评估机器学习工具对未确诊银屑病关节炎患者的早期识别-一项基于人群的回顾性研究

IF 4.7 Q2 IMMUNOLOGY
J. Shapiro , B. Getz , S.B. Cohen , Y. Jenudi , D. Underberger , M. Dreyfuss , T.I. Ber , S. Steinberg-Koch , A. Ben-Tov , Y. Shoenfeld , O. Shovman
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引用次数: 0

摘要

银屑病关节炎(psoriatic arthritis, PsA)是一种免疫介导的慢性炎症性皮肤和关节疾病,约影响0.27%的成年人群和20%的银屑病患者。据估计,高达10%的牛皮癣患者患有未确诊的PsA。早期诊断和治疗可以预防不可逆的关节损伤、残疾和畸形。筛查未确诊PsA患者的问卷需要患者和医生参与。目的评估一种专有的机器学习工具(PredictAI™),该工具用于在首次怀疑患有PsA(参考事件)之前1-4年识别未确诊的PsA患者。方法回顾性分析2008 - 2020年马卡比医疗服务中心的成年人口资料。我们创建了2个队列:普通成年人(GP队列)包括牛皮癣患者和非牛皮癣患者;牛皮癣队列(PsO队列)仅包括牛皮癣患者。每个队列被分为两个不重叠的训练集和测试集。PredictAI模型在参考事件发生至少一年之前的3年数据中进行了训练和评估。使用受试者工作特征(ROC)分析来研究在不同特异性水平下使用梯度增强树构建的模型的性能。结果2096例患者符合PsA诊断标准。PsO队列中未确诊的PsA患者在参考事件发生前1年和4年的特异性分别为90%,敏感性分别为51%和38%,PPV分别为36.1%和29.6%。在GP队列中,该模型的特异性为99%,在相同的时间窗内,该模型的敏感性分别为43%和32%,PPV分别为10.6%和8.1%。结论提出的机器学习工具可以帮助早期识别未确诊的PsA患者,从而促进早期干预并改善患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Evaluation of a machine learning tool for the early identification of patients with undiagnosed psoriatic arthritis – A retrospective population-based study

Evaluation of a machine learning tool for the early identification of patients with undiagnosed psoriatic arthritis – A retrospective population-based study

Evaluation of a machine learning tool for the early identification of patients with undiagnosed psoriatic arthritis – A retrospective population-based study

Evaluation of a machine learning tool for the early identification of patients with undiagnosed psoriatic arthritis – A retrospective population-based study

Background

Psoriatic arthritis (PsA), an immune-mediated chronic inflammatory skin and joint disease, affects approximately 0.27% of the adult population, and 20% of patients with psoriasis. Up to 10% of psoriasis patients are estimated for having undiagnosed PsA. Early diagnosis and treatment can prevent irreversible joint damage, disability and deformity. Questionnaires for screening to identify undiagnosed PsA patients require patient and physician involvement.

Objective

To evaluate a proprietary machine learning tool (PredictAI™) developed for identification of undiagnosed PsA patients 1–4 years prior to the first time that they were suspected of having PsA (reference event).

Methods

This retrospective study analyzed data of the adult population from Maccabi Healthcare Service between 2008 and 2020. We created 2 cohorts: The general adult population (“GP Cohort”) including patients with and without psoriasis and the Psoriasis cohort (“PsO Cohort”) including psoriasis patients only. Each cohort was divided into two non-overlapping train and test sets. The PredictAI™ model was trained and evaluated with 3 years of data predating the reference event by at least one year. Receiver operating characteristic (ROC) analysis was used to investigate the performance of the model, built using gradient boosted trees, at different specificity levels.

Results

Overall, 2096 patients met the criteria for PsA. Undiagnosed PsA patients in the PsO cohort were identified with a specificity of 90% one and four years before the reference event, with a sensitivity of 51% and 38%, and a PPV of 36.1% and 29.6%, respectively. In the GP cohort and with a specificity of 99% and for the same time windows, the model achieved a sensitivity of 43% and 32% and a PPV of 10.6% and 8.1%, respectively.

Conclusions

The presented machine learning tool may aid in the early identification of undiagnosed PsA patients, and thereby promote earlier intervention and improve patient outcomes.

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来源期刊
Journal of Translational Autoimmunity
Journal of Translational Autoimmunity Medicine-Immunology and Allergy
CiteScore
7.80
自引率
2.60%
发文量
33
审稿时长
55 days
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