TY - GEN
T1 - Malaria parasite detection in peripheral blood images
AU - Tek, F. Boray
AU - Dempster, Andrew G.
AU - Kale, Izzet
PY - 2006
Y1 - 2006
N2 - This paper investigates the possibility of computerised diagnosis of malaria and describes a method to detect malaria parasites (Plasmodium spp) in images acquired from Giemsa-stained peripheral blood samples using conventional light microscopes. Prior to processing, the images are transformed to match a reference image colour characteristics. The parasite detector utilises a Bayesian pixel classifier to mark stained pixels. The class conditional probability density functions of the stained and the non-stained classes are estimated using the non-parametric histogram method. The stained pixels are further processed to extract features (histogram, Hu moments, relative shape measurements, colour auto-correlogram) for a parasite/non-parasite classifier. A distance weighted K-nearest neighbour classifier is trained with the extracted features and a detailed performance comparison is presented. Our method achieves 74% sensitivity, 98% specificity, 88% positive prediction, and 95% negative prediction values for the parasite detection.
AB - This paper investigates the possibility of computerised diagnosis of malaria and describes a method to detect malaria parasites (Plasmodium spp) in images acquired from Giemsa-stained peripheral blood samples using conventional light microscopes. Prior to processing, the images are transformed to match a reference image colour characteristics. The parasite detector utilises a Bayesian pixel classifier to mark stained pixels. The class conditional probability density functions of the stained and the non-stained classes are estimated using the non-parametric histogram method. The stained pixels are further processed to extract features (histogram, Hu moments, relative shape measurements, colour auto-correlogram) for a parasite/non-parasite classifier. A distance weighted K-nearest neighbour classifier is trained with the extracted features and a detailed performance comparison is presented. Our method achieves 74% sensitivity, 98% specificity, 88% positive prediction, and 95% negative prediction values for the parasite detection.
UR - https://www.scopus.com/pages/publications/84898037066
M3 - Conference contribution
AN - SCOPUS:84898037066
SN - 1904410146
SN - 9781904410140
T3 - BMVC 2006 - Proceedings of the British Machine Vision Conference 2006
SP - 347
EP - 356
BT - BMVC 2006 - Proceedings of the British Machine Vision Conference 2006
PB - British Machine Vision Association, BMVA
T2 - 2006 17th British Machine Vision Conference, BMVC 2006
Y2 - 4 September 2006 through 7 September 2006
ER -