Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network
Pre-eclampsia still dominates maternal mortality cases in Indonesia. One effort that can be done is to establish early detection of the risk of pre-eclampsia in pregnant women. Automated devices with high accuracy are needed to detect the risk of pre-eclampsia so that the maternal mortality ratio ca...
Saved in:
Main Authors: | , , |
---|---|
Format: | Article PeerReviewed |
Language: | English English English |
Published: |
Kassel University Press
2019
|
Subjects: | |
Online Access: | http://repository.unair.ac.id/100485/1/7.%20Early%20Risk%20Detection%20of%20Pre-eclampsia%20for%20Pregnant%20women%20using%20Artificial%20Neural%20Network.pdf http://repository.unair.ac.id/100485/2/Early%20Risk%20Detection.pdf http://repository.unair.ac.id/100485/3/Early%20Risk%20Detection%20of%20Pre-eclampsia%20for%20Pregnant%20women%20using%20Artificial%20Neural%20Network.pdf http://repository.unair.ac.id/100485/ https://online-journals.org/index.php/i-joe/article/view/9680 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Universitas Airlangga |
Language: | English English English |
id |
id-langga.100485 |
---|---|
record_format |
dspace |
spelling |
id-langga.1004852020-10-28T02:59:40Z http://repository.unair.ac.id/100485/ Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network Endah Purwanti Ichroom Septa Preswari Ernawati R Medicine (General) RG Gynecology and obstetrics Pre-eclampsia still dominates maternal mortality cases in Indonesia. One effort that can be done is to establish early detection of the risk of pre-eclampsia in pregnant women. Automated devices with high accuracy are needed to detect the risk of pre-eclampsia so that the maternal mortality ratio can be reduced. This study aims to design an early detection system for the risk of pre-eclampsia based on artificial neural networks. The system is designed with 11 input parameters in the form of risk factors and output in the form of positive or negative risk of pre-eclampsia. The classification tool used in this study is backpropagation neural network with cross validation scenario at the training stage. The advantage of this system is the weighting of risk factor parameters by obstetric and gynecology specialists so that the results of testing the device show high accuracy. In addition, the device for early detection of pre-eclampsia was also conducted by user acceptance tests for a number of pregnant women. Kassel University Press 2019 Article PeerReviewed text en http://repository.unair.ac.id/100485/1/7.%20Early%20Risk%20Detection%20of%20Pre-eclampsia%20for%20Pregnant%20women%20using%20Artificial%20Neural%20Network.pdf text en http://repository.unair.ac.id/100485/2/Early%20Risk%20Detection.pdf text en http://repository.unair.ac.id/100485/3/Early%20Risk%20Detection%20of%20Pre-eclampsia%20for%20Pregnant%20women%20using%20Artificial%20Neural%20Network.pdf Endah Purwanti and Ichroom Septa Preswari and Ernawati (2019) Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network. International Journal of Online and Biomedical Engineering, 15 (2). pp. 71-80. ISSN 1861-2121 https://online-journals.org/index.php/i-joe/article/view/9680 10.3991/ijoe.v15i02.9680 |
institution |
Universitas Airlangga |
building |
Universitas Airlangga Library |
continent |
Asia |
country |
Indonesia Indonesia |
content_provider |
Universitas Airlangga Library |
collection |
UNAIR Repository |
language |
English English English |
topic |
R Medicine (General) RG Gynecology and obstetrics |
spellingShingle |
R Medicine (General) RG Gynecology and obstetrics Endah Purwanti Ichroom Septa Preswari Ernawati Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network |
description |
Pre-eclampsia still dominates maternal mortality cases in Indonesia. One effort that can be done is to establish early detection of the risk of pre-eclampsia in pregnant women. Automated devices with high accuracy are needed to detect the risk of pre-eclampsia so that the maternal mortality ratio can be reduced. This study aims to design an early detection system for the risk of pre-eclampsia based on artificial neural networks. The system is designed with 11 input parameters in the form of risk factors and output in the form of positive or negative risk of pre-eclampsia. The classification tool used in this study is backpropagation neural network with cross validation scenario at the training stage. The advantage of this system is the weighting of risk factor parameters by obstetric and gynecology specialists so that the results of testing the device show high accuracy. In addition, the device for early detection of pre-eclampsia was also conducted by user acceptance tests for a number of pregnant women. |
format |
Article PeerReviewed |
author |
Endah Purwanti Ichroom Septa Preswari Ernawati |
author_facet |
Endah Purwanti Ichroom Septa Preswari Ernawati |
author_sort |
Endah Purwanti |
title |
Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network |
title_short |
Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network |
title_full |
Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network |
title_fullStr |
Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network |
title_full_unstemmed |
Early Risk Detection of Pre-eclampsia for Pregnant Women Using Artificial Neural Network |
title_sort |
early risk detection of pre-eclampsia for pregnant women using artificial neural network |
publisher |
Kassel University Press |
publishDate |
2019 |
url |
http://repository.unair.ac.id/100485/1/7.%20Early%20Risk%20Detection%20of%20Pre-eclampsia%20for%20Pregnant%20women%20using%20Artificial%20Neural%20Network.pdf http://repository.unair.ac.id/100485/2/Early%20Risk%20Detection.pdf http://repository.unair.ac.id/100485/3/Early%20Risk%20Detection%20of%20Pre-eclampsia%20for%20Pregnant%20women%20using%20Artificial%20Neural%20Network.pdf http://repository.unair.ac.id/100485/ https://online-journals.org/index.php/i-joe/article/view/9680 |
_version_ |
1683497776720117760 |