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Automated and flexible identification of complex disease: building a model for systemic lupus erythematosus using noisy labeling

机译:自动化和灵活地识别复杂疾病:使用嘈杂的标签建立系统性红斑狼疮模型

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摘要

Accurate and efficient identification of complex chronic conditions in the electronic health record (EHR) is an important but challenging task that has historically relied on tedious clinician review and oversimplification of the disease. Here we adapt methods that allow for automated “noisy labeling” of positive and negative controls to create a “silver standard” for machine learning to automate identification of systemic lupus erythematosus (SLE). Our final model, which includes both structured data as well as text processing of clinical notes, outperformed all existing algorithms for SLE (AUC 0.97). In addition, we demonstrate how the probabilistic outputs of this model can be adapted to various clinical needs, selecting high thresholds when specificity is the priority and lower thresholds when a more inclusive patient population is desired. Deploying a similar methodology to other complex diseases has the potential to dramatically simplify the landscape of population identification in the EHR.
机译:准确,有效地识别电子健康记录(EHR)中的复杂慢性病是一项重要但具有挑战性的任务,该任务历来依赖于冗长的临床医生审查和对该病的过度简化。在这里,我们采用了允许对阳性和阴性对照进行自动“噪声标记”的方法,从而为机器学习创建了“银标准”,以自动识别系统性红斑狼疮(SLE)。我们的最终模型(包括结构化数据和临床注释的文本处理)胜过了SLE的所有现有算法(AUC 0.97)。此外,我们演示了该模型的概率输出如何适应各种临床需求,当优先考虑特异性时选择较高的阈值,而当需要更具包容性的患者群体时选择较低的阈值。对其他复杂疾病采用类似的方法可能会大大简化电子病历中人口识别的领域。

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