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Automated detection of leukemia in blood microscopic images using image processing techniques and unique features: Cell count and area ratio
by
Al-Ayyad, Muhammad
, Al-Ghraibah, Amani
in
Biology
/ Biomedical Engineering
/ Blood cancer
/ Bone marrow
/ Cancer
/ Classification
/ Computer Engineering
/ digital image processing
/ Digital imaging
/ Erythrocytes
/ Image processing
/ Jin Zhongmin, Xian Jiao Tong University (China) and Leeds University.(UK), CHINA
/ Leukemia
/ Machine learning
/ Medical imaging
/ microscopic image's features
/ microscopic images
2024
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Automated detection of leukemia in blood microscopic images using image processing techniques and unique features: Cell count and area ratio
by
Al-Ayyad, Muhammad
, Al-Ghraibah, Amani
in
Biology
/ Biomedical Engineering
/ Blood cancer
/ Bone marrow
/ Cancer
/ Classification
/ Computer Engineering
/ digital image processing
/ Digital imaging
/ Erythrocytes
/ Image processing
/ Jin Zhongmin, Xian Jiao Tong University (China) and Leeds University.(UK), CHINA
/ Leukemia
/ Machine learning
/ Medical imaging
/ microscopic image's features
/ microscopic images
2024
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Do you wish to request the book?
Automated detection of leukemia in blood microscopic images using image processing techniques and unique features: Cell count and area ratio
by
Al-Ayyad, Muhammad
, Al-Ghraibah, Amani
in
Biology
/ Biomedical Engineering
/ Blood cancer
/ Bone marrow
/ Cancer
/ Classification
/ Computer Engineering
/ digital image processing
/ Digital imaging
/ Erythrocytes
/ Image processing
/ Jin Zhongmin, Xian Jiao Tong University (China) and Leeds University.(UK), CHINA
/ Leukemia
/ Machine learning
/ Medical imaging
/ microscopic image's features
/ microscopic images
2024
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Automated detection of leukemia in blood microscopic images using image processing techniques and unique features: Cell count and area ratio
Journal Article
Automated detection of leukemia in blood microscopic images using image processing techniques and unique features: Cell count and area ratio
2024
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Overview
Leukemia is a type of cancer that affects the body's blood-forming tissue, where the bone marrow produces an excessive amount of abnormal white blood cells (WBCs) that do not function properly. The diagnosis of leukemia is typically done by a trained expert who visually observes unique features and determines the type of cancer. However, digital image processing techniques have been improving in the healthcare system, particularly in diagnosing different types of diseases and helping doctors make treatment decisions. This paper presents a system for detecting leukemia in blood microscopic images and classifying them as normal or abnormal (with leukemia) automatically. Two main techniques were used: counting the number of WBCs around red blood cells (RBCs) and measuring the average area of WBCs around a bounding box around each cell. The classification accuracy was calculated at 91.7 and 88.8% for the two techniques, respectively. These techniques can be used as features in machine learning applications, and the system presented is faster and more efficient than traditional diagnostic processes used in hospitals.
Publisher
Cogent,Taylor & Francis Ltd,Taylor & Francis Group
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