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Deep Learning for Real-Time Malaria Parasite Detection and Counting Using YOLO-mp | IEEE Journals & Magazine | IEEE Xplore

Deep Learning for Real-Time Malaria Parasite Detection and Counting Using YOLO-mp


YOLOv4-tiny uses the tiny version of CSPDarknet53 feature extractor as backbone. There are only three CSP Nets in CSPDarknet53-tiny with "leaky" activation functions. Unl...

Abstract:

Malaria in the rural and remote regions of tropical countries remain a major public health challenge. Early diagnosis and prompt effective treatment are the basis for the...Show More
Society Section: IEEE Engineering in Medicine and Biology Society Section

Abstract:

Malaria in the rural and remote regions of tropical countries remain a major public health challenge. Early diagnosis and prompt effective treatment are the basis for the management of malaria and for reducing malaria mortality and morbidity worldwide and the key to malaria elimination. While Rapid Diagnostic Test (RDT) remains the current mainstay testing malaria infections, it is usually used in conjunction with clinical findings and lab tests of blood films through Microscopy- the gold standard of malaria diagnosis. Recent reports suggest that the accuracy of RDTs could be compromised due to parasite antigen gene deletion(s), and the lack of expertise and high turnover time makes microscopy impractical to be used in rural and remote areas which impede the diagnosis and treatment of the disease. Delay in receiving treatment for uncomplicated malaria is reported to increase the risk of developing severe malaria and mortality. Thus, the need to develop advanced, faster, and smarter tools for malaria diagnosis is paramount, specially to reinforce the gold standard method, i.e., malaria microscopy which is a full-proof tool given the limitations be addressed. Deep learning-based methods have proven to provide human expert level performance on object detection/classification on image data. Such methods can be utilized for automation of repetitive task in assessing large number of microscope images of blood samples. In this paper, we propose a novel approach to improve the performance of deep learning models through consistent labelling of ground truth bounding box for the task of pathogen detection on microscope images of thick blood smears. Recommendations are made on the reliability and repeatability testing of the trained models. A custom deep learning architecture (YOLO-mp) is developed based on the design criteria of optimizing accuracy and speed of detection with minimal resources. The custom three-layered YOLO-mp-3l and four-layered YOLO-mp-4l models achieved th...
Society Section: IEEE Engineering in Medicine and Biology Society Section
YOLOv4-tiny uses the tiny version of CSPDarknet53 feature extractor as backbone. There are only three CSP Nets in CSPDarknet53-tiny with "leaky" activation functions. Unl...
Published in: IEEE Access ( Volume: 10)
Page(s): 102157 - 102172
Date of Publication: 21 September 2022
Electronic ISSN: 2169-3536

Funding Agency:


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