Feature Selection in the Classification of Erythemato-Squamous Diseases using Machine Learning Models and Principal Component Analysis | IEEE Conference Publication | IEEE Xplore

Feature Selection in the Classification of Erythemato-Squamous Diseases using Machine Learning Models and Principal Component Analysis


Abstract:

Erythemato-squamous diseases (ESD) are dermatological diseases that significantly impact the quality of life of an increasing number of patients worldwide. This study use...Show More

Abstract:

Erythemato-squamous diseases (ESD) are dermatological diseases that significantly impact the quality of life of an increasing number of patients worldwide. This study used a publicly available clinical dataset of 366 patients from the Department of Computer Engineering and Information Science, Bilkent University with 34 predictors contributing to the classification of ESDs. The data was curated to ensure unbiasedness and accuracy before applying principal component analysis and machine learning models to identify crucial factors in classifying the six main types of ESDs. 31 different machine learning models, including Tree, Linear Discriminant, Quadratic Discriminant, Naïve Bayes, SVM, KNN, Ensemble, Neural Network, and Kernel were trained, validated, and the classification accuracy was compared. The model that is the most adequate is the Fine KNN, which has the highest cross-validation classification accuracy at 100%. This model requires only eight predictors: itching, the Koebner phenomenon, follicular papules, fibrosis of the papillary dermis, spongiosis, inflammatory mononuclear infiltrate, bandlike infiltrate, and age.
Date of Conference: 28-31 October 2023
Date Added to IEEE Xplore: 22 November 2023
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Conference Location: Tokyo, Japan

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