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一种用于紧急医疗服务(EMS)事件时空预测的新型机器学习方法:来自哥伦比亚巴兰基亚的案例研究。

A novel machine learning approach for spatiotemporal prediction of EMS events: A case study from Barranquilla, Colombia.

作者信息

Neira-Rodado Dionicio, Paz-Roa Juan Camilo, Escobar John Willmer, Ortiz-Barrios Miguel Ángel

机构信息

School of Industrial Engineering, Universidad del Valle, Cali, 760008, Colombia.

Department of Productivity and Innovation, Universidad de la Costa, Barranquilla, 080002, Colombia.

出版信息

Heliyon. 2025 Jan 13;11(2):e41904. doi: 10.1016/j.heliyon.2025.e41904. eCollection 2025 Jan 30.

DOI:10.1016/j.heliyon.2025.e41904
PMID:39897906
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11786830/
Abstract

Anticipating the timing and location of future emergency calls is crucial for making informed decisions about vehicle location and relocation, ultimately reducing response times and enhancing service quality. A predictive model for EMS (Emergency Medical Services) events is proposed to address this need. The proposed spatiotemporal approach integrates machine learning, signal analysis, and statistical features, capturing geographical, temporal, and event-specific factors. The model identifies patterns associated with the occurrence or absence of emergency calls, using clustering techniques for demand spatial splitting and then training an XGBoost model on the multivariate time series. The model uses signal analysis to extract valuable insights from time-series data, enhancing understanding of temporal patterns, while statistical features enhance predictive capabilities. Principal Component Analysis (PCA) enhances convergence and integrates diverse time series features. As a result, this novel integrated approach improves the estimation of spatiotemporal probabilities of emergency events, effectively addressing data sparsity challenges. This framework adapts effectively, predicting EMS zones and guiding system configuration. The model outperforms a Random Forest trained solely on time-series data, boosting accuracy by up to 26.9 % in Barranquilla's case study zones, with a mean improvement of 16.4 %. Accuracy improvement makes the model helpful in assisting city authorities in ambulance location/relocation and dispatching decisions.

摘要

预测未来紧急呼叫的时间和地点对于就车辆位置和重新部署做出明智决策至关重要,最终可减少响应时间并提高服务质量。为满足这一需求,提出了一种针对紧急医疗服务(EMS)事件的预测模型。所提出的时空方法整合了机器学习、信号分析和统计特征,捕捉地理、时间和特定事件因素。该模型使用聚类技术进行需求空间划分,然后在多变量时间序列上训练XGBoost模型,以识别与紧急呼叫发生或未发生相关的模式。该模型利用信号分析从时间序列数据中提取有价值的见解,增强对时间模式的理解,而统计特征则增强预测能力。主成分分析(PCA)提高了收敛性并整合了不同的时间序列特征。因此,这种新颖的综合方法改进了紧急事件时空概率的估计,有效应对了数据稀疏性挑战。该框架适应性强,可预测EMS区域并指导系统配置。在巴兰基亚的案例研究区域中,该模型的表现优于仅基于时间序列数据训练的随机森林,准确率提高了26.9%,平均提高了16.4%。准确率的提高使该模型有助于协助城市当局进行救护车定位/重新部署和调度决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a281/11786830/8c5abfc1e5ab/gr7.jpg
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https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a281/11786830/f231e82a6149/gr1.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a281/11786830/cef50ebffbf4/gr2.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a281/11786830/ab561bb8a194/gr3.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a281/11786830/3ffe7f09fbf2/gr4.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a281/11786830/0c9b4a8b0aff/gr5.jpg
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