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A Comparison of Existing Methods to Detect Weight Data Errors in a Pediatric Academic Medical Center

机译:儿科学术医学中心检测体重数据错误的现有方法的比较

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摘要

Dosing errors due to erroneous body weight entry can be mitigated through algorithms designed to detect anomalies in weight patterns. To prepare for the development of a new algorithm for weight-entry error detection, we compared methods for detecting weight anomalies to human annotation, including a regression-based method employed in a real-time web service. Using a random sample of 4,000 growth charts, annotators identified clinically important anomalies with good inter-rater reliability. Performance of the three detection algorithms was variable, with the best performance from the algorithm that takes into account weights collected after the anomaly was recorded. All methods were highly specific, but positive predictive value ranged from < 5% to over 82%. There were 203 records of missed errors, but all of these were either due to no prior data points or errors too small to be clinically significant. This analysis illustrates the need for better weight-entry error detection algorithms.
机译:可以通过设计用于检测体重模式异常的算法来减轻由于错误体重输入而导致的计量错误。为了为开发一种新的权重输入错误检测算法做准备,我们比较了将权重异常检测方法与人类注释进行比较的方法,包括在实时Web服务中采用的基于回归的方法。注释者使用4,000个生长图的随机样本,鉴定了具有重要评价者间可靠性的临床重要异常。三种检测算法的性能是可变的,算法的最佳性能考虑了记录异常后收集的权重。所有方法都是高度特异性的,但阳性预测值的范围从<5%到超过82%。有203条遗漏的错误记录,但是所有这些都是由于没有先前的数据点或由于错误太小而没有临床意义。该分析表明需要更好的权重输入错误检测算法。

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