4.6 Article

Cancer Classification Utilizing Voting Classifier with Ensemble Feature Selection Method and Transcriptomic Data

Journal

GENES
Volume 14, Issue 9, Pages -

Publisher

MDPI
DOI: 10.3390/genes14091802

Keywords

cancer detection; machine learning; gene data; feature selection; voting classifier; gene analysis

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This article proposes an ensemble rank-based feature selection method and classifier to address the challenge of high-dimensional data in cancer diagnosis. The method efficiently discovers the most relevant and useful features by aggregating rankings from different selection methods. The results show high accuracy on multiple datasets and the study identifies a subset of the most important cancer-causing genes and demonstrates their significance.
Biomarker-based cancer identification and classification tools are widely used in bioinformatics and machine learning fields. However, the high dimensionality of microarray gene expression data poses a challenge for identifying important genes in cancer diagnosis. Many feature selection algorithms optimize cancer diagnosis by selecting optimal features. This article proposes an ensemble rank-based feature selection method (EFSM) and an ensemble weighted average voting classifier (VT) to overcome this challenge. The EFSM uses a ranking method that aggregates features from individual selection methods to efficiently discover the most relevant and useful features. The VT combines support vector machine, k-nearest neighbor, and decision tree algorithms to create an ensemble model. The proposed method was tested on three benchmark datasets and compared to existing built-in ensemble models. The results show that our model achieved higher accuracy, with 100% for leukaemia, 94.74% for colon cancer, and 94.34% for the 11-tumor dataset. This study concludes by identifying a subset of the most important cancer-causing genes and demonstrating their significance compared to the original data. The proposed approach surpasses existing strategies in accuracy and stability, significantly impacting the development of ML-based gene analysis. It detects vital genes with higher precision and stability than other existing methods.

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