Feature Selection in Microarray using Proposed Hybrid Minimum Redundancy-Maximum Relevance (MRMR) and Modified Genetic Algorithm (MGA)
Journal Title: International Journal of Experimental Research and Review - Year 2024, Vol 39, Issue 3
Abstract
Gene expression microarray data commonly have an enormous number of genes with a smaller number of samples. In these genes, many are irrelevant, insignificant or redundant for the classification analysis. Therefore, the identification of informative genes, which have the greatest role in classification and diagnosis, is of essential and practical importance to the classification problems, such as cancer versus non-cancer classification and classification of different tumor types. This paper aims to present a novel idea for implementing MRMR, the hybrid Minimum Redundancy-Maximum Relevance method combined with a Modified Genetic Algorithm, to minimize the selection of microarray data feature sets. This paper proposes a two-step feature selection algorithm by integrating Minimum Redundancy Maximum Relevance (MRMR) and Modified Genetic Algorithm (MGA). In the first step, MRMR is used to filter redundant genes in high-dimensional microarray data. The second step is used to eliminate irrelevant genes. The proposed MRMR-MGA algorithm is compared with traditional MRMR with the GA algorithm. The implementation results show that the proposed method has good selection and classification performances.
Authors and Affiliations
P. Nancy Vincentina Mary, R. Nagarajan
Evaluating Mobile Wallet Adoption Barriers Using Fuzzy Mathematical Model
A tremendous amount of research has been done on the factors influencing mobile wallet adoption as mobile wallet technology has seen rapid growth. Using expert opinion and Fuzzy PROMETHEE approach, this study investigate...
A comparative physico-chemical, phytochemical and spectroscopic analysis of two medicinal plants belongs to Euphorbiaceae family: Acalypha indica L. and Euphorbia hirta L. growing in Paschim Medinipur District, West Bengal, India
Plants belong to Euphorbiaceae family, bearing enormous Medicinal potential due to the presence of various pharmacologically important secondary metabolites. Now a days, with the help of various tools and techniques like...
Diagnosing and categorizing of pulmonary diseases using Deep learning conventional Neural network
Lung cancer is one of the major illnesses that contribute to millions of fatalities worldwide. Numerous deaths could be saved through the early identification and categorization of lung cancers. However, with traditional...
Aphidophagous Predator diversity in Kalimpong District, India
Kalimpong, part of Eastern Himalaya have a diverse flora and aphid fauna. Aphidophagous predators are important natural enemies of aphids in these areas. Coccinellids, Syrphids and europterans are the important predators...
An Unravelled Potential of Foliar Application of Micro and Beneficial Nutrients in Cereals for Ensuring Food and Nutritional Security
Micronutrient deficiency in soil and crops is a critical issue that contributes to what is known as hidden hunger. Hidden hunger refers to the lack of essential vitamins and minerals in people diets, often due to the poo...