Patient Phenotyping for Atopic Dermatitis with Transformers and Machine Learning.

Andrew Wang, Rachel Fulton, Sy Hwang, David J Margolis, Danielle L Mowery
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Abstract

Background: Atopic dermatitis (AD) is a chronic skin condition that millions of people around the world live with each day. Performing research studies into identifying the causes and treatment for this disease has great potential to provide benefit for these individuals. However, AD clinical trial recruitment is a non-trivial task due to variance in diagnostic precision and phenotypic definitions leveraged by different clinicians as well as time spent finding, recruiting, and enrolling patients by clinicians to become study subjects. Thus, there is a need for automatic and effective patient phenotyping for cohort recruitment.

Objective: Our study aims to present an approach for identifying patients whose electronic health records suggest that they may have AD.

Methods: We created a vectorized representation of each patient and trained various supervised machine learning methods to classify when a patient has AD. Each patient is represented by a vector of either probabilities or binary values where each value indicates whether they meet a different criteria for AD diagnosis.

Results: The most accurate AD classifier performed with a class-balanced accuracy of 0.8036, a precision of 0.8400, and a recall of 0.7500 when using XGBoost (Extreme Gradient Boosting).

Conclusions: Creating an automated approach for identifying patient cohorts has the potential to accelerate, standardize, and automate the process of patient recruitment for AD studies; therefore, reducing clinician burden and informing knowledge discovery of better treatment options for AD.

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应用变形金刚和机器学习进行特应性皮炎患者表型分析。
背景:特应性皮炎(AD)是一种慢性皮肤病,全世界每天都有数百万人与之共存。对这种疾病的病因和治疗方法进行研究,有很大的潜力为这些人提供益处。然而,AD临床试验招募是一项不平凡的任务,因为不同临床医生在诊断精度和表型定义方面存在差异,临床医生也需要花费时间寻找、招募和招募患者成为研究对象。因此,需要对队列招募进行自动有效的患者表型分析。目的:我们的研究旨在提出一种识别电子健康记录表明他们可能患有AD的患者的方法。方法:我们创建了每个患者的矢量化表示,并训练了各种监督机器学习方法来对患者患有AD进行分类。结果:最准确的AD分类器的分类平衡准确度为0.8036,使用XGBoost(Extreme Gradient Boosting)时,准确度为0.8400,召回率为0.7500。结论:创建一种自动识别患者队列的方法有可能加速、标准化和自动化AD研究的患者招募过程,从而减轻临床医生的负担,并为更好的AD治疗方案的知识发现提供信息。
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