Performance Comparison of Deep Learning Autoencoders for Cancer Subtype Detection Using Multi-Omics Data

被引:49
作者
Franco, Edian F. [1 ,2 ,3 ]
Rana, Pratip [4 ]
Cruz, Aline [5 ]
Calderon, Victor V. [3 ]
Azevedo, Vasco [6 ]
Ramos, Rommel T. J. [3 ]
Ghosh, Preetam [4 ]
机构
[1] Fed Univ Para, Inst Biol Sci, BR-66075110 Belem, PA, Brazil
[2] Inst Innovac Biotecnol & Ind IIBI, Lab Virol & Environm Genom, Santo Domingo 10104, Dominican Rep
[3] Inst Tecnol Santo Domingo INTEC, Santo Domingo 10602, Dominican Rep
[4] Virginia Commonwealth Univ, Dept Comp Sci, Richmond, VA 23284 USA
[5] Fed Univ Para, Programa Posgrad Enfermagem, BR-66075110 Belem, PA, Brazil
[6] Univ Fed Minas Gerais, Inst Biol Sci, BR-31270901 Belo Horizonte, MG, Brazil
关键词
cancer subtype detection; multi-omics data; data integration; autoencoder; survival analysis; IDENTIFICATION; SELECTION; PACKAGE;
D O I
10.3390/cancers13092013
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Simple Summary Here, we compared the performance of four different autoencoders: (a) vanilla, (b) sparse, (c) denoising, and (d) variational for subtype detection on four cancer types: Glioblastoma multiforme, Colon Adenocarcinoma, Kidney renal clear cell carcinoma, and Breast invasive carcinoma. Multiview dataset comprising gene expression, DNA methylation, and miRNA expression from TCGA is fed into an autoencoder to get a compressed nonlinear representation. Then the clustering technique was applied on that compressed representation to reveal the subtype of cancer. Though different autoencoders' performance varies on different datasets, they performed much better than standard data fusion techniques such as PCA, kernel PCA, and sparse PCA. A heterogeneous disease such as cancer is activated through multiple pathways and different perturbations. Depending upon the activated pathway(s), the survival of the patients varies significantly and shows different efficacy to various drugs. Therefore, cancer subtype detection using genomics level data is a significant research problem. Subtype detection is often a complex problem, and in most cases, needs multi-omics data fusion to achieve accurate subtyping. Different data fusion and subtyping approaches have been proposed over the years, such as kernel-based fusion, matrix factorization, and deep learning autoencoders. In this paper, we compared the performance of different deep learning autoencoders for cancer subtype detection. We performed cancer subtype detection on four different cancer types from The Cancer Genome Atlas (TCGA) datasets using four autoencoder implementations. We also predicted the optimal number of subtypes in a cancer type using the silhouette score and found that the detected subtypes exhibit significant differences in survival profiles. Furthermore, we compared the effect of feature selection and similarity measures for subtype detection. For further evaluation, we used the Glioblastoma multiforme (GBM) dataset and identified the differentially expressed genes in each of the subtypes. The results obtained are consistent with other genomic studies and can be corroborated with the involved pathways and biological functions. Thus, it shows that the results from the autoencoders, obtained through the interaction of different datatypes of cancer, can be used for the prediction and characterization of patient subgroups and survival profiles.
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页数:17
相关论文
共 55 条
[1]  
Abadi M, 2016, PROCEEDINGS OF OSDI'16: 12TH USENIX SYMPOSIUM ON OPERATING SYSTEMS DESIGN AND IMPLEMENTATION, P265
[2]  
[Anonymous], 2016, TUTORIAL VARIATIONAL
[3]  
[Anonymous], 2015, ACS SYM SER
[4]   Gene Ontology: tool for the unification of biology [J].
Ashburner, M ;
Ball, CA ;
Blake, JA ;
Botstein, D ;
Butler, H ;
Cherry, JM ;
Davis, AP ;
Dolinski, K ;
Dwight, SS ;
Eppig, JT ;
Harris, MA ;
Hill, DP ;
Issel-Tarver, L ;
Kasarskis, A ;
Lewis, S ;
Matese, JC ;
Richardson, JE ;
Ringwald, M ;
Rubin, GM ;
Sherlock, G .
NATURE GENETICS, 2000, 25 (01) :25-29
[5]  
Bengio Y., 2017, 170510245 ARXIV
[6]  
BLASHFIELD RK, 1991, J CLASSIF, V8, P277
[7]   Deep Learning-Based Multi-Omics Integration Robustly Predicts Survival in Liver Cancer [J].
Chaudharyl, Kumardeep ;
Poirionl, Olivier B. ;
Lu, Liangqun ;
Garmire, Lana X. .
CLINICAL CANCER RESEARCH, 2018, 24 (06) :1248-1259
[8]   Predicting drug response of tumors from integrated genomic profiles by deep neural networks [J].
Chiu, Yu-Chiao ;
Chen, Hung-I Harry ;
Zhang, Tinghe ;
Zhang, Songyao ;
Gorthi, Aparna ;
Wang, Li-Ju ;
Huang, Yufei ;
Chen, Yidong .
BMC MEDICAL GENOMICS, 2019, 12 (Suppl 1)
[9]   Epidemiology and risk factors for kidney cancer [J].
Chow, Wong-Ho ;
Dong, Linda M. ;
Devesa, Susan S. .
NATURE REVIEWS UROLOGY, 2010, 7 (05) :245-257
[10]   A multi-omics data simulator for complex disease studies and its application to evaluate multi-omics data analysis methods for disease classification [J].
Chung, Ren-Hua ;
Kang, Chen-Yu .
GIGASCIENCE, 2019, 8 (05)