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整合电子健康记录和多基因风险以识别精神分裂症可能可改变的非遗传共病。

Integrating Electronic Health Records and Polygenic Risk to Identify Genetically Unrelated Comorbidities of Schizophrenia That May Be Modifiable.

作者信息

Vessels Tess, Strayer Nicholas, Lee Hyunjoon, Choi Karmel W, Zhang Siwei, Han Lide, Morley Theodore J, Smoller Jordan W, Xu Yaomin, Ruderfer Douglas M

机构信息

Division of Genetic Medicine, Department of Medicine, Vanderbilt University Medical Center, Nashville, Tennessee.

Center for Digital Genomic Medicine, Department of Medicine, Vanderbilt University Medical Center, Nashville, Tennessee.

出版信息

Biol Psychiatry Glob Open Sci. 2024 Feb 28;4(3):100297. doi: 10.1016/j.bpsgos.2024.100297. eCollection 2024 May.

Abstract

BACKGROUND

Patients with schizophrenia have substantial comorbidity that contributes to reduced life expectancy of 10 to 20 years. Identifying modifiable comorbidities could improve rates of premature mortality. Conditions that frequently co-occur but lack shared genetic risk with schizophrenia are more likely to be products of treatment, behavior, or environmental factors and therefore are enriched for potentially modifiable associations.

METHODS

Phenome-wide comorbidity was calculated from electronic health records of 250,000 patients across 2 independent health care institutions (Vanderbilt University Medical Center and Mass General Brigham); associations with schizophrenia polygenic risk scores were calculated across the same phenotypes in linked biobanks.

RESULTS

Schizophrenia comorbidity was significantly correlated across institutions ( = 0.85), and the 77 identified comorbidities were consistent with prior literature. Overall, comorbidity and polygenic risk score associations were significantly correlated ( = 0.55,  = 1.29 × 10). However, directly testing for the absence of genetic effects identified 36 comorbidities that had significantly equivalent schizophrenia polygenic risk score distributions between cases and controls. This set included phenotypes known to be consequences of antipsychotic medications (e.g., movement disorders) or of the disease such as reduced hygiene (e.g., diseases of the nail), thereby validating the approach. It also highlighted phenotypes with less clear causal relationships and minimal genetic effects such as tobacco use disorder and diabetes.

CONCLUSIONS

This work demonstrates the consistency and robustness of electronic health record-based schizophrenia comorbidities across independent institutions and with the existing literature. It identifies known and novel comorbidities with an absence of shared genetic risk, indicating other causes that may be modifiable and where further study of causal pathways could improve outcomes for patients.

摘要

背景

精神分裂症患者存在大量共病情况,这导致其预期寿命缩短10至20年。识别可改变的共病情况可能会提高过早死亡率。那些经常同时出现但与精神分裂症缺乏共同遗传风险的疾病,更有可能是治疗、行为或环境因素导致的结果,因此富含潜在的可改变关联。

方法

从2个独立医疗机构(范德堡大学医学中心和布莱根妇女医院麻省总医院)的250,000名患者的电子健康记录中计算全表型共病情况;在相关生物样本库中针对相同表型计算与精神分裂症多基因风险评分的关联。

结果

各机构间精神分裂症共病情况显著相关(r = 0.85),所识别出的77种共病情况与先前文献一致。总体而言,共病情况与多基因风险评分关联显著相关(r = 0.55,P = 1.29×10)。然而,直接检测基因效应缺失情况发现,有36种共病在病例组和对照组之间具有显著相同的精神分裂症多基因风险评分分布。这一组包括已知为抗精神病药物所致后果的表型(如运动障碍)或该疾病所致后果的表型(如卫生习惯下降,如指甲疾病),从而验证了该方法。它还突出了因果关系不太明确且基因效应最小的表型,如烟草使用障碍和糖尿病。

结论

这项研究证明了基于电子健康记录的精神分裂症共病情况在独立机构间以及与现有文献的一致性和稳健性。它识别出了已知和新的无共同遗传风险的共病情况,表明可能存在其他可改变的原因,以及进一步研究因果途径可能改善患者预后的方面。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b0a7/11033077/88c8cceef09d/gr1.jpg

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