Juan F. De la Hoz, Alejandro Arias, Susan K. Service, Mauricio Castaño, Ana M. Díaz-Zuluaga, Janet Song, Cristian Gallego, Sergio Ruiz-Sánchez, Javier I. Escobar, Alex A. T. Bui, Carrie E. Bearden, Victor Reus, Carlos López-Jaramillo, Nelson B. Freimer, Loes M. Olde Loohuis
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引用次数: 0
Abstract
Background
Electronic health records (EHRs), increasingly available in low- and middle-income countries (LMICs), provide an opportunity to study transdiagnostic features of serious mental illness (SMI) and its trajectories.
Aims
Characterise transdiagnostic features and diagnostic trajectories of SMI using an EHR database in an LMIC institution.
Method
We conducted a retrospective cohort study using EHRs from 2005–2022 at Clínica San Juan de Dios Manizales, a specialised mental health facility in Colombia, including 22 447 patients with schizophrenia (SCZ), bipolar disorder (BPD) or severe/recurrent major depressive disorder (MDD). Using diagnostic codes and clinical notes, we analysed the frequency of suicidality and psychosis across diagnoses, patterns of diagnostic switching and the accumulation of comorbidities. Mixed-effect logistic regression was used to identify factors influencing diagnostic stability.
Results
High frequencies of suicidality and psychosis were observed across diagnoses of SCZ, BPD and MDD. Most patients (64%) received multiple diagnoses over time, including switches between primary SMI diagnoses (19%), diagnostic comorbidities (30%) or both (15%). Predictors of diagnostic switching included mentions of delusions (odds ratio = 1.47, 95% CI 1.34–1.61), prior diagnostic switching (odds ratio = 4.01, 95% CI 3.7–4.34) and time in treatment, independent of age (log of visit number; odds ratio = 0.57, 95% CI 0.54–0.61). Over 80% of patients reached diagnostic stability within 6 years of their first record.
Conclusions
Integrating structured and unstructured EHR data reveals transdiagnostic patterns in SMI and predictors of disease trajectories, highlighting the potential of EHR-based tools for research and precision psychiatry in LMICs.
背景电子健康记录(EHRs)在低收入和中等收入国家(LMICs)日益普及,为研究严重精神疾病(SMI)的跨诊断特征及其发展轨迹提供了机会。目的利用LMIC机构的EHR数据库,描述重度精神分裂症的跨诊断特征和诊断轨迹。方法采用2005-2022年在Clínica哥伦比亚一家专业精神卫生机构进行的电子病历回顾性队列研究,包括22447例精神分裂症(SCZ)、双相情感障碍(BPD)或严重/复发性重度抑郁症(MDD)患者。使用诊断代码和临床记录,我们分析了诊断中自杀和精神病的频率、诊断转换模式和合并症的累积。采用混合效应logistic回归确定影响诊断稳定性的因素。结果SCZ、BPD和MDD患者的自杀和精神病发生率均较高。随着时间的推移,大多数患者(64%)接受了多种诊断,包括在原发性重度精神分裂症诊断(19%)、诊断合并症(30%)或两者之间切换(15%)。诊断转换的预测因子包括提及妄想(优势比= 1.47,95% CI 1.34-1.61)、既往诊断转换(优势比= 4.01,95% CI 3.7-4.34)和治疗时间,与年龄无关(就诊次数日志;优势比= 0.57,95% CI 0.54-0.61)。超过80%的患者在首次记录后的6年内达到诊断稳定性。整合结构化和非结构化电子病历数据揭示了重度精神分裂症的跨诊断模式和疾病轨迹的预测因素,突出了基于电子病历的工具在低收入国家研究和精确精神病学方面的潜力。