Poker Yvonne, von Hardenberg Sandra, Hofmann Winfried, Tang Ming, Baumann Ulrich, Schwerk Nicolaus, Wetzke Martin, Lindenthal Viola, Auber Bernd, Schlegelberger Brigitte, Ott Hagen, von Bismarck Philipp, Viemann Dorothee, Dressler Frank, Klemann Christian, Bergmann Anke Katharina
Department of Human Genetics, Hannover Medical School, Hannover, Germany.
L3S Research Center, Leibniz University Hannover, Hannover, Germany.
Front Genet. 2023 Jan 27;14:1065907. doi: 10.3389/fgene.2023.1065907. eCollection 2023.
Monogenic autoinflammatory diseases (AID) encompass a growing group of inborn errors of the innate immune system causing unprovoked or exaggerated systemic inflammation. Diagnosis of monogenic AID requires an accurate description of the patients' phenotype, and the identification of highly penetrant genetic variants in single genes is pivotal. We performed whole exome sequencing (WES) of 125 pediatric patients with suspected monogenic AID in a routine genetic diagnostic setting. Datasets were analyzed in a step-wise approach to identify the most feasible diagnostic strategy. First, we analyzed a virtual gene panel including 13 genes associated with known AID and, if no genetic diagnosis was established, we then analyzed a virtual panel including 542 genes published by the International Union of Immunological Societies associated including all known inborn error of immunity (IEI). Subsequently, WES data was analyzed without pre-filtering for known AID/IEI genes. Analyzing 13 genes yielded a definite diagnosis in 16.0% ( = 20). The diagnostic yield was increased by analyzing 542 genes to 20.8% ( = 26). Importantly, expanding the analysis to WES data did not increase the diagnostic yield in our cohort, neither in single WES analysis, nor in trio-WES analysis. The study highlights that the cost- and time-saving analysis of virtual gene panels is sufficient to rapidly confirm the differential diagnosis in pediatric patients with AID. WES data or trio-WES data analysis as a first-tier diagnostic analysis in patients with suspected monogenic AID is of limited benefit.
单基因自身炎症性疾病(AID)包含越来越多的先天性免疫系统遗传性疾病,可导致无端或过度的全身性炎症。单基因AID的诊断需要准确描述患者的表型,识别单基因中的高外显率遗传变异至关重要。我们在常规基因诊断环境中对125例疑似单基因AID的儿科患者进行了全外显子测序(WES)。采用逐步分析数据集的方法来确定最可行的诊断策略。首先,我们分析了一个包含13个与已知AID相关基因的虚拟基因panel,如果未确立基因诊断,我们接着分析了一个包含国际免疫学会联盟公布的542个基因的虚拟panel,这些基因包括所有已知的免疫缺陷(IEI)。随后,对WES数据进行分析,且未对已知的AID/IEI基因进行预筛选。分析13个基因时确诊率为16.0%( = 20)。分析542个基因时确诊率提高到20.8%( = 26)。重要的是,在我们的队列中,无论是单WES分析还是三联体WES分析,将分析扩展到WES数据都未提高确诊率。该研究强调,对虚拟基因panel进行省时省力的分析足以快速确诊疑似AID的儿科患者的鉴别诊断。对于疑似单基因AID患者,将WES数据或三联体WES数据分析作为一线诊断分析的益处有限。