Department of Pathology and Cell Biology, Columbia University Medical Center, New York City, New York, USA.
Department of Pathology and Cell Biology, Columbia University Medical Center, New York City, New York, USA
J Clin Pathol. 2020 Feb;73(2):83-89. doi: 10.1136/jclinpath-2019-206136. Epub 2019 Sep 17.
Microsatellite instability (MSI), a hallmark of DNA mismatch repair deficiency, is a key molecular biomarker with multiple clinical implications including the selection of patients for immunotherapy, identifying patients who may have Lynch syndrome and predicting prognosis in patients with colorectal tumours. Next-generation sequencing (NGS) provides the opportunity to interrogate large numbers of microsatellite loci concurrently with genomic variants. We sought to develop a method to detect MSI that would not require paired normal tissue and would leverage the sequence data obtained from a broad range of tumours tested using our 467-gene NGS Columbia Combined Cancer Panel (CCCP).
Altered mononucleotide and dinucleotide microsatellite loci across the CCCP region of interest were evaluated in clinical samples encompassing a diverse range of tumour types. The number of altered loci was used to develop a decision tree classifier model trained on the retrospectively collected cohort of 107 clinical cases sequenced by the CCCP assay.
The classifier was able to correctly classify all cases and was then used to analyse a test set of clinical cases (n=112) and was able to correctly predict their MSI status with 100% sensitivity and specificity. Analysis of recurrently altered loci identified alterations in genes involved in DNA repair, signalling and transcriptional regulation pathways, many of which have been implicated in MSI tumours.
This study highlights the utility of this approach, which should be applicable to laboratories performing similar testing.
微卫星不稳定性(MSI)是 DNA 错配修复缺陷的标志,是一种关键的分子生物标志物,具有多种临床意义,包括免疫治疗患者的选择、识别可能患有林奇综合征的患者以及预测结直肠肿瘤患者的预后。下一代测序(NGS)提供了同时检测大量微卫星位点和基因组变异的机会。我们试图开发一种不需要配对正常组织的 MSI 检测方法,并利用从使用我们的 467 基因 Columbia Combined Cancer Panel(CCCP)测试的广泛肿瘤类型中获得的序列数据。
评估了 CCCP 感兴趣区域内的改变单核苷酸和二核苷酸微卫星位点在涵盖各种肿瘤类型的临床样本中的情况。改变的位点数量用于开发基于 CCCP 检测 107 例临床病例回顾性收集队列的决策树分类器模型进行训练。
该分类器能够正确分类所有病例,然后用于分析一组临床病例(n=112)的测试集,并能够以 100%的灵敏度和特异性正确预测其 MSI 状态。对反复改变的位点进行分析,确定了涉及 DNA 修复、信号转导和转录调控途径的基因的改变,其中许多基因与 MSI 肿瘤有关。
本研究强调了这种方法的实用性,该方法应该适用于进行类似检测的实验室。