Smartphone-Supported Malaria Diagnosis Based on Deep Learning

© 2019, Springer Nature Switzerland AG. Malaria remains a major burden on global health, causing about half a million deaths every year. The objective of this work is to develop a fast, automated, smartphone-supported malaria diagnostic system. Our proposed system is the first system using both imag...

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Main Authors: Feng Yang, Hang Yu, Kamolrat Silamut, Richard J. Maude, Stefan Jaeger, Sameer Antani
Other Authors: Beijing Jiaotong University
Format: Conference or Workshop Item
Published: 2020
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/50691
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spelling th-mahidol.506912020-01-27T16:16:16Z Smartphone-Supported Malaria Diagnosis Based on Deep Learning Feng Yang Hang Yu Kamolrat Silamut Richard J. Maude Stefan Jaeger Sameer Antani Beijing Jiaotong University Mahidol University National Library of Medicine Computer Science Mathematics © 2019, Springer Nature Switzerland AG. Malaria remains a major burden on global health, causing about half a million deaths every year. The objective of this work is to develop a fast, automated, smartphone-supported malaria diagnostic system. Our proposed system is the first system using both image processing and deep learning methods on a smartphone to detect malaria parasites in thick blood smears. The underlying detection algorithm is based on an iterative method for parasite candidate screening and a convolutional neural network model (CNN) for feature extraction and classification. The system runs on Android phones and can process blood smear images taken by the smartphone camera when attached to the eyepiece of a microscope. We tested the system on 50 normal patients and 150 abnormal patients. The accuracies of the system on patch-level and patient-level are 97% and 78%, respectively. AUC values on patch-level and patient-level are, respectively, 98% and 85%. Our system could aid in malaria diagnosis in resource-limited regions, without depending on extensive diagnostic expertise or expensive diagnostic equipment. 2020-01-27T08:24:12Z 2020-01-27T08:24:12Z 2019-01-01 Conference Paper Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics). Vol.11861 LNCS, (2019), 73-80 10.1007/978-3-030-32692-0_9 16113349 03029743 2-s2.0-85075683656 https://repository.li.mahidol.ac.th/handle/123456789/50691 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85075683656&origin=inward
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Computer Science
Mathematics
spellingShingle Computer Science
Mathematics
Feng Yang
Hang Yu
Kamolrat Silamut
Richard J. Maude
Stefan Jaeger
Sameer Antani
Smartphone-Supported Malaria Diagnosis Based on Deep Learning
description © 2019, Springer Nature Switzerland AG. Malaria remains a major burden on global health, causing about half a million deaths every year. The objective of this work is to develop a fast, automated, smartphone-supported malaria diagnostic system. Our proposed system is the first system using both image processing and deep learning methods on a smartphone to detect malaria parasites in thick blood smears. The underlying detection algorithm is based on an iterative method for parasite candidate screening and a convolutional neural network model (CNN) for feature extraction and classification. The system runs on Android phones and can process blood smear images taken by the smartphone camera when attached to the eyepiece of a microscope. We tested the system on 50 normal patients and 150 abnormal patients. The accuracies of the system on patch-level and patient-level are 97% and 78%, respectively. AUC values on patch-level and patient-level are, respectively, 98% and 85%. Our system could aid in malaria diagnosis in resource-limited regions, without depending on extensive diagnostic expertise or expensive diagnostic equipment.
author2 Beijing Jiaotong University
author_facet Beijing Jiaotong University
Feng Yang
Hang Yu
Kamolrat Silamut
Richard J. Maude
Stefan Jaeger
Sameer Antani
format Conference or Workshop Item
author Feng Yang
Hang Yu
Kamolrat Silamut
Richard J. Maude
Stefan Jaeger
Sameer Antani
author_sort Feng Yang
title Smartphone-Supported Malaria Diagnosis Based on Deep Learning
title_short Smartphone-Supported Malaria Diagnosis Based on Deep Learning
title_full Smartphone-Supported Malaria Diagnosis Based on Deep Learning
title_fullStr Smartphone-Supported Malaria Diagnosis Based on Deep Learning
title_full_unstemmed Smartphone-Supported Malaria Diagnosis Based on Deep Learning
title_sort smartphone-supported malaria diagnosis based on deep learning
publishDate 2020
url https://repository.li.mahidol.ac.th/handle/123456789/50691
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