Image classification using deep neural networks for malaria disease detection

Since the 19th century, Malaria has become a terrifying life-threating disease in most of the countries. Its been identified that five countries namely Nigeria with 25%, Congo with a ratio of 11%, Mozambique with ratio of 5%, India with ratio of 4% and Uganda with ratio of 4%. World Health Organizat...

Full description

Saved in:
Bibliographic Details
Main Authors: Lydia E.L., Moses G.J., Sharmili N., Shankar K., Maseleno A.
Other Authors: 57196059278
Format: Article
Published: Research Trend 2023
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Tenaga Nasional
id my.uniten.dspace-24913
record_format dspace
spelling my.uniten.dspace-249132023-05-29T15:28:44Z Image classification using deep neural networks for malaria disease detection Lydia E.L. Moses G.J. Sharmili N. Shankar K. Maseleno A. 57196059278 55532461200 57191575400 56884031900 55354910900 Since the 19th century, Malaria has become a terrifying life-threating disease in most of the countries. Its been identified that five countries namely Nigeria with 25%, Congo with a ratio of 11%, Mozambique with ratio of 5%, India with ratio of 4% and Uganda with ratio of 4%. World Health Organization stated that above 90% of malaria death cases were recorded every year. Most of the Indian states like Odisha, Madhya Pradesh, Maharastra, northern countries, Chhattisgarh got affected by Malaria. India spotted death cases of malaria from millions to thousands that have reduced in recent years. Directorate of National vector Bore disease control program has started malaria control strategies using early case detection and treatments, vector control, protective measures against mosquito bites and management of Environment. The major challenge was to identify the disease at early stage. The key contributions avoid malaria disease is to provide antimalaria drugs, using indoor spray with residual insecticides, mosquito nets. For the treatment, medical technologies, deep learning architectures related to Convolutional Neural Networks to train and test performing different combinations for image classification using ResNet34 which helps patient go through prior examination for microscopic diagnosis. For patients examination, this paper considers Malaria Cell Images dataset with Parasitized and uninfected images. Thus, this clearly shows that one can easily identify person�s condition whether he is infected or uninfected by enabling open-source Artificial Intelligence. It shows the start-of-the-art accuracy by checking individual details. � 2019, Research Trend. All rights reserved. Final 2023-05-29T07:28:44Z 2023-05-29T07:28:44Z 2019 Article 2-s2.0-85075476143 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85075476143&partnerID=40&md5=3af1047aac55883fff13691f62de58a6 https://irepository.uniten.edu.my/handle/123456789/24913 10 4 66 70 Research Trend Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description Since the 19th century, Malaria has become a terrifying life-threating disease in most of the countries. Its been identified that five countries namely Nigeria with 25%, Congo with a ratio of 11%, Mozambique with ratio of 5%, India with ratio of 4% and Uganda with ratio of 4%. World Health Organization stated that above 90% of malaria death cases were recorded every year. Most of the Indian states like Odisha, Madhya Pradesh, Maharastra, northern countries, Chhattisgarh got affected by Malaria. India spotted death cases of malaria from millions to thousands that have reduced in recent years. Directorate of National vector Bore disease control program has started malaria control strategies using early case detection and treatments, vector control, protective measures against mosquito bites and management of Environment. The major challenge was to identify the disease at early stage. The key contributions avoid malaria disease is to provide antimalaria drugs, using indoor spray with residual insecticides, mosquito nets. For the treatment, medical technologies, deep learning architectures related to Convolutional Neural Networks to train and test performing different combinations for image classification using ResNet34 which helps patient go through prior examination for microscopic diagnosis. For patients examination, this paper considers Malaria Cell Images dataset with Parasitized and uninfected images. Thus, this clearly shows that one can easily identify person�s condition whether he is infected or uninfected by enabling open-source Artificial Intelligence. It shows the start-of-the-art accuracy by checking individual details. � 2019, Research Trend. All rights reserved.
author2 57196059278
author_facet 57196059278
Lydia E.L.
Moses G.J.
Sharmili N.
Shankar K.
Maseleno A.
format Article
author Lydia E.L.
Moses G.J.
Sharmili N.
Shankar K.
Maseleno A.
spellingShingle Lydia E.L.
Moses G.J.
Sharmili N.
Shankar K.
Maseleno A.
Image classification using deep neural networks for malaria disease detection
author_sort Lydia E.L.
title Image classification using deep neural networks for malaria disease detection
title_short Image classification using deep neural networks for malaria disease detection
title_full Image classification using deep neural networks for malaria disease detection
title_fullStr Image classification using deep neural networks for malaria disease detection
title_full_unstemmed Image classification using deep neural networks for malaria disease detection
title_sort image classification using deep neural networks for malaria disease detection
publisher Research Trend
publishDate 2023
_version_ 1806424394195533824