APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS

Background: Typhus is a disease caused by Salmonella typhi, Salmonella paratyphi A Salmonella parathypi B, dan Salmonella paratyphi C bacteria that attacks digestive tract and caused infection in small intestine. The common test that performed in the laboratory is widal test. The result reading of t...

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Main Authors: Betty Purnamasari, Franky Arisgraha, Suryani Dyah Astuti
Format: Article
Language:English
Published: Universitas Airlangga 2013-10-01
Series:Indonesian Journal of Tropical and Infectious Disease
Online Access:https://e-journal.unair.ac.id/IJTID/article/view/234
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spelling doaj-c3b7a16c2eeb4e94a71cca3a6603459e2021-08-09T06:09:56ZengUniversitas AirlanggaIndonesian Journal of Tropical and Infectious Disease2085-11032356-09912013-10-0144535810.20473/ijtid.v4i4.234165APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUSBetty Purnamasari0Franky Arisgraha1Suryani Dyah Astuti2Bachelor of Biomedical Engineering Study Program, Physics Department, Faculty of Science and Technology, Universitas AirlanggaBiomedical Engineering, Physics Department, Faculty of Science and Technology, Universitas AirlanggaPhysics, Physics Department, Faculty of Science and Technology, Universitas AirlanggaBackground: Typhus is a disease caused by Salmonella typhi, Salmonella paratyphi A Salmonella parathypi B, dan Salmonella paratyphi C bacteria that attacks digestive tract and caused infection in small intestine. The common test that performed in the laboratory is widal test. The result reading of the widal test still processed manually with looking the turbidity caused by the agglutination. Aim: The research was made to decrease human error by creating a program based on artificial neural network (ANN) with learning vector quantization (LVQ) method. Method: Input of this program is image of blood serum that has reacted with widal reagen. Image procesing start with grayscaling, filtering, and thresholding. Result: Output of this program is divided into two classes, normal and typhus detected. Conclusion: From this experiment result that using 24 testing data, gives the accuracy of this program 95.833% with 1 error result from 24 testing data.https://e-journal.unair.ac.id/IJTID/article/view/234
collection DOAJ
language English
format Article
sources DOAJ
author Betty Purnamasari
Franky Arisgraha
Suryani Dyah Astuti
spellingShingle Betty Purnamasari
Franky Arisgraha
Suryani Dyah Astuti
APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS
Indonesian Journal of Tropical and Infectious Disease
author_facet Betty Purnamasari
Franky Arisgraha
Suryani Dyah Astuti
author_sort Betty Purnamasari
title APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS
title_short APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS
title_full APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS
title_fullStr APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS
title_full_unstemmed APPLICATION OF NEURAL NETWORKS ON BLOOD SERUM IMAGE FOR EARLY DETECTION OF TYPHUS
title_sort application of neural networks on blood serum image for early detection of typhus
publisher Universitas Airlangga
series Indonesian Journal of Tropical and Infectious Disease
issn 2085-1103
2356-0991
publishDate 2013-10-01
description Background: Typhus is a disease caused by Salmonella typhi, Salmonella paratyphi A Salmonella parathypi B, dan Salmonella paratyphi C bacteria that attacks digestive tract and caused infection in small intestine. The common test that performed in the laboratory is widal test. The result reading of the widal test still processed manually with looking the turbidity caused by the agglutination. Aim: The research was made to decrease human error by creating a program based on artificial neural network (ANN) with learning vector quantization (LVQ) method. Method: Input of this program is image of blood serum that has reacted with widal reagen. Image procesing start with grayscaling, filtering, and thresholding. Result: Output of this program is divided into two classes, normal and typhus detected. Conclusion: From this experiment result that using 24 testing data, gives the accuracy of this program 95.833% with 1 error result from 24 testing data.
url https://e-journal.unair.ac.id/IJTID/article/view/234
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