of Industrial and Systems Engineering and Population Health Sciences, University of Wisconsin-Madison, Madison, WI, USA (OA)
Med Decis Making. 2012 Sep-Oct;32(5):690-700. doi: 10.1177/0272989X12455463.
State-transition modeling (STM) is an intuitive, flexible, and transparent approach of computer-based decision-analytic modeling, including both Markov model cohort simulation as well as individual-based (first-order Monte Carlo) microsimulation. Conceptualizing a decision problem in terms of a set of (health) states and transitions among these states, STM is one of the most widespread modeling techniques in clinical decision analysis, health technology assessment, and health-economic evaluation. STMs have been used in many different populations and diseases, and their applications range from personalized health care strategies to public health programs. Most frequently, state-transition models are used in the evaluation of risk factor interventions, screening, diagnostic procedures, treatment strategies, and disease management programs.
状态转移建模(STM)是一种基于计算机的决策分析建模的直观、灵活和透明的方法,包括 Markov 模型队列模拟和基于个体的(一阶蒙特卡罗)微观模拟。通过将决策问题概念化为一组(健康)状态和这些状态之间的转移,STM 是临床决策分析、卫生技术评估和健康经济评价中最广泛使用的建模技术之一。STM 已在许多不同的人群和疾病中得到应用,其应用范围从个性化医疗保健策略到公共卫生计划。最常见的是,状态转移模型用于评估风险因素干预、筛查、诊断程序、治疗策略和疾病管理计划。