Biomarker Identification through Multiomics Data Analysis of Prostate Cancer Prognostication Using a Deep Learning Model and Similarity Network Fusion

被引:36
|
作者
Wang, Tzu-Hao [1 ,2 ]
Lee, Cheng-Yang [1 ,3 ]
Lee, Tzong-Yi [4 ,5 ]
Huang, Hsien-Da [4 ,5 ]
Hsu, Justin Bo-Kai [1 ,6 ,7 ,8 ]
Chang, Tzu-Hao [1 ,8 ]
机构
[1] Taipei Med Univ, Grad Inst Biomed Informat, Coll Med Sci & Technol, Taipei 110, Taiwan
[2] Taipei Med Univ, Coll Med, Sch Med, Taipei 110, Taiwan
[3] Taipei Med Univ, Off Informat Technol, Taipei 110, Taiwan
[4] Chinese Univ Hong Kong, Warshel Inst Computat Biol, Shenzhen 518172, Peoples R China
[5] Chinese Univ Hong Kong, Sch Life & Hlth Sci, Shenzhen 518172, Peoples R China
[6] Taipei Med Univ Hosp, Dept Med Res, Taipei 110, Taiwan
[7] Taipei Med Univ Hosp, Translat Imaging Res Ctr, Taipei 110, Taiwan
[8] Taipei Med Univ Hosp, Clin Big Data Res Ctr, Taipei 110, Taiwan
关键词
prostate cancer; multiomics; autoencoder; deep learning; similarity network fusion; machine learning; prognosis prediction; recurrence prediction; GROWTH-FACTOR RECEPTOR; ANDROGEN RECEPTOR; EXPRESSION; METASTASIS; PROFILES; BINDING; TARGET;
D O I
10.3390/cancers13112528
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Around 30% of men treated with adjuvant therapy experience recurrences of prostate cancer (PC). Current monitoring of the relapse of PC requires regular postoperative prostate-specific antigen (PSA) value follow-up. Our study aims to identify potential multiomics biomarkers using modern computational analytic methods, deep learning (DL), similarity network fusion (SNF), and the Cancer Genome Atlas (TCGA) prostate adenocarcinoma (PRAD) dataset. Six significantly intersected omics biomarkers from the two models, TELO2, ZMYND19, miR-143, miR-378a, cg00687383 (MED4), and cg02318866 (JMJD6; METTL23) were collected for multiomics panel construction. The difference between the Kaplan-Meier curves of high and low recurrence-risk groups generated from the multiomics panels and clinical information achieve p-value = 2.97 x 10(-15) and C-index = 0.713, and the prediction performance of five-year recurrence achieves AUC = 0.789. The results show that the multiomics panel provided valuable biomarkers for the early detection of high-risk recurrent patients, and integrating multiomics data gave us the power to detect the complex mechanisms of cancer among the interactions of different genetic and epigenetic factors. This study is to identify potential multiomics biomarkers for the early detection of the prognostic recurrence of PC patients. A total of 494 prostate adenocarcinoma (PRAD) patients (60-recurrent included) from the Cancer Genome Atlas (TCGA) portal were analyzed using the autoencoder model and similarity network fusion. Then, multiomics panels were constructed according to the intersected omics biomarkers identified from the two models. Six intersected omics biomarkers, TELO2, ZMYND19, miR-143, miR-378a, cg00687383 (MED4), and cg02318866 (JMJD6; METTL23), were collected for multiomics panel construction. The difference between the Kaplan-Meier curves of high and low recurrence-risk groups generated from the multiomics panel achieved p-value = 5.33 x 10(-9), which is better than the former study (p-value = 5 x 10(-7)). Additionally, when evaluating the selected multiomics biomarkers with clinical information (Gleason score, age, and cancer stage), a high-performance prediction model was generated with C-index = 0.713, p-value = 2.97 x 10(-15), and AUC = 0.789. The risk score generated from the selected multiomics biomarkers worked as an effective indicator for the prediction of PRAD recurrence. This study helps us to understand the etiology and pathways of PRAD and further benefits both patients and physicians with potential prognostic biomarkers when making clinical decisions after surgical treatment.
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页数:16
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