A comparative study of machine learning and deep learning algorithms to classify cancer types based on microarray gene expression data

PeerJ Comput Sci. 2020 Apr 13:6:e270. doi: 10.7717/peerj-cs.270. eCollection 2020.

Abstract

Cancer classification is a topic of major interest in medicine since it allows accurate and efficient diagnosis and facilitates a successful outcome in medical treatments. Previous studies have classified human tumors using a large-scale RNA profiling and supervised Machine Learning (ML) algorithms to construct a molecular-based classification of carcinoma cells from breast, bladder, adenocarcinoma, colorectal, gastro esophagus, kidney, liver, lung, ovarian, pancreas, and prostate tumors. These datasets are collectively known as the 11_tumor database, although this database has been used in several works in the ML field, no comparative studies of different algorithms can be found in the literature. On the other hand, advances in both hardware and software technologies have fostered considerable improvements in the precision of solutions that use ML, such as Deep Learning (DL). In this study, we compare the most widely used algorithms in classical ML and DL to classify the tumors described in the 11_tumor database. We obtained tumor identification accuracies between 90.6% (Logistic Regression) and 94.43% (Convolutional Neural Networks) using k-fold cross-validation. Also, we show how a tuning process may or may not significantly improve algorithms' accuracies. Our results demonstrate an efficient and accurate classification method based on gene expression (microarray data) and ML/DL algorithms, which facilitates tumor type prediction in a multi-cancer-type scenario.

Keywords: 11_tumor database; Bioinformatics; Cancer classification; Deep Learning; Machine Learning; Microarray gene expression.

Grants and funding

Simon Orozco-Arias is supported by a Ph.D. grant from Ministerio de Ciencia, Tecnología e Innovación de Colombia (Minciencias), Convocatoria 785/2017 and Universidad Autónoma de Manizales, Manizales, Colombia supported and covered the publication fees under the project 589-089. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.