Lightweight deep learning for malaria parasite detection using cell-image of blood smear images

被引:19
作者
Alqudah A. [1 ]
Alqudah A.M. [2 ]
Qazan S. [1 ]
机构
[1] Department of Computer Engineering, Hijjawi Faculty for Engineering Technology, Yarmouk University, Shafiq Irshidat Street, Irbid
[2] Department of Biomedical Systems and Informatics Engineering, Hijjawi Faculty for Engineering Technology, Yarmouk University, Shafiq Irshidat Street, Irbid
关键词
Blood smear; Classification; Computer-aided diagnosis; Convolutional neural networks; Deep learning; Malaria;
D O I
10.18280/ria.340506
中图分类号
学科分类号
摘要
Malaria is an infectious disease that is caused by the plasmodium parasite which is a single-celled group. This disease is usually spread employing an infected female anopheles mosquito. Recent statistics show that in 2017 there were only around 219 million recorded cases and about 435,000 deaths were reported due to this disease and more than 40% of the global population is at risk. Despite this, many image processing fused with machine learning algorithms were developed by researchers for the early detection of malaria using blood smear images. This research used a new CNN model using transfer learning for classifying segmented infected and Uninfected red blood cells. The experimental results show that the proposed architecture success to detect malaria with an accuracy of 98.85%, sensitivity of 98.79%, and a specificity of 98.90% with the highest speed and smallest input size among all previously used CNN models. © 2020 Lavoisier. All rights reserved.
引用
收藏
页码:571 / 576
页数:5
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