揭示化脓性扁桃体炎误诊和漏诊的负担:一种机器学习方法

J. Kirby, Katherine Kim, Marko Zivkovic, Siwei Wang, Vishvas Garg, Akash Danavar, Chao Li, Naijun Chen, Amit Garg
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引用次数: 0

摘要

化脓性扁平湿疹(HS)是一种慢性炎症性毛囊性皮肤病,会带来严重的社会心理和经济负担,降低生活质量和工作效率。由于病因不明,准确诊断化脓性苔藓炎具有挑战性,这可能导致诊断不足或误诊,从而增加患者和医疗系统的负担。我们将机器学习(ML)应用于医疗和药房报销数据库,使用 2000 年至 2018 年的数据,开发了一种新型模型,以更好地了解医疗系统层面的 HS 诊断不足情况。主要结果表明,使用报销单数据可以构建预测 HS 诊断的高性能模型,在性能最高的模型中,曲线下面积(AUC)达到 81%-82%。本研究开发的模型结果可用于开发不作为影响模型,以确定 HS 诊断和治疗延迟对医疗系统成本的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncovering the burden of hidradenitis suppurativa misdiagnosis and underdiagnosis: a machine learning approach
Hidradenitis suppurativa (HS) is a chronic inflammatory follicular skin condition that is associated with significant psychosocial and economic burden and a diminished quality of life and work productivity. Accurate diagnosis of HS is challenging due to its unknown etiology, which can lead to underdiagnosis or misdiagnosis that results in increased patient and healthcare system burden. We applied machine learning (ML) to a medical and pharmacy claims database using data from 2000 through 2018 to develop a novel model to better understand HS underdiagnosis on a healthcare system level. The primary results demonstrated that high-performing models for predicting HS diagnosis can be constructed using claims data, with an area under the curve (AUC) of 81%–82% observed among the top-performing models. The results of the models developed in this study could be input into the development of an impact of inaction model that determines the cost implications of HS diagnosis and treatment delay to the healthcare system.
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