Develop a web-based system using the Naïve Bayes algorithm to predict asphyxia neonatal

Elviga Arselatifa, Sri Sumarni, Kurnianingsih Kurnianingsih
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引用次数: 0

Abstract

Introduction: Most cases of perinatal asphyxia are caused by conditions unrelated to labor. When asphyxia occurs during childbirth, it is usually caused by an obstetric emergency that was not detected during pregnancy. It is essential to prevent asphyxia by identifying the incidence of asphyxia during pregnancy. Several studies have been conducted to identify asphyxia problems developing by predictive models. However, there has been no development of a system for predicting birth asphyxia during pregnancy and carried out in primary health facilities.Purpose: Develop a web-based system using the Naïve Bayes (NB) algorithm to predict asphyxia neonatal using a dataset of antepartum risk factors in primary health facilities.Methods: This study employed research and development, which consists of 4 stages, namely literature study, development stage, expert validity, and trial.Results: A system that health workers in primary health facilities can use to predict asphyxia neonatal and recommend referrals for determining the place of childbirth has been successfully created. The system performance test predicted asphyxia neonatal with all NB evaluation values reaching more than 98%, and the prediction accuracy in the respondent test included in the High Accuracy category (MAPE value 9.06%).Conclusion: The development of a web-based system using the NB algorithm has been proven to be able to predict asphyxia neonatal and can be implemented for health workers as an effort to anticipate delays in handling cases of asphyxia neonatal because of the predicted results along with recommendations for focusing mothers with the risk of babies born asphyxia to find out possible childbirth places.
利用奈夫贝叶斯算法开发网络系统,预测新生儿窒息情况
导言:大多数围产期窒息是由与分娩无关的情况引起的。当分娩过程中发生窒息时,通常是由孕期未被发现的产科急症引起的。通过确定孕期窒息的发生率来预防窒息至关重要。已有多项研究通过预测模型来识别窒息问题。目的:使用奈伊夫贝叶斯(NB)算法开发一个基于网络的系统,利用基层医疗机构的产前风险因素数据集预测新生儿窒息:本研究采用了研究与开发方法,包括 4 个阶段,即文献研究、开发阶段、专家验证和试用:结果:成功创建了基层医疗机构医务人员可用于预测新生儿窒息并建议转诊以确定分娩地点的系统。系统性能测试预测新生儿窒息的所有 NB 评价值均达到 98% 以上,受访者测试的预测准确率属于高准确率类别(MAPE 值为 9.06%):使用 NB 算法开发的基于网络的系统已被证明能够预测新生儿窒息,并可为卫生工作者实施,以便根据预测结果预测处理新生儿窒息病例的延误,同时建议有新生儿窒息风险的母亲重点关注可能的分娩地点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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13
审稿时长
24 weeks
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