Abstract

Background Psoriasis is a chronic autoimmune disease impairing significantly the quality of life of the patient. The diagnosis of the disease is done via a visual inspection of the lesional skin by dermatologists. Classification of psoriasis using gene expression is an important issue for the early and effective treatment of the disease. Therefore, gene expression data and selection of suitable gene signatures are effective sources of information. Methods We aimed to develop a hybrid classifier for the diagnosis of psoriasis based on two machine learning models of the genetic algorithm and support vector machine (SVM). The method also conducts gene signature selection. A publically available gene expression dataset was used to test the model. Results A number of 181 probe sets were selected among the original 54,675 probes using the hybrid model with a prediction accuracy of 100% over the test set. A number of 10 hub genes were identified using the protein-protein interaction network. Nine out of 10 identified genes were found in significant modules. Conclusions The results showed that the genetic algorithm improved the SVM classifier performance significantly implying the ability of the proposed model in terms of detecting relevant gene expression signatures as the best features.

Highlights

  • Psoriasis is a chronic autoimmune/inflammatory and hyperproliferative disease with primary manifestations on skin and joints 2]

  • By using features selected by genetic algorithm (GA) (27,265 features), the total accuracy and area under the ROC curve (AUC) of the support vector machine (SVM) increased to 79.167% and 0.792, respectively

  • The finding of this study showed a higher performance for the proposed hybrid prediction model and showed that GA has significantly improved the performance of the SVM classifier by achieving a total accuracy of 100%

Read more

Summary

Introduction

Psoriasis is a chronic autoimmune/inflammatory and hyperproliferative disease with primary manifestations on skin and joints 2]. Psoriasis is a chronic autoimmune disease impairing significantly the quality of life of the patient. Classification of psoriasis using gene expression is an important issue for the early and effective treatment of the disease. We aimed to develop a hybrid classifier for the diagnosis of psoriasis based on two machine learning models of the genetic algorithm and support vector machine (SVM). A publically available gene expression dataset was used to test the model. The results showed that the genetic algorithm improved the SVM classifier performance significantly implying the ability of the proposed model in terms of detecting relevant gene expression signatures as the best features

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call