An evaluation of DNA-damage response and cell-cycle pathways for breast cancer classification
Atefeh Taherian Fard, Sriganesh Srihari, Mark A. Ragan

TL;DR
This study systematically evaluates DNA-damage response and cell cycle pathways for breast cancer subtyping, demonstrating their effectiveness and proposing a combined gene signature for improved classification and prognosis.
Contribution
It introduces a pathway-based approach for breast cancer subtyping and develops a robust super-signature combining pathway and clinical genes for better classification.
Findings
Homologous Recombination pathway best performs in subtyping
Pathway-based signatures outperform some standard gene signatures
Super-signature shows high accuracy and prognostic value
Abstract
Accurate subtyping or classification of breast cancer is important for ensuring proper treatment of patients and also for understanding the molecular mechanisms driving this disease. While there have been several gene signatures proposed in the literature to classify breast tumours, these signatures show very low overlaps, different classification performance, and not much relevance to the underlying biology of these tumours. Here we evaluate DNA-damage response (DDR) and cell cycle pathways, which are critical pathways implicated in a considerable proportion of breast tumours, for their usefulness and ability in breast tumour subtyping. We think that subtyping breast tumours based on these two pathways could lead to vital insights into molecular mechanisms driving these tumours. Here, we performed a systematic evaluation of DDR and cell-cycle pathways for subtyping of breast tumours…
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Taxonomy
TopicsGene expression and cancer classification · Bioinformatics and Genomic Networks · Cancer Genomics and Diagnostics
