Suppr超能文献

胆固醇与莱姆病的风险、严重程度及机器学习诊断有关。

Cholesterol Contributes to Risk, Severity, and Machine Learning-Driven Diagnosis of Lyme Disease.

机构信息

Charles Bronfman Institute for Personalized Medicine, Icahn School of Medicine at Mount Sinai, New York, New York, USA.

Medical Scientist Training Program, Icahn School of Medicine at Mount Sinai, New York, New York, USA.

出版信息

Clin Infect Dis. 2023 Sep 18;77(6):839-847. doi: 10.1093/cid/ciad307.

Abstract

BACKGROUND

Lyme disease is the most prevalent vector-borne disease in the US, yet its host factors are poorly understood and diagnostic tests are limited. We evaluated patients in a large health system to uncover cholesterol's role in the susceptibility, severity, and machine learning-based diagnosis of Lyme disease.

METHODS

A longitudinal health system cohort comprised 1 019 175 individuals with electronic health record data and 50 329 with linked genetic data. Associations of blood cholesterol level, cholesterol genetic scores comprising common genetic variants, and burden of rare loss-of-function (LoF) variants in cholesterol metabolism genes with Lyme disease were investigated. A portable machine learning model was constructed and tested to predict Lyme disease using routine lipid and clinical measurements.

RESULTS

There were 3832 cases of Lyme disease. Increasing cholesterol was associated with greater risk of Lyme disease and hypercholesterolemia was more prevalent in Lyme disease cases than in controls. Cholesterol genetic scores and rare LoF variants in CD36 and LDLR were associated with Lyme disease risk. Serological profiling of cases revealed parallel trajectories of rising cholesterol and immunoglobulin levels over the disease course, including marked increases in individuals with LoF variants and high cholesterol genetic scores. The machine learning model predicted Lyme disease solely using routine lipid panel, blood count, and metabolic measurements.

CONCLUSIONS

These results demonstrate the value of large-scale genetic and clinical data to reveal host factors underlying infectious disease biology, risk, and prognosis and the potential for their clinical translation to machine learning diagnostics that do not need specialized assays.

摘要

背景

莱姆病是美国最常见的虫媒传染病,但宿主因素知之甚少,诊断检测也很有限。我们在一个大型医疗系统中评估了患者,以揭示胆固醇在莱姆病易感性、严重程度和基于机器学习的诊断中的作用。

方法

一个由 1019175 名个体的电子健康记录数据和 50329 名具有关联遗传数据的个体组成的纵向医疗系统队列。研究了血液胆固醇水平、包含常见遗传变异的胆固醇遗传评分,以及胆固醇代谢基因中罕见的功能丧失(LoF)变异负担与莱姆病的相关性。构建并测试了一个便携式机器学习模型,使用常规血脂和临床测量来预测莱姆病。

结果

共发现 3832 例莱姆病病例。胆固醇水平升高与莱姆病风险增加相关,莱姆病病例中高胆固醇血症比对照组更为常见。胆固醇遗传评分和 CD36 和 LDLR 中的罕见 LoF 变异与莱姆病风险相关。对病例的血清学分析显示,胆固醇和免疫球蛋白水平在疾病过程中呈平行上升轨迹,包括具有 LoF 变异和高胆固醇遗传评分的个体的显著增加。机器学习模型仅使用常规血脂谱、血常规和代谢测量即可预测莱姆病。

结论

这些结果表明,大规模遗传和临床数据可用于揭示传染病生物学、风险和预后的宿主因素,以及将其转化为无需特殊检测的机器学习诊断的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e8a/10506776/507a2794a996/ciad307_ga1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验