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Strategies for handling missing clinical data for automated surgical site infection detection from the electronic health record

机译:电子病历中自动手术部位感染检测的缺失临床数据处理策略

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摘要

Proper handling of missing data is important for many secondary uses of electronic health record (EHR) data. Data imputation methods can be used to handle missing data, but their use for analyzing EHR data is limited and specific efficacy for postoperative complication detection is unclear. Several data imputation methods were used to develop data models for automated detection of three types (i.e., superficial, deep, and organ space) of surgical site infection (SSI) and overall SSI using American College of Surgeons National Surgical Quality Improvement Project (NSQIP) Registry 30-day SSI occurrence data as a reference standard. Overall, models with missing data imputation almost always outperformed reference models without imputation that included only cases with complete data for detection of SSI overall achieving very good average area under the curve values. Missing data imputation appears to be an effective means for improving postoperative SSI detection using EHR clinical data.
机译:正确处理丢失的数据对于电子病历(EHR)数据的许多二次使用很重要。数据插补方法可用于处理丢失的数据,但是其用于分析EHR数据的用途受到限制,并且尚不清楚术后并发症检测的具体功效。使用美国外科医师学会国家外科手术质量改善计划(NSQIP),使用几种数据插补方法来开发数据模型,以自动检测三种类型(即浅表,深层和器官空间)的手术部位感染(SSI)和整体SSI将注册表的30天SSI发生数据作为参考标准。总体而言,缺少数据插补的模型几乎总是优于没有插补的参考模型,该模型仅包含具有完整数据的案例,用于整体检测SSI,从而在曲线值下实现了非常好的平均面积。缺少数据归因似乎是使用EHR临床数据改善术后SSI检测的有效手段。

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