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首页> 外文期刊>Scandinavian Journal of Trauma, Resuscitation and Emergency Medicine >Trends in reasons for emergency calls during the COVID-19 crisis in the department of Gironde, France using artificial neural network for natural language classification
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Trends in reasons for emergency calls during the COVID-19 crisis in the department of Gironde, France using artificial neural network for natural language classification

机译:在法国吉龙危机部门的Covid-19危机期间应急呼叫的原因趋势使用人工神经网络进行自然语言分类

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During periods such as the COVID-19 crisis, there is a need for responsive public health surveillance indicators in order to monitor both the epidemic growth and potential public health consequences of preventative measures such as lockdown. We assessed whether the automatic classification of the content of calls to emergency medical communication centers could provide relevant and responsive indicators. We retrieved all 796,209 free-text call reports from the emergency medical communication center of the Gironde department, France, between 2018 and 2020. We trained a natural language processing neural network model with a mixed unsupervised/supervised method to classify all reasons for calls in 2020. Validation and parameter adjustment were performed using a sample of 39,907 manually-coded free-text reports. The number of daily calls for flu-like symptoms began to increase from February 21, 2020 and reached an unprecedented level by February 28, 2020 and peaked on March 14, 2020, 3?days before lockdown. It was strongly correlated with daily emergency room admissions, with a delay of 14?days. Calls for chest pain and stress and anxiety, peaked 12?days later. Calls for malaises with loss of consciousness, non-voluntary injuries and alcohol intoxications sharply decreased, starting one month before lockdown. No noticeable trends in relation to lockdown was found for other groups of reasons including gastroenteritis and abdominal pain, stroke, suicide and self-harm, pregnancy and delivery problems. The first wave of the COVID-19 crisis came along with increased levels of stress and anxiety but no increase in alcohol intoxication and violence. As expected, call related to road traffic crashes sharply decreased. The sharp decrease in the number of calls for malaise was more surprising. The content of calls to emergency medical communication centers is an efficient epidemiological surveillance data source that provides insights into the societal upheavals induced by a health crisis. The use of an automatic classification system using artificial intelligence makes it possible to free itself from the context that could influence a human coder, especially in a crisis situation. The COVID-19 crisis and/or lockdown induced deep modifications in the population health profile.
机译:在诸如Covid-19危机的期间,需要响应性公共卫生监测指标,以监测流行病的增长和潜在的公共卫生后果,例如锁定。我们评估了对紧急医疗中心的呼叫内容的自动分类是否可以提供相关和响应的指标。我们从2018年至2020年之间检索了来自法国吉伦特省紧急医疗通信中心的所有796,209次自由文本呼叫报告。我们培训了一种用混合无监督/监督的方法进行了一种自然语言处理神经网络模型,以对呼叫的所有原因进行分类2020.使用39,907手动编码的自由文本报告的样本进行验证和参数调整。流感样症状的日常呼吁的数量从2020年2月21日开始增加,到2020年2月28日,2020年2月28日达到前所未有的水平,并于2020年3月14日达到峰值3.锁定前的天数。它与日常急诊室入学强烈相关,延迟14天。要求胸痛和压力和焦虑,达到12天后。在锁定前一个月开始,在一个月起到一个月开始,呼吁丢失意识,非自愿伤害和酒精中的毒害。对于其他一系列原因,没有明显与锁定有关的明显趋势,包括胃肠炎和腹痛,中风,自杀以及自我危害,怀孕和交付问题。第一波Covid-19危机随着压力和焦虑的增加而增加,但没有增加酒精毒害和暴力。正如预期的那样,与道路交通有关的呼叫崩溃大幅下降。萎靡不振的呼叫数量急剧更令人惊讶。对紧急医疗通信中心的呼叫内容是一个有效的流行病学监督数据源,提供了对健康危机引起的社会动荡的见解。使用人工智能的自动分类系统的使用使得可以从可能影响人类编码者的上下文中释放自己,特别是在危机情况下。 Covid-19危机和/或锁定诱导人口健康状况的深层修改。

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