Abstract

Machine learning (ML) techniques have been used to solve real-world problems for decades. In the field of medical sciences, these approaches have been found to be useful in the diagnosis and prognosis of a variety of medical disorders. However, when dealing with voluminous, inconsistent, and higher-dimensional data, conventional ML approaches have failed to deliver the expected results. Researchers have suggested hybrid solutions to resolve these problems, which have been found to be more effective than conventional methods because these systems integrate their merits while reducing their drawbacks. In the current research article, hybrid model has been presented by coupling feature optimization with prediction approach. The proposed hybrid model has two stages: the first involves implementing the ReliefF Algorithm for optimum feature selection in erythemato-squamous diseases, and the second involves implementing k-nearest neighbor (KNN) for prediction of those selected optimum features. The experimentation was carried out on bench mark dataset for erythemato-squamous diseases. The presented hybrid model was also assessed with conventional KNN approach based on various metrics such as classification accuracy, kappa coefficient, recall, precision, and f-score.

Highlights

  • Erythemato-squamous disease refers to skin disorders which cause the skin irritated, blocked, or inflamed

  • This paper presents a hybrid model by coupling ReliefF Algorithm with K-Nearest Neighbor (KNN) approach for the prediction of erythemato-squamous disorders

  • In the current research work, hybrid model based on ReliefF Algorithm and k-nearest neighbor (KNN) approach has been presented for Erythemato-Squamous disorders prediction

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Summary

Introduction

Erythemato-squamous disease refers to skin disorders which cause the skin irritated, blocked, or inflamed It results in various symptoms on skin such as rashes, lesions, macule, swelling, burning, and itching. It may be caused by inflammation, acne medications, asthma, solar radiation, photosensitization, acute radiation syndrome, bacteria, viruses or fungal infection, any of which may induce dilation of the capillaries, resulting in redness [1]. It can be of several types and its cure depends on the type of erythema. Medication or emergency treatment is needed in case of more extreme cases [2]

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