An algorithm to Detect Overlapping Red Blood Cells for Sickle Cell Disease Diagnosis.
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Date
2024
Journal Title
Journal ISSN
Volume Title
Publisher
Kabale University
Abstract
In Africa, Uganda is among the countries with a high number of babies (20,000 babies)born with sickle cell, contributing between 6.8% of the children born with sickle cell every year worldwide and approximately 4.5% of the children born with hemoglobinopathies worldwide. It is estimated that by 2050, sickle cell cases will increase by 30% if no intervention is put in place. To facilitate early detection of sickle cell anemia, medical experts employ machine learning algorithms to detect sickle cell abnormality. Previous research revealed that algorithms for recognizing the shape of a sickle cell from blood smear by fractional dimension, cannot detect sickle cells if applied to blood samples containing overlapping red blood cells. In this research, the authors developed an algorithm to detect overlapping red blood cells for sickle cell disease diagnosis. The algorithm uses canny edge and double threshold machine learning techniques and takes overlapping red blood cell images as inputs to detect if these cells are sickle cell anemic. These images have a scale magnification of (200×, 400×, 650×) pixel taken using a microscope. The algorithm was tested on a total of 1000 digital images and the overall accuracy, sensitivity, and specificity
were 98.18%, 98.29%, and 97.98% respectively.
Description
Keywords
Algorithm, Detect, Overlapping, Red Blood Cells, Sickle Cell, Disease Diagnosis
Citation
Mabirizi, V., Kawuma, S., & Safari, Y. (2022). An algorithm to Detect Overlapping Red Blood Cells for Sickle Cell Disease Diagnosis. Kabale: Kabale University.