Predicting major depressive disorder among adults Living with HIV In Uganda: An Artificial Intelligence Approach
Abstract
Background
Major depressive disorder is a leading cause of disability worldwide and a major contributor
to the overall global burden of disease. The biggest percentage of the MDD burden pertains to
low- and middle-income countries like Uganda. MDD is common among people living with
HIV (PLWH) with prevalence ranging from 8% to 60%. In order to bridge the treatment gap
for MDD, we need to develop locally relevant and accurate screening tools that will facilitate
diagnosis, prevention and early treatment. In this era of personalised medicine with powerful
computational tools, it is possible to develop predictive computational algorithms that will
enable the early identification of individuals at risk for MDD.
Methodology
This descriptive nested case control study utilised samples and clinical data that were collected
by Prof. Eugene Kinyanda’s Senior EDCTP Fellowship study (2011-2014). The EDCTP
Mental Health study undertaken among 1,099 anti-retroviral therapy-naive PLWH. For this
study, artificial intelligence was used to predict incident cases of major depressive disorder
among adults living with HIV. Classification algorithms were applied and evaluated using
classification matrices and area under the curve receiver operating characteristic curves.
Results
Multiple algorithms were used in the prediction of incident cases of MDD. Random Forest
classifier and Xtreme Gradient Boost were the best performing modes. Voting classifier was
used to compound the effect of the two algorithms. Area under the receiver operating
characteristic curve scores were 0.945, 0.938 and 0.942 for Xtreme gradient Boost, Random
Forest classifier and Voting Classifier algorithms respectively. Study site was the biggest
predictor of the incident cases of MDD while gender and psychiatric history were also strong
predictors of MDD.
Conclusion
This study demonstrates the applicability of machine learning approaches in the development
of predictive models for MDD. The results are consistent with the literature on the predictors
of incident MDD where study site, social support, psychiatric history and gender were found
to be good predictors of MDD among the same study participants