Using Perceptual Cycle Model and Text Mining to Investigate Ambulance Traffic Crashes

Subasish Das, Rohit Chakraborty, Abbas Sheykhfard, Boniphace Kutela, Xinyue Ye
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Abstract

Ambulance crashes constitute a matter of utmost concern within public health, posing potential risks to both patients and emergency responders. Despite this critical importance, investigating the underlying causes of these collisions is difficult because of the scarcity of comprehensive and relevant datasets. To bridge this research gap and gain valuable insights, the present study embarked on a mission to shed light on the causative factors behind ambulance-related crashes. To achieve this objective, this study adopted a meticulous approach, collecting narrative descriptions from ten special investigation reports published by the National Highway Traffic Safety Administration. These reports were selected as they offered in-depth accounts of real-life ambulance crashes, rendering them an invaluable resource for analyzing the multifaceted aspects leading to such incidents. Central to this investigation was the utilization of the Perceptual Cycle Model (PCM), a well-established and comprehensive framework that facilitates a systematic examination of the various stages leading to a crash. The study examined the key influential factors associated with ambulance crashes by employing PCM and text mining. The results reveal diverse factors contributing to ambulance crashes, including varied causes, driver actions, and post-crash scenarios, providing a holistic understanding of road safety. The outcomes of this study will bolster the safety of ambulance operations, safeguard patients and personnel, and ensure the efficient delivery of life-saving emergency services to those in need.
利用感知循环模型和文本挖掘调查救护车交通事故
救护车碰撞事故是公共卫生领域最令人担忧的问题,它对患者和急救人员都构成了潜在的风险。尽管救护车碰撞事故至关重要,但由于缺乏全面的相关数据集,调查其根本原因却十分困难。为了弥补这一研究空白并获得有价值的见解,本研究开始着手揭示救护车相关碰撞事故背后的致因。为实现这一目标,本研究采用了一种细致的方法,从美国国家公路交通安全管理局发布的十份特别调查报告中收集叙述性描述。之所以选择这些报告,是因为它们对真实的救护车碰撞事故进行了深入的描述,是分析导致此类事故的多方面因素的宝贵资源。这项调查的核心是使用感知循环模型 (PCM),这是一个成熟而全面的框架,有助于系统地检查导致车祸的各个阶段。该研究通过使用 PCM 和文本挖掘,检查了与救护车碰撞事故相关的关键影响因素。研究结果揭示了导致救护车撞车事故的各种因素,包括各种原因、驾驶员行为和撞车后的情景,为道路安全提供了全面的认识。这项研究的成果将加强救护车的运营安全,保护病人和工作人员的安全,并确保为有需要的人提供高效的救生紧急服务。
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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