使用较小拷贝数变异调用阈值对染色体微阵列数据进行重新分析,确定四例ARID1B、EHMT1和FOXP1基因杂合子多外显子缺失病例

IF 0.9 4区 医学 Q4 GENETICS & HEREDITY Molecular Syndromology Pub Date : 2023-10-01 Epub Date: 2023-05-23 DOI:10.1159/000530252
Noriko Kubota, Ryojun Takeda, Jun Kobayashi, Eiko Hidaka, Eriko Nishi, Kyoko Takano, Keiko Wakui
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引用次数: 0

摘要

引言:染色体微阵列(CMA)是一种在临床基因检测中检测拷贝数变异(CNVs)的高度准确和成熟的方法。CNVs是智力残疾、发育迟缓和多发性先天性畸形等疾病的重要病因。最近开发的分析方法有助于识别较小的CNV。因此,使用较小的CNV调用阈值重新分析CMA数据可能会产生有用的信息。然而,这种方法由各机构自行决定。方法:我们使用较小的CNV呼叫阈值重新分析131名患者的CMA数据:50 kb 50探针用于增益,25 kb 25探针用于丢失。我们根据最新的可用信息对重新分析的CNV进行了解释。在再分析中,我们使用临床基因组资源剂量敏感性基因列表作为索引对数据进行过滤,以快速有效地检查病变基因。结果:与之前的分析相比,拷贝数丢失的次数大约增加了20倍,拷贝数增加的次数大约减少了3倍。我们在四名参与者中检测到了新的可能致病的CNVs:ARID1B内236.5kb的缺失,包括EHMT1在内的50.6kb的缺失,包含EHMT1的46.5kb的缺失和FOXP1基因内89.1kb的缺失。结论:本研究中使用的方法简单有效,可以使用较小的CNV调用阈值进行CMA数据再分析。因此,这种方法对于正在进行的分析和重复的分析都是有效的。这项研究可能会促进临床实验室对再分析方法的进一步讨论。
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Reanalysis of Chromosomal Microarray Data Using a Smaller Copy Number Variant Call Threshold Identifies Four Cases with Heterozygous Multiexon Deletions of ARID1B, EHMT1, and FOXP1 Genes.

Introduction: Chromosomal microarray (CMA) is a highly accurate and established method for detecting copy number variations (CNVs) in clinical genetic testing. CNVs are important etiological factors for disorders such as intellectual disability, developmental delay, and multiple congenital anomalies. Recently developed analytical methods have facilitated the identification of smaller CNVs. Therefore, reanalyzing CMA data using a smaller CNV calling threshold may yield useful information. However, this method was left to the discretion of each institution.

Methods: We reanalyzed the CMA data of 131 patients using a smaller CNV call threshold: 50 kb 50 probes for gain and 25 kb 25 probes for loss. We interpreted the reanalyzed CNVs based on the most recently available information. In the reanalysis, we filtered the data using the Clinical Genome Resource dosage sensitivity gene list as an index to quickly and efficiently check morbid genes.

Results: The number of copy number loss was approximately 20 times greater, and copy number gain was approximately three times greater compared to those in the previous analysis. We detected new likely pathogenic CNVs in four participants: a 236.5 kb loss within ARID1B, a 50.6 kb loss including EHMT1, a 46.5 kb loss including EHMT1, and an 89.1 kb loss within the FOXP1 gene.

Conclusion: The method employed in this study is simple and effective for CMA data reanalysis using a smaller CNV call threshold. Thus, this method is efficient for both ongoing and repeated analyses. This study may stimulate further discussion of reanalysis methodology in clinical laboratories.

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来源期刊
Molecular Syndromology
Molecular Syndromology Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
1.70
自引率
9.10%
发文量
67
期刊介绍: ''Molecular Syndromology'' publishes high-quality research articles, short reports and reviews on common and rare genetic syndromes, aiming to increase clinical understanding through molecular insights. Topics of particular interest are the molecular basis of genetic syndromes, genotype-phenotype correlation, natural history, strategies in disease management and novel therapeutic approaches based on molecular findings. Research on model systems is also welcome, especially when it is obviously relevant to human genetics. With high-quality reviews on current topics the journal aims to facilitate translation of research findings to a clinical setting while also stimulating further research on clinically relevant questions. The journal targets not only medical geneticists and basic biomedical researchers, but also clinicians dealing with genetic syndromes. With four Associate Editors from three continents and a broad international Editorial Board the journal welcomes submissions covering the latest research from around the world.
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