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Risk stratification of cervical lesions using capture sequencing and machine learning method based on HPV and human integrated genomic profiles

机译:基于HPV和人的综合基因组谱的捕获测序和机器学习方法风险分层宫颈病变

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From initial human papillomavirus (HPV) infection and precursor stages, the development of cervical cancer takes decades. High-sensitivity HPV DNA testing is currently recommended as primary screening method for cervical cancer, whereas better triage methodologies are encouraged to provide accurate risk management for HPV-positive women. Given that virus-driven genomic variation accumulates during cervical carcinogenesis, we designed a 39 Mb custom capture panel targeting 17 HPV types and 522 mutant genes related to cervical cancer. Using capture-based next-generation sequencing, HPV integration status, somatic mutation and copy number variation were analyzed on 34 paired samples, including 10 cases of HPV infection (HPV+), 10 cases of cervical intraepithelial neoplasia (CIN) grade and 14 cases of CIN2+ (CIN2: n = 1; CIN2-3: n = 3; CIN3: n = 9; squamous cell carcinoma: n = 1). Finally, the machine learning algorithm (Random Forest) was applied to build the risk stratification model for cervical precursor lesions based on CIN2+ enriched biomarkers. Generally, HPV integration events (11 in HPV+, 25 in CIN1 and 56 in CIN2+), non-synonymous mutations (2 in CIN1, 12 in CIN2+) and copy number variations (19.1 in HPV+, 29.4 in CIN1 and 127 in CIN2+) increased from HPV+ to CIN2+. Interestingly, 'common' deletion of mitochondrial chromosome was significantly observed in CIN2+ (P = 0.009). Together, CIN2+ enriched biomarkers, classified as HPV information, mutation, amplification, deletion and mitochondrial change, successfully predicted CIN2+ with average accuracy probability score of 0.814, and amplification and deletion ranked as the most important features. Our custom capture sequencing combined with machine learning method effectively stratified the risk of cervical lesions and provided valuable integrated triage strategies.
机译:从最初的人乳头瘤病毒(HPV)感染和前体阶段,宫颈癌的发展需要数十年。目前建议高灵敏度HPV DNA测试作为宫颈癌的主要筛查方法,而鼓励更好的分类方法为HPV阳性女性提供准确的风险管理。鉴于病毒驱动的基因组变异在宫颈发生过程中积累,我们设计了39 MB定制捕获面板,靶向17种HPV类型和522种与宫颈癌有关的突变基因。基于捕获的下一代测序,在34个配对样品上分析了HPV积分状态,体细胞突变和拷贝数变异,包括10例HPV感染(HPV +),10例宫颈上皮内瘤(CIN)等级和14例CIN2 +(CIN2:n = 1; cin2-3:n = 3; cin3:n = 9;鳞状细胞癌:n = 1)。最后,应用了机器学习算法(随机林)基于CIN2 +富集的生物标志物构建宫颈前体病变的风险分层模型。通常,HPV集成事件(11个HPV +,25在CIN2 +中的56个),非同义突变(CIN1,12中的2个CIN2 +)和拷贝数变异(19.1在HPV +,CIN1和CIN2 +中的127中的19.1)增加从HPV +到CIN2 +。有趣的是,在CIN2 +中,“常见”缺失的线粒体染色体缺失显着观察到(p = 0.009)。 CIN2 +富集的生物标志物,分类为HPV信息,突变,扩增,缺失和线粒体变化,成功预测了CIN2 +,平均精度概率得分为0.814,并作为最重要的特征排名和删除。我们的定制捕获测序与机器学习方法相结合,有效地分层了宫颈病变的风险,并提供了有价值的集成分类策略。

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    《Carcinogenesis》 |2019年第10期|共9页
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  • 正文语种 eng
  • 中图分类 肿瘤学;
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  • 入库时间 2022-08-19 23:21:54

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