Translational and Clinical Research Institute, Newcastle University, Newcastle-upon-Tyne, UK.
Department of Clinical Neurosciences, Royal Victoria Infirmary, Newcastle-upon-Tyne, UK.
Eur J Hum Genet. 2021 Nov;29(11):1690-1700. doi: 10.1038/s41431-021-00908-8. Epub 2021 May 24.
While genetic studies of epilepsies can be performed in thousands of individuals, phenotyping remains a manual, non-scalable task. A particular challenge is capturing the evolution of complex phenotypes with age. Here, we present a novel approach, applying phenotypic similarity analysis to a total of 3251 patient-years of longitudinal electronic medical record data from a previously reported cohort of 658 individuals with genetic epilepsies. After mapping clinical data to the Human Phenotype Ontology, we determined the phenotypic similarity of individuals sharing each genetic etiology within each 3-month age interval from birth up to a maximum age of 25 years. 140 of 600 (23%) of all 27 genes and 3-month age intervals with sufficient data for calculation of phenotypic similarity were significantly higher than expect by chance. 11 of 27 genetic etiologies had significant overall phenotypic similarity trajectories. These do not simply reflect strong statistical associations with single phenotypic features but appear to emerge from complex clinical constellations of features that may not be strongly associated individually. As an attempt to reconstruct the cognitive framework of syndrome recognition in clinical practice, longitudinal phenotypic similarity analysis extends the traditional phenotyping approach by utilizing data from electronic medical records at a scale that is far beyond the capabilities of manual phenotyping. Delineation of how the phenotypic homogeneity of genetic epilepsies varies with age could improve the phenotypic classification of these disorders, the accuracy of prognostic counseling, and by providing historical control data, the design and interpretation of precision clinical trials in rare diseases.
虽然可以对癫痫症进行数千例的遗传研究,但表型分析仍然是一项手动的、不可扩展的任务。一个特别的挑战是捕捉随年龄变化的复杂表型。在这里,我们提出了一种新方法,将表型相似性分析应用于从先前报道的 658 名遗传性癫痫患者队列中获得的总共 3251 个患者年的纵向电子病历数据。在将临床数据映射到人类表型本体后,我们确定了在从出生到最大 25 岁的每个 3 个月年龄间隔内共享每种遗传病因的个体的表型相似性。在所有 27 个基因和 3 个月的年龄间隔中,有 140 个(23%)的基因和年龄间隔的表型相似性计算数据足够,其显著高于随机预期。在 27 种遗传病因中有 11 种具有显著的整体表型相似轨迹。这些并不简单地反映与单个表型特征的强烈统计学关联,而是似乎来自特征的复杂临床组合,这些特征单独可能没有强烈关联。作为尝试重建临床实践中综合征识别的认知框架,纵向表型相似性分析通过利用电子病历数据,在远远超出手动表型分析能力的规模上扩展了传统的表型分析方法。阐明遗传癫痫症的表型同质性如何随年龄变化,可能会改善这些疾病的表型分类、预后咨询的准确性,并通过提供历史对照数据,改善罕见疾病的精确临床试验的设计和解释。