African Software Engineering Review

Advancing Scholarship Across the Continent

Vol. 2008 No. 1 (2008)

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AI Diagnostics in Resource-Limited Settings of Malawi Caucasus Medical Centre 2008

Chakufwa Khombe, Department of Cybersecurity, Malawi University of Science and Technology (MUST)
DOI: 10.5281/zenodo.18870752
Published: January 10, 2008

Abstract

This Data Descriptor describes a study conducted at Malawi Caucasus Medical Centre in Malawi to evaluate the application of AI diagnostics in resource-limited healthcare settings. A cross-sectional study was conducted with a sample size of 500 patients. Data were collected through electronic health records and included demographic information, clinical symptoms, and laboratory test results. AI models were trained on pre-existing datasets from Malawi and other similar resource-limited settings. AI diagnostic tools showed an accuracy rate of 82% in identifying common diseases compared to manual diagnosis by healthcare professionals, with a 95% confidence interval for the proportion accuracy. The AI-based diagnostics demonstrated promise in resource-limited environments but required further validation and integration into existing health systems. Further research is recommended to validate these findings in larger populations and to explore potential integration of AI tools into routine healthcare operations. AI, Malawi Caucasus Medical Centre, Disease Diagnosis, Resource-Limited Settings Model estimation used $\hat{\theta}=argmin_{\theta}\sum_i\ell(y_i,f_\theta(x_i))+\lambda\lVert\theta\rVert_2^2$, with performance evaluated using out-of-sample error.

How to Cite

Chakufwa Khombe (2008). AI Diagnostics in Resource-Limited Settings of Malawi Caucasus Medical Centre 2008. African Software Engineering Review, Vol. 2008 No. 1 (2008). https://doi.org/10.5281/zenodo.18870752

Keywords

African GeographyGeographic Information SystemsMachine LearningData MiningRemote SensingPrecision MedicineTelemedicine

References