Development of Mobile Application in Assessing Commuting Accident Risk (CommuRisk) Amongst Commuters at Klang Valley

Nur Deana Syafiqah Abdullah, M. R. Mahadi, M. R. Baharudin
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引用次数: 0

Abstract

Introduction: Globally, commuting accident risks are always neglected in an organisation. There is a need to assess the impact of commuting accidents based on sociodemographic, human, vehicle, road, and environmental factors and to find suitable and effective mitigation strategies to alleviate the associated undesirable outcomes. Methods: This research was designed to develop a mobile application to assess commuting accident risk levels using artificial intelligence principles, as we are now in the 21st-century technology era. A total of 216 respondents from private and government industries participated in this study. Besides, to prove the developed application’s effectiveness, the study evaluated the effectiveness of the identified risk factor in determining the level of commuting risks predicted by respondents with the risk level calculated by the mobile application. Results: A major contribution of this paper is the effectiveness and accuracy of a mobile application known as CommuRisk. The app was developed using Android Studio and natively uses Java. There was a significant difference between with and without mobile applications in determining the level of commuting risks, and the effectiveness was proven with a (p-value = 0.001) at a 95% confidence interval with large sample size. Conclusion: Thus, this paper proved the effectiveness and accuracy of a mobile application in calculating risk levels exposed by commuters compared to risk levels predicted by commuters.
移动应用程序在评估巴生谷通勤者通勤事故风险(CommuRisk)中的开发
引言:在全球范围内,通勤事故风险在一个组织中总是被忽视。需要根据社会人口、人类、车辆、道路和环境因素评估通勤事故的影响,并找到合适和有效的缓解策略来缓解相关的不良后果。方法:这项研究旨在开发一个移动应用程序,使用人工智能原理评估通勤事故风险水平,就像我们现在处于21世纪的技术时代一样。共有216名来自私营和政府行业的受访者参与了这项研究。此外,为了证明开发的应用程序的有效性,该研究评估了已识别的风险因素在确定受访者预测的通勤风险水平和移动应用程序计算的风险水平方面的有效性。结果:本文的主要贡献是CommuRisk移动应用程序的有效性和准确性。该应用程序是使用Android Studio开发的,本机使用Java。在确定通勤风险水平方面,有移动应用程序和没有移动应用程序之间存在显著差异,并且在大样本量的95%置信区间下,用a(p值=0.001)证明了有效性。结论:因此,与通勤者预测的风险水平相比,本文证明了移动应用程序在计算通勤者暴露的风险水平方面的有效性和准确性。
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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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
28
期刊介绍: The Malaysian Journal of Medicine and Health Sciences (MJMHS) is published by the Faculty of Medicine and Health Sciences, Universiti Putra Malaysia. The main aim of the MJMHS is to be a premier journal on all aspects of medicine and health sciences in Malaysia and internationally. The focus of the MJMHS will be on results of original scientific research and development, emerging issues and policy analyses pertaining to medical, biomedical and clinical sciences.
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