Work place: Biomedical Engineering Department, College of Engineering, Sudan University of Science and Technology, Khartoum, 11111, Sudan
E-mail: sarahrabei7@gmail.com
Website: https://orcid.org/0000-0002-0824-892X
Research Interests: Medicine & Healthcare
Biography
Sara R. Omer was born in Khartoum, Sudan in February, 1997. She has earned her Bachelors in Biomedical Engineering from SUDAN UNIVERSITY OF SCIENCE AND TECHNOLOGY, KHARTOUM, SUDAN, 2020. She has gone through many trainings as a BIOMEDICAL ENGINEER in Dal Medical, Police Hospital, National Medical Supplies Fund, Sudan Heart Center, and Tabasheer Medical Co.Ltd. She works now in Dal Group as a GRADUATE DEVELOPMENT PROGRAMME TRAINEE, Khartoum, Sudan. She also has the experience of TEACHER ASSISTANTING in Sudan University of Science and Technology (Biomedical Engineering- Engineering College) and in Alresala and Alhekma International School. She had published her first paper titled: A Computer-Aided Diagnoses Program for Leukemia Detection Using Blood Samples, Journal of Clinical Engineering: 1.3 2022 – Volume 47 – Issue 1 – P44-49 (Eng. Rabei) Eng. Rabei had participated in the FALLING WALLS competition and Expo 2020 with this proposed project.
By Azza M. Bin Aof Ethar A. Awad Sarah R. Omer Banazier A. Ibraheem Zeinab A. Mustafa
DOI: https://doi.org/10.5815/ijem.2023.01.03, Pub. Date: 8 Feb. 2023
Leukemic patients are in a rapid increase. Hence, the use of microscopic images of blood samples through visual inspection to identify blood disorders has increased, opening the door for computerized techniques for detecting leukemia. This project applies computer vision techniques to increase the accuracy and speed of detection from periph-eral blood. It also enhances visualization by providing an appropriate supplement to traditional microscopy. A micro-computer (Raspberry Pi) was well programmed in Python for analyzing images with the help of a Raspberry Pi camera and a touch screen as an alternative to the eyepiece. To achieve diversity and seek for more accuracy, image datasets for this project were obtained from various resources. These datasets were then analyzed through image processing techniques to detect leukemia cells. This detection process involves resizing cells to a standard size, noise removal by linear scaling filter, global-local contrast enhancement, segmentation of white blood cells (WBCs) using marker-controlled watershed algorithm, overlapping detection and separation using watershed and k-means clustering algorithms, and extraction with selection of the most relevant features from cells. These features were then imported into the Support Vector Machine (SVM) model which resulted in an accuracy of 93.2773%. A standalone desktop application with a suitable graphical user interface (GUI) was implemented. It was then uploaded into the Raspberry Pi, some code lines were rewritten for dealing with the camera, the hardware was designed and implemented, and then formal experiments were conducted resulting in the detection of leukemia in 5 samples out of 6. This implies that precise detection can be implemented with different data taken in various imaging conditions.
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