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An automatic vision‐based malaria diagnosis system
Authors:JP VINK  M LAUBSCHER  R VLUTTERS  K SILAMUT  RJ MAUDE  MU HASAN  G DE HAAN
Affiliation:1. Video and Image Processing Group, Philips Group Innovation, Research, , Eindhoven, The Netherlands;2. Applied Chemical Technology Group, Philips Group Innovation, Research, , Eindhoven, The Netherlands;3. Mahidol‐Oxford Tropical Medicine Research Unit, Faculty of Tropical Medicine, Mahidol University, , Bangkok, Thailand;4. Centre for Tropical Medicine, CCVTM, University of Oxford, , Oxford, UK;5. Department of Medicine, Chittagong Medical College Hospital, , Chittagong, Bangladesh
Abstract:Malaria is a worldwide health problem with 225 million infections each year. A fast and easy‐to‐use method, with high performance is required to differentiate malaria from non‐malarial fevers. Manual examination of blood smears is currently the gold standard, but it is time‐consuming, labour‐intensive, requires skilled microscopists and the sensitivity of the method depends heavily on the skills of the microscopist. We propose an easy‐to‐use, quantitative cartridge‐scanner system for vision‐based malaria diagnosis, focusing on low malaria parasite densities. We have used special finger‐prick cartridges filled with acridine orange to obtain a thin blood film and a dedicated scanner to image the cartridge. Using supervised learning, we have built a Plasmodium falciparum detector. A two‐step approach was used to first segment potentially interesting areas, which are then analysed in more detail. The performance of the detector was validated using 5 420 manually annotated parasite images from malaria parasite culture in medium, as well as using 40 cartridges of 11 780 images containing healthy blood. From finger prick to result, the prototype cartridge‐scanner system gave a quantitative diagnosis in 16 min, of which only 1 min required manual interaction of basic operations. It does not require a wet lab or a skilled operator and provides parasite images for manual review and quality control. In healthy samples, the image analysis part of the system achieved an overall specificity of 99.999978% at the level of (infected) red blood cells, resulting in at most seven false positives per microlitre. Furthermore, the system showed a sensitivity of 75% at the cell level, enabling the detection of low parasite densities in a fast and easy‐to‐use manner. A field trial in Chittagong (Bangladesh) indicated that future work should primarily focus on improving the filling process of the cartridge and the focus control part of the scanner.
Keywords:Computer aided diagnosis  fluorescent microscopy  image analysis  malaria parasites  Plasmodium falciparum  supervised learning
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