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电子健康记录中遗传性癫痫的医疗保健利用情况及临床特征

Healthcare utilization and clinical characteristics of genetic epilepsy in electronic health records.

作者信息

Boßelmann Christian M, Ivaniuk Alina, St John Mark, Taylor Sara C, Krishnaswamy Gokul, Milinovich Alex, Leu Costin, Gupta Ajay, Pestana-Knight Elia M, Najm Imad, Lal Dennis

机构信息

Genomic Medicine Institute, Lerner Research Institute, Cleveland Clinic, Cleveland, OH 44195, USA.

Epilepsy Center, Neurological Institute, Cleveland Clinic, Cleveland, OH 44195, USA.

出版信息

Brain Commun. 2024 Mar 14;6(2):fcae090. doi: 10.1093/braincomms/fcae090. eCollection 2024.

Abstract

Understanding the clinical characteristics and medical treatment of individuals affected by genetic epilepsies is instrumental in guiding selection for genetic testing, defining the phenotype range of these rare disorders, optimizing patient care pathways and pinpointing unaddressed medical need by quantifying healthcare resource utilization. To date, a matched longitudinal cohort study encompassing the entire spectrum of clinical characteristics and medical treatment from childhood through adolescence has not been performed. We identified individuals with genetic and non-genetic epilepsies and onset at ages 0-5 years by linkage across the Cleveland Clinic Health System. We used natural language processing to extract medical terms and procedures from longitudinal electronic health records and tested for cross-sectional and temporal associations with genetic epilepsy. We implemented a two-stage design: in the discovery cohort, individuals were stratified as being 'likely genetic' or 'non-genetic' by a natural language processing algorithm, and controls did not receive genetic testing. The validation cohort consisted of cases with genetic epilepsy confirmed by manual chart review and an independent set of controls who received negative genetic testing. The discovery and validation cohorts consisted of 503 and 344 individuals with genetic epilepsy and matched controls, respectively. The median age at the first encounter was 0.1 years and 7.9 years at the last encounter, and the mean duration of follow-up was 8.2 years. We extracted 188,295 Unified Medical Language System annotations for statistical analysis across 9659 encounters. Individuals with genetic epilepsy received an earlier epilepsy diagnosis and had more frequent and complex encounters with the healthcare system. Notably, the highest enrichment of encounters compared with the non-genetic groups was found during the transition from paediatric to adult care. Our computational approach could validate established comorbidities of genetic epilepsies, such as behavioural abnormality and intellectual disability. We also revealed novel associations for genitourinary abnormalities (odds ratio 1.91, 95% confidence interval: 1.66-2.20, = 6.16 × 10) linked to a spectrum of underrecognized epilepsy-associated genetic disorders. This case-control study leveraged real-world data to identify novel features associated with the likelihood of a genetic aetiology and quantified the healthcare utilization of genetic epilepsies compared with matched controls. Our results strongly recommend early genetic testing to stratify individuals into specialized care paths, thus improving the clinical management of people with genetic epilepsies.

摘要

了解受遗传性癫痫影响个体的临床特征和医学治疗方法,有助于指导基因检测的选择、界定这些罕见疾病的表型范围、优化患者护理路径,并通过量化医疗资源利用情况来确定未得到满足的医疗需求。迄今为止,尚未开展一项涵盖从儿童期到青春期整个临床特征和医学治疗范围的匹配纵向队列研究。我们通过克利夫兰诊所医疗系统的联动,识别出0至5岁起病的遗传性和非遗传性癫痫个体。我们使用自然语言处理技术从纵向电子健康记录中提取医学术语和程序,并测试与遗传性癫痫的横断面和时间关联。我们采用了两阶段设计:在发现队列中,通过自然语言处理算法将个体分为“可能是遗传性的”或“非遗传性的”,对照组不接受基因检测。验证队列由经人工病历审查确诊为遗传性癫痫的病例和一组接受阴性基因检测的独立对照组组成。发现队列和验证队列分别由503例和344例遗传性癫痫个体及匹配的对照组组成。首次就诊的中位年龄为0.1岁,末次就诊的中位年龄为7.9岁,平均随访时间为8.2年。我们提取了188,295条统一医学语言系统注释,用于对9659次就诊进行统计分析。遗传性癫痫个体的癫痫诊断更早,与医疗系统的接触更频繁、更复杂。值得注意的是,与非遗传组相比,在从儿科护理向成人护理过渡期间,就诊次数的富集程度最高。我们的计算方法可以验证遗传性癫痫已确定的合并症,如行为异常和智力残疾。我们还揭示了与一系列未被充分认识的癫痫相关遗传疾病相关的泌尿生殖系统异常的新关联(优势比1.91,95%置信区间:1.66 - 2.20, = 6.16 × 10)。这项病例对照研究利用真实世界数据,识别出与遗传病因可能性相关的新特征,并与匹配的对照组相比,量化了遗传性癫痫的医疗利用情况。我们的结果强烈建议进行早期基因检测,以便将个体分层纳入专门的护理路径,从而改善遗传性癫痫患者的临床管理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b6ec/10959483/aaad10c96719/fcae090_ga.jpg

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