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st. Mary's University Institutional Repository St. Mary's University Institutional Repository

Please use this identifier to cite or link to this item: http://hdl.handle.net/123456789/6926
Title: PREDICTIVE MODEL TO DETECT FIRST-LINE ANTIRETROVIRAL THERAPY FAILURE AMONG HIV/AIDS PATIENTS IN ZEWDITU HOSPITAL, ADDIS ABABA
Authors: Assefa, Helina
Keywords: First-liner ART, ART failure detection, Clustering, Classification, WEKA, Cios Model, Zewditu Hospital.
Issue Date: Jan-2022
Publisher: ST. MARY’S UNIVERSITY
Abstract: This study utilizes expert consultation to develop machine learning based predictive model that detects clients who are at high-risk of treatment failure among those who are receiving first-line ARV therapy. The study uses retrospective cross-sectional data of clients who are at least 6 months on ART when data was collected from Zewditu Hospital. The study has followed the Cio data mining model. The study has conducted two main procedures for model development; cluster modeling and classification modeling. The cluster modeling was conducted by using the K-mean algorithm and classification modeling was conducted by implementing decision tree (J48), NaiveBayes, SVM and random forest algorithms The experimentation results show that all the algorithms were the same in terms of accuracy (98.998%), precision (0.990), recall (1.00), and F1-score (0.995). They differ in the time taken to build the classification model. J48 and Naïve Bayes algorithms are have better time efficiency. Accordingly, the J48 and Naïve Bayes algorithms were found the best algorithms to develop ART treatment detection model for the data considered in this study.
URI: .
http://hdl.handle.net/123456789/6926
Appears in Collections:Master of computer science

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