| Literature DB >> 31102403 |
Rui Tian1, Zifeng Cui1, Dan He2, Xun Tian3, Qinglei Gao4, Xin Ma5, Jian-Rong Yang6, Jun Wu7, Bhudev C Das8, Konstantin Severinov9, Inga Isabel Hitzeroth10, Priya Ranjan Debata11, Wei Xu1, Haolin Zhong12, Weiwen Fan1, Yili Chen1, Zhuang Jin1, Chen Cao2, Miao Yu1, Weiling Xie1, Zhaoyue Huang1, Yuxian Bao2,13, Hongxian Xie2,13, Shuzhong Yao1, Zheng Hu1,4.
Abstract
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.Entities:
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Year: 2019 PMID: 31102403 DOI: 10.1093/carcin/bgz094
Source DB: PubMed Journal: Carcinogenesis ISSN: 0143-3334 Impact factor: 4.944