Sub-population identification of multimorbidity in sub-Saharan African populations
Adebayo Oshingbesan, Michelle Kamp, Phelelani Thokozani Mpangase, Kayode Adetunji, Samuel Iddi, Daniel Maina Nderitu, Tanya Akumu, Okechinyere Achilonu, Isaac Kisiangani, Theophilous Mathema, Girmaw Tadesse, F. Xavier Gomez-Olive, Chodziwadziwa Whiteson Kabudula

TL;DR
This paper introduces a new way to define and identify groups with multiple health conditions in sub-Saharan African populations using data science methods.
Contribution
A novel definition of multimorbidity and an automated method to identify high-risk sub-populations in health data.
Findings
High-risk sub-populations identified in one region also showed higher multimorbidity rates in another region.
A more-at-risk sub-population was found beyond traditional age and sex stratifications.
Automated stratification reveals nuanced health patterns that manual methods may miss.
Abstract
This work provides three contributions that straddle the medical literature on multimorbidity and the data science community with an interest on exploratory analysis of health-related research data. First, we propose a definition for multimorbidity as the co-occurrence of (at least) two disease diagnoses from a pre-determined list. This interpretation adds to a growing body of working definitions emerging from the literature. Second, we apply this novel outcome of-interest to two sub-Saharan populations located in Nairobi, Kenya and Agincourt, South Africa. The source data for this analysis was collected as part of the Africa Wits-INDEPTH Partnership for Genomic Studies project. Third, we stratify this outcome-of-interest across all possible sub-populations and identify sub-populations with anomalously high (or low) rates of multimorbidity. Critically, the automatic stratification…
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Taxonomy
TopicsChronic Disease Management Strategies · HIV/AIDS Impact and Responses · Health disparities and outcomes
