Design Interactive, 3504 Lake Lynda Drive Suite 400, Orlando, FL, 32817, United States.
Design Interactive, 3504 Lake Lynda Drive Suite 400, Orlando, FL, 32817, United States.
Int J Med Inform. 2017 Dec;108:169-174. doi: 10.1016/j.ijmedinf.2017.08.003. Epub 2017 Aug 26.
The purpose of this study was to investigate the potential of developing an EHR-based model of physician competency, named the Skill Deficiency Evaluation Toolkit for Eliminating Competency-loss Trends (Skill-DETECT), which presents the opportunity to use EHR-based models to inform selection of Continued Medical Education (CME) opportunities specifically targeted at maintaining proficiency.
The IBM Explorys platform provided outpatient Electronic Health Records (EHRs) representing 76 physicians with over 5000 patients combined. These data were used to develop the Skill-DETECT model, a predictive hybrid model composed of a rule-based model, logistic regression model, and a thresholding model, which predicts cognitive clinical skill deficiencies in internal medicine physicians. A three-phase approach was then used to statistically validate the model performance.
Subject Matter Expert (SME) panel reviews resulted in a 100% overall approval rate of the rule based model. Area under the receiver-operating characteristic curves calculated for each logistic regression curve resulted in values between 0.76 and 0.92, which indicated exceptional performance. Normality, skewness, and kurtosis were determined and confirmed that the distribution of values output from the thresholding model were unimodal and peaked, which confirmed effectiveness and generalizability.
The validation has confirmed that the Skill-DETECT model has a strong ability to evaluate EHR data and support the identification of internal medicine cognitive clinical skills that are deficient or are of higher likelihood of becoming deficient and thus require remediation, which will allow both physician and medical organizations to fine tune training efforts.
本研究旨在探讨开发基于电子病历(EHR)的医师能力模型的潜力,该模型名为 Skill-DETECT(Skill Deficiency Evaluation Toolkit for Eliminating Competency-loss Trends 的缩写),它提供了一种使用基于 EHR 的模型来选择特定于保持熟练程度的继续医学教育(CME)机会的机会。
IBM Explorys 平台提供了代表 76 名医生的 5000 多名患者的门诊电子健康记录(EHR)。这些数据用于开发 Skill-DETECT 模型,这是一种由基于规则的模型、逻辑回归模型和阈值模型组成的预测混合模型,可预测内科医生的认知临床技能缺陷。然后使用三阶段方法对模型性能进行统计验证。
主题专家(SME)小组的审查导致基于规则的模型获得了 100%的总体批准率。为每个逻辑回归曲线计算的接收者操作特征曲线下的面积导致值在 0.76 到 0.92 之间,这表明表现出色。确定了正态性、偏度和峰度,并确认阈值模型输出值的分布是单峰的,这证实了有效性和通用性。
验证确认了 Skill-DETECT 模型具有强大的能力来评估 EHR 数据并支持识别存在缺陷或更有可能出现缺陷的内科认知临床技能,从而需要进行补救,这将使医生和医疗组织都能够调整培训工作。