TL;DR
This paper introduces BIGBIOCL, a big data algorithm for classifying large DNA methylation datasets to identify potential cancer driver genes, demonstrating high efficiency and accuracy in tumor classification tasks.
Contribution
The paper presents BIGBIOCL, a novel big data-based supervised classification algorithm capable of handling hundreds of thousands of features in DNA methylation datasets for cancer research.
Findings
BIGBIOCL performs hundreds of classification iterations in a few hours.
It accurately classifies tumor types based on methylation data.
It extracts candidate genes for further cancer role investigation.
Abstract
DNA methylation is a well-studied genetic modification crucial to regulate the functioning of the genome. Its alterations play an important role in tumorigenesis and tumor-suppression. Thus, studying DNA methylation data may help biomarker discovery in cancer. Since public data on DNA methylation become abundant, and considering the high number of methylated sites (features) present in the genome, it is important to have a method for efficiently processing such large datasets. Relying on big data technologies, we propose BIGBIOCL an algorithm that can apply supervised classification methods to datasets with hundreds of thousands of features. It is designed for the extraction of alternative and equivalent classification models through iterative deletion of selected features. We run experiments on DNA methylation datasets extracted from The Cancer Genome Atlas, focusing on three tumor…
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