Mackel Thomas, Rosen Jacob, Pugh Carla
Department of Electrical Engineering, University of Washington, Seattle, WA, USA.
Stud Health Technol Inform. 2007;125:316-8.
The methodology for assessing medical skills is gradually shifting from subjective scoring of an expert which may be a variably biased opinion using vague criteria towards a more objective quantitative analysis. A methodology using Hidden Markov Modeling (HMM) and Markov Models (MM) were used to analyze database acquired the E-Pelvis (physical simulator) during a pelvic exam. The focus is on the method of selection of HMM parameters. K-Means is used to choose the alphabet size. Successful classification rates of 62% are observed with the HMM as opposed to 92% with the MM. Moreover, the MM provide an insight into the nature of the process while identifying typical sequences that are unique to each level of expertise, where the HM, given their nature as a black box model, do not.
评估医疗技能的方法正逐渐从专家的主观评分(这可能是一种使用模糊标准的存在不同程度偏差的意见)转向更客观的定量分析。一种使用隐马尔可夫模型(HMM)和马尔可夫模型(MM)的方法被用于分析在骨盆检查期间从电子骨盆(物理模拟器)获取的数据库。重点在于HMM参数的选择方法。K均值算法用于选择字母表大小。使用HMM观察到的成功分类率为62%,而使用MM的成功分类率为92%。此外,MM在识别每个专业水平特有的典型序列时,能深入了解过程的本质,而HMM由于其作为黑箱模型的性质则无法做到这一点。