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斯里兰卡遗传性结直肠癌患者队列中通过阵列比较基因组杂交捕获的拷贝数变异:斯里兰卡人群遗传性结直肠癌的首次 CNV 分析研究。

Copy Number Variants Captured by the Array Comparative Genomic Hybridization in a Cohort of Patients Affected with Hereditary Colorectal Cancer in Sri Lanka: The First CNV Analysis Study of the Hereditary Colorectal Cancer in the Sri Lankan Population.

机构信息

Department of Medical Laboratory Science, Faculty of Allied Health Sciences, University of Ruhuna, Sri Lanka.

Human Genetics Unit, Faculty of Medicine, University of Colombo, Sri Lanka.

出版信息

Asian Pac J Cancer Prev. 2021 Jun 1;22(6):1957-1966. doi: 10.31557/APJCP.2021.22.6.1957.

Abstract

INTRODUCTION

Hereditary non-polyposis colorectal cancer (HNPCC), is an autosomal dominant disorder characterized by the development of multiple cancer types. Molecular diagnosis of HNPCC requires the precise identification of pathogenic germline variants in DNA mismatch repair (MMR) genes. Next Generation Sequencing (NGS) is now the gold standard test in practice, to identify these variants. However, large genomic rearrangements (LGR) in cancer predisposing genes (CPGs) are missed by NGS. This may lead to underestimation of the frequency of the variants, misleading the genetic diagnosis and delaying intervention in high risk individuals. Hence this study was aimed at identifying the presence of large genomic alterations that could explain the missing heritable risk of colon cancer in affected patients with family history strongly suggestive of hereditary colorectal cancer in Sri Lanka.

METHODS

A cohort of six patients affected with hereditary colorectal cancer who tested negative for pathogenic variants in next generation sequencing studies was investigated using Sure Print G3 Human CGH 4x180K microarray platform. Agilent Genomic-Workbench-v7.0.4.0 software was used to identify the Copy Number Variants (CNV). Four healthy individuals (>55years) were used as controls.  Annotations of the CNV regions which were observed were done using the database of Genomic Variants.

RESULTS

We identified 150 CNVs including regions of both genomic gains and losses in the patient cohort.  There was no difference in the average number or the average genomic burden of CNVs identified in the patients versus the controls.  CNVs were residing on the positions of 1q21.2, 2q37.3, 2p11.2-p11.1, 5q13.2, 6p12.3, 7q31.33, 7p14.1, 14q32.33, 15q11.1-11.2, 16p11.2, 22q11.22, 22q13.1 that were assessed by the array platform used in the study. CNVs in any of the well-known common CPG s or CNVs that reside on or in close proximity to genes corresponding to MMR pathway were not identified. We found several distinct pathways that have previously been identified as having a direct association with the progression of HNPCC.

CONCLUSION

This study shows that CNVs are likely contributors to the colorectal cancer predisposition in a small but significant proportion of patients affected with hereditary colorectal cancer in this cohort. Further studies have to perform to get a better understanding on the contribution of CNVs to the cancer predisposition in this cohort of patients in the Sri Lankan population.

摘要

简介

遗传性非息肉病性结直肠癌(HNPCC)是一种常染色体显性疾病,其特征是多种癌症类型的发展。HNPCC 的分子诊断需要在 DNA 错配修复(MMR)基因中精确识别致病性种系变异。下一代测序(NGS)现在是实践中的金标准测试,用于识别这些变体。然而,癌症易感基因(CPGs)中的大片段重排(LGR)会被 NGS 遗漏。这可能导致对变体频率的低估,从而导致遗传诊断错误,并延迟对高风险个体的干预。因此,本研究旨在确定是否存在大片段改变,这些改变可能会导致在斯里兰卡具有强烈遗传性结直肠癌家族史的受影响患者中,结直肠癌的可遗传风险缺失。

方法

对 6 名遗传性结直肠癌患者进行研究,这些患者在下一代测序研究中未检测到致病性变异,并使用 Sure Print G3 Human CGH 4x180K 微阵列平台进行检测。使用 Agilent Genomic-Workbench-v7.0.4.0 软件来识别拷贝数变异(CNV)。选择 4 名(年龄>55 岁)健康个体作为对照。使用基因组变异数据库对观察到的 CNV 区域进行注释。

结果

我们在患者队列中鉴定出 150 个 CNV,包括基因组增益和丢失区域。与对照组相比,患者中鉴定出的 CNV 的平均数量或平均基因组负担没有差异。CNVs 位于 1q21.2、2q37.3、2p11.2-p11.1、5q13.2、6p12.3、7q31.33、7p14.1、14q32.33、15q11.1-11.2、16p11.2、22q11.22、22q13.1 位置,这些位置由研究中使用的阵列平台评估。未发现已知常见 CPG 中的 CNV 或位于或紧邻与 MMR 途径对应的基因的 CNV。我们发现了一些先前已被确定与 HNPCC 进展有直接关联的不同途径。

结论

本研究表明,CNV 可能是导致该队列中部分遗传性结直肠癌患者结直肠癌易感性的重要因素。需要进一步研究以更好地了解 CNV 对该队列中斯里兰卡人群患者癌症易感性的贡献。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df9e/8418865/b071bd4da673/APJCP-22-1957-g001.jpg

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