Well-designed medical decision support system (DSS) have been shown to improve health care quality. However, before they can be used in real clinical situations, these systems must be extensively tested, to ensure that they conform to the clinical guidelines (CG) on which they are based. Existing methods cannot be used for the systematic testing of all possible test cases. We describe here a new exhaustive dynamic verification method. In this method, the DSS is considered to be a black box, and the Quinlan C4.5 algorithm is used to build a decision tree from an exhaustive set of DSS input vectors and outputs. This method was successfully used for the testing of a medical DSS relating to chronic diseases: the ASTI critiquing module for type 2 diabetes.
翻译:设计良好的医疗决策支助系统(DSS)已经证明可以提高医疗质量,然而,在真正临床情况下使用之前,必须对这些系统进行广泛测试,以确保它们符合它们所依据的临床指导方针(CG),现有方法不能用于对所有可能的测试病例进行系统测试,我们在此描述一种新的详尽无遗的动态核查方法,在这个方法中,DSS被视为黑盒,而Quinlan C4.5算法则则则用于从一套详尽的DSS输入矢量和产出中建立决策树,这种方法成功地用于测试与慢性疾病有关的医疗DSS:2型糖尿病的ASTI 滑动模块。