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一种深度学习变压器模型预测大型电子健康系统中未诊断罕见病的高发生率。

A deep learning transformer model predicts high rates of undiagnosed rare disease in large electronic health systems.

作者信息

Jordan Daniel M, Vy Ha My T, Do Ron

机构信息

Center for Genomic Data Analytics, Charles Bronfman Institute for Personalized Medicine, Department of Genetics and Genomic Sciences, Icahn School of Medicine at Mount Sinai, New York, NY, USA.

出版信息

medRxiv. 2023 Dec 24:2023.12.21.23300393. doi: 10.1101/2023.12.21.23300393.

Abstract

It is estimated that as many as 1 in 16 people worldwide suffer from rare diseases. Rare disease patients face difficulty finding diagnosis and treatment for their conditions, including long diagnostic odysseys, multiple incorrect diagnoses, and unavailable or prohibitively expensive treatments. As a result, it is likely that large electronic health record (EHR) systems include high numbers of participants suffering from undiagnosed rare disease. While this has been shown in detail for specific diseases, these studies are expensive and time consuming and have only been feasible to perform for a handful of the thousands of known rare diseases. The bulk of these undiagnosed cases are effectively hidden, with no straightforward way to differentiate them from healthy controls. The ability to access them at scale would enormously expand our capacity to study and develop drugs for rare diseases, adding to tools aimed at increasing availability of study cohorts for rare disease. In this study, we train a deep learning transformer algorithm, RarePT (Rare-Phenotype Prediction Transformer), to impute undiagnosed rare disease from EHR diagnosis codes in 436,407 participants in the UK Biobank and validated on an independent cohort from 3,333,560 individuals from the Mount Sinai Health System. We applied our model to 155 rare diagnosis codes with fewer than 250 cases each in the UK Biobank and predicted participants with elevated risk for each diagnosis, with the number of participants predicted to be at risk ranging from 85 to 22,000 for different diagnoses. These risk predictions are significantly associated with increased mortality for 65% of diagnoses, with disease burden expressed as disability-adjusted life years (DALY) for 73% of diagnoses, and with 72% of available disease-specific diagnostic tests. They are also highly enriched for known rare diagnoses in patients not included in the training set, with an odds ratio (OR) of 48.0 in cross-validation cohorts of the UK Biobank and an OR of 30.6 in the independent Mount Sinai Health System cohort. Most importantly, RarePT successfully screens for undiagnosed patients in 32 rare diseases with available diagnostic tests in the UK Biobank. Using the trained model to estimate the prevalence of undiagnosed disease in the UK Biobank for these 32 rare phenotypes, we find that at least 50% of patients remain undiagnosed for 20 of 32 diseases. These estimates provide empirical evidence of a high prevalence of undiagnosed rare disease, as well as demonstrating the enormous potential benefit of using RarePT to screen for undiagnosed rare disease patients in large electronic health systems.

摘要

据估计,全球多达1/16的人患有罕见病。罕见病患者在寻求病情诊断和治疗时面临困难,包括漫长的诊断过程、多次误诊以及无法获得治疗或治疗费用高得令人望而却步。因此,大型电子健康记录(EHR)系统中可能有大量未确诊的罕见病患者。虽然针对特定疾病已详细展示了这一情况,但这些研究成本高且耗时,仅对数千种已知罕见病中的少数几种进行研究才可行。这些未确诊病例大多被有效隐藏,没有直接方法将它们与健康对照区分开来。大规模获取这些病例的能力将极大地扩展我们研究和开发罕见病药物的能力,增加旨在提高罕见病研究队列可及性的工具。在本研究中,我们训练了一种深度学习变压器算法RarePT(罕见表型预测变压器),以根据英国生物银行中436,407名参与者的EHR诊断代码推断未确诊的罕见病,并在西奈山医疗系统3,333,560名个体的独立队列中进行验证。我们将模型应用于英国生物银行中每种病例少于250例的155个罕见诊断代码,并预测每种诊断风险升高的参与者,不同诊断的预测风险参与者数量从85到22,000不等。这些风险预测与65%的诊断死亡率增加、73%的诊断以残疾调整生命年(DALY)表示的疾病负担以及72%的可用疾病特异性诊断测试显著相关。它们在未纳入训练集的患者中也高度富集已知的罕见诊断,在英国生物银行的交叉验证队列中优势比(OR)为48.0,在独立的西奈山医疗系统队列中OR为30.6。最重要的是,RarePT在英国生物银行中对32种有可用诊断测试的罕见病成功筛查出未确诊患者。使用训练模型估计英国生物银行中这32种罕见表型未确诊疾病的患病率,我们发现32种疾病中有20种至少50%的患者仍未被确诊。这些估计为未确诊罕见病的高患病率提供了实证证据,也证明了使用RarePT在大型电子健康系统中筛查未确诊罕见病患者的巨大潜在益处。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/477c/10775679/be640986e4c6/nihpp-2023.12.21.23300393v1-f0001.jpg

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