A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy
High-risk pregnancy identification (HRP) involves data interpretation and analysis by experts of pregnancy characteristics, and similar prior experiences; this task can be complex depending on the characteristics of the pregnancy. To facilitate this task in Chile, a prototype system based on knowled...
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Iuliu Hatieganu University of Medicine and Pharmacy, Cluj-Napoca
2017-06-01
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doaj-d878d11a605a4af9b5ba758461babe712020-11-25T02:08:41ZengIuliu Hatieganu University of Medicine and Pharmacy, Cluj-NapocaApplied Medical Informatics2067-78552017-06-01391-2820A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk PregnancyVictor FLORES0Brian KEITH1Diego POBLETE2Claudio LEIVA3Department of Computing & Systems Engineering, Northern Catholic University, Angamos Av. 0610, Antofagasta, ChileDepartment of Computing & Systems Engineering, Northern Catholic University, Angamos Av. 0610, Antofagasta, ChileDepartment of Chemical Engineering, Northern Catholic University, Av. 0610, Antofagasta, ChileDepartment of Chemical Engineering, Northern Catholic University, Av. 0610, Antofagasta, ChileHigh-risk pregnancy identification (HRP) involves data interpretation and analysis by experts of pregnancy characteristics, and similar prior experiences; this task can be complex depending on the characteristics of the pregnancy. To facilitate this task in Chile, a prototype system based on knowledge that, combining the available information (statistical data, background reported in specific papers for pregnancies in Chile and others worldwide, etc.) with the experience of experts, can support physicians in the task of identifying characteristics of risk pregnancies and can help to estimate morbidity in a neonate is proposed. This prototype of intelligent system uses symbolic representation, rules of inference and knowledge (from the expert and previous cases available in the literature), logic programming and a Java interface to generate interpretations of neonatal morbidity. Knowledge of the system is separated into knowledge bases: (i) factors (pathologies) of the mother that influence a pregnancy and (ii) factors related to the evolution of pregnancy. This paper shows how using the development technology of a knowledge-based system with the statistical analysis of data of the Chilean population and expert knowledge has generated a valid tool that can be useful in in the labor of the specialists working with high risk pregnancies.https://ami.info.umfcluj.ro/index.php/AMI/article/view/609Knowledge-based systemHigh-risk pregnancyNeonatal morbidityPregnancy risk factors |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Victor FLORES Brian KEITH Diego POBLETE Claudio LEIVA |
spellingShingle |
Victor FLORES Brian KEITH Diego POBLETE Claudio LEIVA A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy Applied Medical Informatics Knowledge-based system High-risk pregnancy Neonatal morbidity Pregnancy risk factors |
author_facet |
Victor FLORES Brian KEITH Diego POBLETE Claudio LEIVA |
author_sort |
Victor FLORES |
title |
A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy |
title_short |
A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy |
title_full |
A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy |
title_fullStr |
A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy |
title_full_unstemmed |
A Knowledge-Based Prototype to Support the Intelligent Diagnosis of High-Risk Pregnancy |
title_sort |
knowledge-based prototype to support the intelligent diagnosis of high-risk pregnancy |
publisher |
Iuliu Hatieganu University of Medicine and Pharmacy, Cluj-Napoca |
series |
Applied Medical Informatics |
issn |
2067-7855 |
publishDate |
2017-06-01 |
description |
High-risk pregnancy identification (HRP) involves data interpretation and analysis by experts of pregnancy characteristics, and similar prior experiences; this task can be complex depending on the characteristics of the pregnancy. To facilitate this task in Chile, a prototype system based on knowledge that, combining the available information (statistical data, background reported in specific papers for pregnancies in Chile and others worldwide, etc.) with the experience of experts, can support physicians in the task of identifying characteristics of risk pregnancies and can help to estimate morbidity in a neonate is proposed. This prototype of intelligent system uses symbolic representation, rules of inference and knowledge (from the expert and previous cases available in the literature), logic programming and a Java interface to generate interpretations of neonatal morbidity. Knowledge of the system is separated into knowledge bases: (i) factors (pathologies) of the mother that influence a pregnancy and (ii) factors related to the evolution of pregnancy. This paper shows how using the development technology of a knowledge-based system with the statistical analysis of data of the Chilean population and expert knowledge has generated a valid tool that can be useful in in the labor of the specialists working with high risk pregnancies. |
topic |
Knowledge-based system High-risk pregnancy Neonatal morbidity Pregnancy risk factors |
url |
https://ami.info.umfcluj.ro/index.php/AMI/article/view/609 |
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