Litcius/Paper detail

Treatment Response Prediction in Hepatitis C Patients using Machine Learning Techniques

Ashfaq Ali Kashif, Birra Bakhtawar, Asma Akhtar, Samia Akhtar, Nauman Aziz, Muhammad Sheraz Javeid

2021International Journal of Technology Innovation and Management (IJTIM)171 citationsDOIOpen Access PDF

Abstract

The proper prognosis of treatment response is crucial in any medical therapy to reduce the effects of the disease and of the medication as well. The mortality rate due to hepatitis c virus (HCV) is high in Pakistan as well as all over the world. During the treatment of any disease, prediction of treatment response against any particular medicine is difficult. This paper focuses on predicting the treatment response of a drug: “L-ornithine L-Aspartate (LOLA)” in hepatitis c patients. We have used various machine learning techniques for the prediction of treatment response, including: “K Nearest Neighbor, kStar, Naive Bayes, Random Forest, Radial Basis Function, PART, Decision Tree, OneR, Support Vector Machine and Multi-Layer Perceptron”. Performance measures used to analyze the performance of used machine learning techniques include, “Accuracy, Recall, Precision, and F-Measure”.

Topics & Concepts

Random forestMachine learningArtificial intelligenceDecision treeNaive Bayes classifierSupport vector machineComputer scienceMultilayer perceptronArtificial neural networkPerceptronDrug-naïveRibavirinMedicineHepatitis C virusDrugVirologyVirusPharmacologyHepatitis C virus researchLiver Disease Diagnosis and TreatmentDiverse Scientific Research Studies