"Determination of Plasmodium Parasite Life Stages and Species in Images of Thin Blood Smears Using Artificial Neural Network"
written by Lucy Gitonga, Daniel Maitethia Memeu, Kenneth Amiga Kaduki, Mjomba Allen Christopher Kale, Njogu Samson Muriuki,
published by Open Journal of Clinical Diagnostics, Vol.4 No.2, 2014
has been cited by the following article(s):
  • Google Scholar
  • CrossRef
[1] Cuckoo Search based Ensemble Classifier for Predictive Analysis of Malaria Infection Scope on thin Blood Smears
2019
[2] Cascading YOLO: Automated Malaria Parasite Detection for Plasmodium Vivax in Thin Blood Smears
Medical Imaging 2020: Computer-Aided Diagnosis, 2019
[3] Predictive analysis by ensemble classifier with machine learning models
2019
[4] Image analysis and machine learning for detecting malaria
Translational Research, 2018
[5] Malaria parasite detection and cell counting for human and mouse using thin blood smear microscopy
2018
[6] Optimization of Region of Interest (ROI) Image of Malaria Parasites
2018
[7] IDENTIFICATION OF MALARIA DISEASE AND ITS STADIUM BASED ON DIGITAL IMAGE PROCESSING
Journal of Theoretical & Applied Information Technology, 2017
[8] Clustering approach for unsupervised segmentation of malarial Plasmodium vivax parasite
AIP Conference Proceedings, 2017
[9] A review on automated diagnosis of malaria parasite in microscopic blood smears images
Multimedia Tools and Applications, 2017
[10] IDENTIFICATION OF MALARIA DISEASE AND ITS STADIUM BASED ON DIGITAL IMAGE PROCESSING.
Journal of Theoretical and Applied Information Technology, 2017
[11] Hybrid classifier based life cycle stages analysis for malaria-infected erythrocyte using thin blood smear images
Neural Computing and Applications, 2017
[12] Malaria infected erythrocyte classification based on a hybrid classifier using microscopic images of thin blood smear
Multimedia Tools and Applications, 2016
[13] Automatic Malaria Parasite Detection and Classification using ANFIS
2016
[14] Computational microscopic imaging for malaria parasite detection: a systematic review
Journal of microscopy, 2015