Published May 11, 2018 | Version v1
Journal article Open

Multiclass classification for skin cancer profiling based on the integration of heterogeneous gene expression series

Description

Most of the research studies developed applying microarray technology to the characterization of different pathological states of any disease may fail in reaching statistically significant results. This is largely due to the small repertoire of analysed samples, and to the limitation in the number of states or pathologies usually addressed. Moreover, the influence of potential deviations on the gene expression quantification is usually disregarded. In spite of the continuous changes in omic sciences, reflected for instance in the emergence of new Next-Generation Sequencing-related technologies, the existing availability of a vast amount of gene expression microarray datasets should be properly exploited. Therefore, this work proposes a novel methodological approach involving the integration of several heterogeneous skin cancer series, and a later multiclass classifier design. This approach is thus a way to provide the clinicians with an intelligent diagnosis support tool based on the use of a robust set of selected biomarkers, which simultaneously distinguishes among different cancer-related skin states. To achieve this, a multi-platform combination of microarray datasets from Affymetrix and Illumina manufacturers was carried out. This integration is expected to strengthen the statistical robustness of the study as well as the finding of highly-reliable skin cancer biomarkers. Specifically, the designed operation pipeline has allowed the identification of a small subset of 17 differentially expressed genes (DEGs) from which to distinguish among 7 involved skin states. These genes were obtained from the assessment of a number of potential batch effects on the gene expression data. The biological interpretation of these genes was inspected in the specific literature to understand their underlying information in relation to skin cancer. Finally, in order to assess their possible effectiveness in cancer diagnosis, a cross-validation Support Vector Machines (SVM)-based classification including feature ranking was performed. The accuracy attained exceeded the 92% in overall recognition of the 7 different cancer-related skin states. The proposed integration scheme is expected to allow the co-integration with other state-of-the-art technologies such as RNA-seq.

Data availability

All GEO accession files are available from the NCBI GEO database (accession number(s) are specified in the manuscript). Additionally, all relevant data are within the paper and its Supporting Information file.

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Additional details

Identifiers

DOI
10.1371/journal.pone.0196836
Other
oai:uchicago.tind.io:6558

Funding

Government of Andalusia
Advanced Computer Systems in Applications in the field of Biotechnology and Bioinformatics
Government of Andalusia
Progress in Computer Architectures for Automatic Learning using Heterogeneous Sources: Health and Well-Being Applications

UChicago Information

Division(s)
Institutes & Centers
Center(s) or Institute(s)
Center for Translational Data Science