Deep Transfer Learning in Diagnosing Leukemia in Blood Cells
Leukemia is a fatal disease that threatens the lives of many patients. Early detection can effectively improve its rate of remission. This paper proposes two automated classification models based on blood microscopic images to detect leukemia by employing transfer learning, rather than traditional a...
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doaj-952e3a8e9dc04b538ac861197408f9f22020-11-25T02:30:44ZengMDPI AGComputers2073-431X2020-04-019292910.3390/computers9020029Deep Transfer Learning in Diagnosing Leukemia in Blood CellsMohamed Loey0Mukdad Naman1Hala Zayed2Computer Science Department, Faculty of Computer Artificial Intelligence, Benha University, Benha 13511, EgyptComputer Science Department, Faculty of Computer Artificial Intelligence, Benha University, Benha 13511, EgyptComputer Science Department, Faculty of Computer Artificial Intelligence, Benha University, Benha 13511, EgyptLeukemia is a fatal disease that threatens the lives of many patients. Early detection can effectively improve its rate of remission. This paper proposes two automated classification models based on blood microscopic images to detect leukemia by employing transfer learning, rather than traditional approaches that have several disadvantages. In the first model, blood microscopic images are pre-processed; then, features are extracted by a pre-trained deep convolutional neural network named AlexNet, which makes classifications according to numerous well-known classifiers. In the second model, after pre-processing the images, AlexNet is fine-tuned for both feature extraction and classification. Experiments were conducted on a dataset consisting of 2820 images confirming that the second model performs better than the first because of 100% classification accuracy.https://www.mdpi.com/2073-431X/9/2/29deep learningleukemia detectiontransfer learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohamed Loey Mukdad Naman Hala Zayed |
spellingShingle |
Mohamed Loey Mukdad Naman Hala Zayed Deep Transfer Learning in Diagnosing Leukemia in Blood Cells Computers deep learning leukemia detection transfer learning |
author_facet |
Mohamed Loey Mukdad Naman Hala Zayed |
author_sort |
Mohamed Loey |
title |
Deep Transfer Learning in Diagnosing Leukemia in Blood Cells |
title_short |
Deep Transfer Learning in Diagnosing Leukemia in Blood Cells |
title_full |
Deep Transfer Learning in Diagnosing Leukemia in Blood Cells |
title_fullStr |
Deep Transfer Learning in Diagnosing Leukemia in Blood Cells |
title_full_unstemmed |
Deep Transfer Learning in Diagnosing Leukemia in Blood Cells |
title_sort |
deep transfer learning in diagnosing leukemia in blood cells |
publisher |
MDPI AG |
series |
Computers |
issn |
2073-431X |
publishDate |
2020-04-01 |
description |
Leukemia is a fatal disease that threatens the lives of many patients. Early detection can effectively improve its rate of remission. This paper proposes two automated classification models based on blood microscopic images to detect leukemia by employing transfer learning, rather than traditional approaches that have several disadvantages. In the first model, blood microscopic images are pre-processed; then, features are extracted by a pre-trained deep convolutional neural network named AlexNet, which makes classifications according to numerous well-known classifiers. In the second model, after pre-processing the images, AlexNet is fine-tuned for both feature extraction and classification. Experiments were conducted on a dataset consisting of 2820 images confirming that the second model performs better than the first because of 100% classification accuracy. |
topic |
deep learning leukemia detection transfer learning |
url |
https://www.mdpi.com/2073-431X/9/2/29 |
work_keys_str_mv |
AT mohamedloey deeptransferlearningindiagnosingleukemiainbloodcells AT mukdadnaman deeptransferlearningindiagnosingleukemiainbloodcells AT halazayed deeptransferlearningindiagnosingleukemiainbloodcells |
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1724828184504958976 |