| Literature DB >> 30575213 |
Naveed Abbas1, Tanzila Saba2, Amjad Rehman3, Zahid Mehmood4, Hoshang Kolivand5, Mueen Uddin6, Adeel Anjum7.
Abstract
Visual inspection for the quantification of malaria parasitaemiain (MP) and classification of life cycle stage are hard and time taking. Even though, automated techniques for the quantification of MP and their classification are reported in the literature. However, either reported techniques are imperfect or cannot deal with special issues such as anemia and hemoglobinopathies due to clumps of red blood cells (RBCs). The focus of the current work is to examine the thin blood smear microscopic images stained with Giemsa by digital image processing techniques, grading MP on independent factors (RBCs morphology) and classification of its life cycle stage. For the classification of the life cycle of malaria parasite the k-nearest neighbor, Naïve Bayes and multi-class support vector machine are employed for classification based on histograms of oriented gradients and local binary pattern features. The proposed methodology is based on inductive technique, segment malaria parasites through the adaptive machine learning techniques. The quantification accuracy of RBCs is enhanced; RBCs clumps are split by analysis of concavity regions for focal points. Further, classification of infected and non-infected RBCs has been made to grade MP precisely. The training and testing of the proposed approach on benchmark dataset with respect to ground truth data, yield 96.75% MP sensitivity and 94.59% specificity. Additionally, the proposed approach addresses the process with independent factors (RBCs morphology). Finally, it is an economical solution for MP grading in immense testing.Entities:
Keywords: hybrid classifiers; malaria parasitaemia; malaria parasitaemia quantification and grading
Mesh:
Year: 2018 PMID: 30575213 DOI: 10.1002/jemt.23170
Source DB: PubMed Journal: Microsc Res Tech ISSN: 1059-910X Impact factor: 2.769