印度未确诊疾病项目外显子组测序数据的再分析:提高诊断率和结束诊断奥德赛。

IF 2.9 3区 医学 Q2 GENETICS & HEREDITY
Neha Garg, Pragna Lakshmi, Suzena M Singh, Samarth Kulshreshta, Prajnya Ranganath, Amita Moirangthem, Ashwin Dalal, Aakanksha Gahlot, Ratna Dua Puri
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引用次数: 0

摘要

2021年,尽管在四个参与地点进行了广泛评估,但仍为没有明确诊断的患者启动了印度未确诊疾病方案。在2021年2月至2023年3月期间,共招募了88名患者并进行了深度表型分析。在进行额外的基因组测试之前,实施了统一的数据重新分析方法。最大的队列是38名神经发育障碍(NDD)患者。88例患者中有24例(27.2%)获得了基因诊断,其中包括7例NDD患者。提高诊断率的因素包括:(a)在DAAM2基因中发现了一种新的疾病关联,以及(b)标准分析管道的局限性,特别是SELENOI和KIAA0753基因的同义变体、GLRX5基因的非移码变体、GJC2基因的低覆盖率变体、PCNT和PHKG2基因的大量缺失,以及VPS33B和FBN1的内含子变体。改善的表型导致了3例的诊断,而在之前的生物信息学分析中遗漏的基因组变异在12例中被确定。该研究还促进了变体优先排序的增强生物信息学脚本的发展,以及对新疾病关联的更精细的文献检索。它强调了在进行高级诊断测试之前将数据重新分析纳入临床工作流程的重要性,特别是在医疗费用往往自掏腰包的资源有限的环境中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reanalysis of Exome Sequencing Data in the Indian Undiagnosed Diseases Program: Improving Diagnostic Yield and Ending Diagnostic Odyssey.

In 2021, the Indian Undiagnosed Diseases Program was initiated for patients without a definite diagnosis despite extensive evaluation in four participating sites. Between February 2021 and March 2023, a total of 88 patients were recruited and underwent deep phenotyping. A uniform methodology for data re-analysis was implemented as the first step prior to conducting additional genomic testing. The largest cohort was of 38 patients with neurodevelopmental disorders (NDD). A genetic diagnosis was achieved in 24 of the 88 patients (27.2%), including 7 cases within the NDD cohort. Factors contributing to the increased diagnostic yield included: (a) identification of a novel disease association in DAAM2 gene, and (b) limitations of the standard analysis pipeline, particularly for synonymous variants in SELENOI and KIAA0753 genes, non-frameshift variant in GLRX5 gene, low-coverage variant in GJC2 gene, large deletions in PCNT and PHKG2 genes, and intronic variants in VPS33B and FBN1. Improved phenotyping led to a diagnosis in three cases, while genomic variants missed in the previous bioinformatics analysis were identified in 12 cases. The study also contributed to the development of enhanced bioinformatics scripts for variant prioritization and more refined literature search for novel disease associations. It highlights the importance of incorporating data reanalysis into clinical workflows before pursuing advanced diagnostic tests, particularly in resource-limited settings where healthcare expenses are often borne out of pocket.

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来源期刊
Clinical Genetics
Clinical Genetics 医学-遗传学
CiteScore
6.50
自引率
0.00%
发文量
175
审稿时长
3-8 weeks
期刊介绍: Clinical Genetics links research to the clinic, translating advances in our understanding of the molecular basis of genetic disease for the practising clinical geneticist. The journal publishes high quality research papers, short reports, reviews and mini-reviews that connect medical genetics research with clinical practice. Topics of particular interest are: • Linking genetic variations to disease • Genome rearrangements and disease • Epigenetics and disease • The translation of genotype to phenotype • Genetics of complex disease • Management/intervention of genetic diseases • Novel therapies for genetic diseases • Developmental biology, as it relates to clinical genetics • Social science research on the psychological and behavioural aspects of living with or being at risk of genetic disease
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