Farhat Hassan, Makhlouf Ahmed, Gangaram Padarath, El Aifa Kawther, Howland Ian, Babay Ep Rekik Fatma, Abid Cyrine, Khenissi Mohamed Chaker, Castle Nicholas, Al-Shaikh Loua, Khadhraoui Moncef, Gargouri Imed, Laughton James, Alinier Guillaume
Ambulance Service, Hamad Medical Corporation, Doha, Qatar.
Faculty of Sciences, University of Sfax, Sfax, Tunisia.
PLoS One. 2024 May 3;19(5):e0301472. doi: 10.1371/journal.pone.0301472. eCollection 2024.
The global evolution of pre-hospital care systems faces dynamic challenges, particularly in multinational settings. Machine learning (ML) techniques enable the exploration of deeply embedded data patterns for improved patient care and resource optimisation. This study's objective was to accurately predict cases that necessitated transportation versus those that did not, using ML techniques, thereby facilitating efficient resource allocation.
ML algorithms were utilised to predict patient transport decisions in a Middle Eastern national pre-hospital emergency medical care provider. A comprehensive dataset comprising 93,712 emergency calls from the 999-call centre was analysed using R programming language. Demographic and clinical variables were incorporated to enhance predictive accuracy. Random Forest (RF), Support Vector Machine (SVM), Extreme Gradient Boosting (XGBoost), and Adaptive Boosting (AdaBoost) algorithms were trained and validated.
All the trained algorithm models, particularly XGBoost (Accuracy = 83.1%), correctly predicted patients' transportation decisions. Further, they indicated statistically significant patterns that could be leveraged for targeted resource deployment. Moreover, the specificity rates were high; 97.96% in RF and 95.39% in XGBoost, minimising the incidence of incorrectly identified "Transported" cases (False Positive).
The study identified the transformative potential of ML algorithms in enhancing the quality of pre-hospital care in Qatar. The high predictive accuracy of the employed models suggested actionable avenues for day and time-specific resource planning and patient triaging, thereby having potential to contribute to pre-hospital quality, safety, and value improvement. These findings pave the way for more nuanced, data-driven quality improvement interventions with significant implications for future operational strategies.
院前护理系统的全球发展面临动态挑战,在跨国环境中尤为如此。机器学习(ML)技术有助于探索深层嵌入的数据模式,以改善患者护理和资源优化。本研究的目的是使用ML技术准确预测需要转运的病例与不需要转运的病例,从而促进有效的资源分配。
利用ML算法预测中东某国家院前紧急医疗服务提供商的患者转运决策。使用R编程语言分析了一个包含来自999呼叫中心的93712个紧急呼叫的综合数据集。纳入人口统计学和临床变量以提高预测准确性。对随机森林(RF)、支持向量机(SVM)、极端梯度提升(XGBoost)和自适应提升(AdaBoost)算法进行了训练和验证。
所有训练的算法模型,特别是XGBoost(准确率=83.1%),都正确预测了患者的转运决策。此外,它们还显示出具有统计学意义的模式,可用于有针对性的资源部署。此外,特异性率很高;RF为97.96%,XGBoost为95.39%,将错误识别为“已转运”病例(假阳性)的发生率降至最低。
该研究确定了ML算法在提高卡塔尔院前护理质量方面的变革潜力。所采用模型的高预测准确性为按日和时间进行资源规划和患者分诊提供了可行途径,从而有可能提高院前护理的质量、安全性和价值。这些发现为更细致入微、数据驱动的质量改进干预措施铺平了道路,对未来的运营策略具有重大意义。