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宫颈癌发生和进展的系统评估揭示了用于基于深度学习的早期诊断的基因面板,并提出了新的诊断和预后生物标志物。

Systematic assessment of cervical cancer initiation and progression uncovers genetic panels for deep learning-based early diagnosis and proposes novel diagnostic and prognostic biomarkers.

作者信息

Long Nguyen Phuoc, Jung Kyung Hee, Yoon Sang Jun, Anh Nguyen Hoang, Nghi Tran Diem, Kang Yun Pyo, Yan Hong Hua, Min Jung Eun, Hong Soon-Sun, Kwon Sung Won

机构信息

College of Pharmacy, Seoul National University, Seoul 08826, Korea.

Department of Drug Development, College of Medicine, Inha University, Incheon 22212, Korea.

出版信息

Oncotarget. 2017 Nov 25;8(65):109436-109456. doi: 10.18632/oncotarget.22689. eCollection 2017 Dec 12.

Abstract

Although many outstanding achievements in the management of cervical cancer (CxCa) have obtained, it still imposes a major burden which has prompted scientists to discover and validate new CxCa biomarkers to improve the diagnostic and prognostic assessment of CxCa. In this study, eight different gene expression data sets containing 202 cancer, 115 cervical intraepithelial neoplasia (CIN), and 105 normal samples were utilized for an integrative systems biology assessment in a multi-stage carcinogenesis manner. Deep learning-based diagnostic models were established based on the genetic panels of intrinsic genes of cervical carcinogenesis as well as on the unbiased variable selection approach. Survival analysis was also conducted to explore the potential biomarker candidates for prognostic assessment. Our results showed that cell cycle, RNA transport, mRNA surveillance, and one carbon pool by folate were the key regulatory mechanisms involved in the initiation, progression, and metastasis of CxCa. Various genetic panels combined with machine learning algorithms successfully differentiated CxCa from CIN and normalcy in cross-study normalized data sets. In particular, the 168-gene deep learning model for the differentiation of cancer from normalcy achieved an externally validated accuracy of 97.96% (99.01% sensitivity and 95.65% specificity). Survival analysis revealed that ZNF281 and EPHB6 were the two most promising prognostic genetic markers for CxCa among others. Our findings open new opportunities to enhance current understanding of the characteristics of CxCa pathobiology. In addition, the combination of transcriptomics-based signatures and deep learning classification may become an important approach to improve CxCa diagnosis and management in clinical practice.

摘要

尽管在宫颈癌(CxCa)管理方面已取得许多杰出成就,但它仍造成重大负担,这促使科学家发现并验证新的CxCa生物标志物,以改善CxCa的诊断和预后评估。在本研究中,八个不同的基因表达数据集,包含202个癌症样本、115个宫颈上皮内瘤变(CIN)样本和105个正常样本,以多阶段致癌方式用于综合系统生物学评估。基于宫颈癌发生内在基因的基因面板以及无偏变量选择方法,建立了基于深度学习的诊断模型。还进行了生存分析,以探索用于预后评估的潜在生物标志物候选物。我们的结果表明,细胞周期、RNA转运、mRNA监测和叶酸一碳池是参与CxCa起始、进展和转移的关键调控机制。各种基因面板与机器学习算法相结合,在跨研究标准化数据集中成功区分了CxCa与CIN及正常样本。特别是,用于区分癌症与正常样本的168基因深度学习模型在外部验证中达到了97.96%的准确率(敏感性为99.01%,特异性为95.65%)。生存分析显示,ZNF281和EPHB6是CxCa中最有前景的两个预后遗传标志物。我们的发现为加深当前对CxCa病理生物学特征的理解带来了新机遇。此外,基于转录组学的特征与深度学习分类相结合,可能成为改善临床实践中CxCa诊断和管理的重要方法。

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