Assessing Generalization Capabilities of Malaria Diagnostic Models from Thin Blood Smears
Louise Guillon
Soheib Biga
Axel Puyo
Grégoire Pasquier
Valentin Foucher
Yendoubé E. Kantchire
Stéphane E. Sossou
A. Dorkenoo
Laurent Bonnardot
M. Thellier
Laurence Lachaud
Renaud Piarroux

Abstract
Malaria remains a significant global health challenge, necessitating rapid and accurate diagnostic methods. While computer-aided diagnosis (CAD) tools utilizing deep learning have shown promise, their generalization to diverse clinical settings remains poorly assessed. This study evaluates the generalization capabilities of a CAD model for malaria diagnosis from thin blood smear images across four sites. We explore strategies to enhance generalization, including fine-tuning and incremental learning. Our results demonstrate that incorporating site-specific data significantly improves model performance, paving the way for broader clinical application.
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