miRNA-Based Breast Cancer Subtyping Using AHALA Multi-Stage Classification Approach
Mohammed Qaraad, Eric P. Rahrmann, David Guinovart

TL;DR
This paper introduces a new algorithm called AHALA that uses miRNAs to accurately classify breast cancer subtypes, improving diagnostic precision and treatment options.
Contribution
The novel contribution is the development of the Adaptive Hill Climbing Artificial Lemming Algorithm (AHALA) for miRNA-based breast cancer subtyping with high classification accuracy.
Findings
AHALA achieved 95.74% mean accuracy in classifying breast cancer subtypes using miRNA data.
The algorithm identified key miRNAs like hsa-miR-190b and hsa-miR-429 as potential biomarkers for subtyping.
AHALA outperformed other optimization algorithms in convergence and classification performance.
Abstract
Breast cancer is a non-homogeneous disease and consists of diverse molecular subtypes that vary based on their prognosis and treatment response. Subtype classification of breast cancer is a crucial step toward improving diagnostic efficiency and personalized treatment. MicroRNAs (miRNAs) are a group of small regulatory RNAs that have been shown to possess great promise as a biomarker for classifying cancers. But analyzing data related to miRNAs is a challenge due to the complexities involved. In this work, we proposed an optimization algorithm dubbed the Adaptive Hill Climbing Artificial Lemming Algorithm (AHALA), which is designed to improve miRNA subtyping in breast cancers. Our proposed algorithm combined feature selection based on biological knowledge with the use of a machine learning algorithm in order to uncover the important miRNAs. Using publicly available datasets of breast…
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Taxonomy
TopicsGene expression and cancer classification · MicroRNA in disease regulation · AI in cancer detection
