2023
DOI: 10.5772/intechopen.104224
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A Deep Learning Approaches for Modeling and Predicting of HIV Test Results Using EDHS Dataset

Abstract: At present, HIV/AIDS has steadily been listed in the top position as a major cause of death. However, HIV is largely preventable and can be avoided by making strategies to increase HIV early prediction. So, there is a need for a predictive tool that can help the domain experts with early prediction of the disease and hence can recommend strategies to stop the prognosis of the diseases. Using deep learning models, we investigated whether demographic and health survey dataset might be utilized to predict HIV tes… Show more

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