2020
DOI: 10.3390/electronics9030427
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Deep Learning Models for Classification of Red Blood Cells in Microscopy Images to Aid in Sickle Cell Anemia Diagnosis

Abstract: Sickle cell anemia, which is also called sickle cell disease (SCD), is a hematological disorder that causes occlusion in blood vessels, leading to hurtful episodes and even death. The key function of red blood cells (erythrocytes) is to supply all the parts of the human body with oxygen. Red blood cells (RBCs) form a crescent or sickle shape when sickle cell anemia affects them. This abnormal shape makes it difficult for sickle cells to move through the bloodstream, hence decreasing the oxygen flow. The precis… Show more

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Cited by 121 publications
(86 citation statements)
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“…The classification of blood cells has been a subject of interest in the last few decades. This interest seems to have been considerably influenced by the general growth of machine and deep learning for unconventional tasks such as classifying chest X-rays [ 13 – 15 ], red blood cell [ 16 , 17 ], segmenting medical images [ 18 – 21 ], breast cancer determination [ 22 , 23 ], and Alzheimer's disease [ 24 , 25 ]. For instance, the work [ 26 ] proposed the identification of the red blood cell, white blood cell, and platelet using the popular YOLO object detection algorithm and deep neural networks for classification with interesting results.…”
Section: Related Workmentioning
confidence: 99%
“…The classification of blood cells has been a subject of interest in the last few decades. This interest seems to have been considerably influenced by the general growth of machine and deep learning for unconventional tasks such as classifying chest X-rays [ 13 – 15 ], red blood cell [ 16 , 17 ], segmenting medical images [ 18 – 21 ], breast cancer determination [ 22 , 23 ], and Alzheimer's disease [ 24 , 25 ]. For instance, the work [ 26 ] proposed the identification of the red blood cell, white blood cell, and platelet using the popular YOLO object detection algorithm and deep neural networks for classification with interesting results.…”
Section: Related Workmentioning
confidence: 99%
“…TL means using the knowledge from a specific task to solve another correlated task. In deep learning, TL helps the model learn the features from a large dataset so that it performs better on a relevant dataset but may be smaller in size, and this method has shown effectiveness in image classification task [7], [34], [35]. In our work, the models are first trained on the Plant Village dataset.…”
Section: Approach With Cnnsmentioning
confidence: 99%
“…The employment of computer-aided diagnosis systems optimized the performance of the breast cancer diagnosis [9]. Recently, Deep Learning (DL) has played the main role in several medical tasks [10][11][12][13], and the classification and detection of breast cancer [14,15]. The breast cancer classification task is challenging due the complexity of the breast cancer images.…”
Section: Introductionmentioning
confidence: 99%