Machine-Learning Model Identifies Patients With Alpha-1 Antitrypsin Deficiency Using Claims Records.

IF 2.2 4区 医学 Q3 RESPIRATORY SYSTEM
Rajani Sharma, D Kyle Hogarth, Richard Colbaugh, Kristin Glass, Adel Mezine, Vassia Liakoni, Christopher Rudolf, Iris Himmelhan, Jimmy Hinson, Marie Sanchirico
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引用次数: 0

Abstract

Identifying patients with rare diseases like alpha-1 antitrypsin deficiency (AATD) is challenging. Machine-learning models may be trained to identify patients with rare diseases using large-scale, real-world databases, whereas electronic medical records have low numbers of confirmed cases and have limited use in training such models. We applied a machine-learning model to a large US claims database to identify undiagnosed symptomatic patients with AATD. Using deidentified data from the Komodo US claims database (April 26, 2016-January 31, 2023), a model was trained to identify symptomatic patients with high probability of AATD. Eighty claims records for high-probability candidates identified by the model were independently reviewed and validated by 2 clinical experts. The experts independently indicated that of the 80 high-probability candidate patients, 65 (81%) and 62 (78%) patients, respectively, should be tested for AATD. Feedback from this validation step informed model optimization. The optimized model was applied to claims data to identify symptomatic patients with probable AATD. Eleven and 14 "features" of the claims data were informative in distinguishing patients with AATD from patients with COPD without AATD and from unspecified chronic liver diseases. Moreover, patients with diagnosed AATD and COPD without AATD had unique cadences of similar medical events in their diagnostic journeys. Our work shows that a machine-learning model trained on a large US claims database can accurately identify symptomatic patients with AATD and provides useful insights into the diagnostic journey of patients with AATD.

机器学习模型利用索赔记录识别 Alpha-1 抗胰蛋白酶缺乏症患者。
识别α-1抗胰蛋白酶缺乏症(AATD)等罕见病患者是一项挑战。机器学习模型可以通过大规模的真实数据库进行训练,以识别罕见病患者,而电子病历的确诊病例较少,对训练此类模型的作用有限。我们将机器学习模型应用于美国的大型索赔数据库,以识别未确诊的有症状的 AATD 患者。利用来自 Komodo 美国理赔数据库(2016 年 4 月 26 日至 2023 年 1 月 31 日)的去身份化数据,我们对一个模型进行了训练,以识别极有可能患有 AATD 的无症状患者。该模型识别出的高概率候选者的 80 份理赔记录由 2 位临床专家进行了独立审查和验证。专家们独立指出,在这 80 名高概率候选患者中,分别有 65 名(81%)和 62 名(78%)患者应接受 AATD 检测。这一验证步骤的反馈为模型优化提供了依据。将优化后的模型应用于理赔数据,以确定可能患有 AATD 的无症状患者。理赔数据中的 11 项和 14 项 "特征 "有助于将 AATD 患者与不伴有 AATD 的慢性阻塞性肺病患者以及未指定的慢性肝病患者区分开来。此外,确诊为 AATD 的患者和未确诊为 AATD 的慢性阻塞性肺病患者在其诊断过程中发生类似医疗事件的频率也各不相同。我们的工作表明,在大型美国索赔数据库中训练的机器学习模型可以准确识别有症状的 AATD 患者,并为 AATD 患者的诊断过程提供有用的见解。
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来源期刊
CiteScore
4.40
自引率
0.00%
发文量
38
审稿时长
6-12 weeks
期刊介绍: From pathophysiology and cell biology to pharmacology and psychosocial impact, COPD: Journal Of Chronic Obstructive Pulmonary Disease publishes a wide range of original research, reviews, case studies, and conference proceedings to promote advances in the pathophysiology, diagnosis, management, and control of lung and airway disease and inflammation - providing a unique forum for the discussion, design, and evaluation of more efficient and effective strategies in patient care.
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