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Enhancing predictions of patient conveyance using emergency call handler free text notes for unconscious and fainting incidents reported to the London Ambulance Service

机译:使用紧急呼叫处理程序自由文本对伦敦救护服务报告的无意识和晕倒事件的患者运输预测

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Objective: Pre-hospital emergency medical services use clinical decision support systems (CDSS) to triage calls. Call handlers often supplement this by making free text notes covering key incident information. We investigate whether machine learning approaches using features from such free text notes can improve prediction of unconscious patients who require conveyance.Materials and methods: We analysed a subset of all London Ambulance Service calls that were triaged through the Medical Priority Dispatch System (MPDS) as involving an unconscious or fainting patient in 2018. We use and compare two machine learning algorithms: random forest (RF) and gradient boosting machine (GBM). For each incident, we predict whether the patient will be conveyed to a hospital emergency department or equivalent using as features 1) the MPDS code, 2) the free text notes and 3) the two together. We evaluate model performance using the area under the curve (AUC) metric. Given the imbalance of outcomes (patient conveyed 71 %, not conveyed 29 %), we also consider sensitivity and specificity.Results: Using only the MPDS code resulted in an AUC of 0.57. Using the text notes gave an improved AUC score of 0.63 and combining the two gave an AUC score of 0.64 (scores were similar for RF and GBM). GBM models scored better on sensitivity (0.93 vs 0.62 for RF in the combined model), but specificity was lower (0.17 vs. 0.56 for RF in the combined model).Conclusions: Using information contained in the free text notes made by call handlers in combination with MPDS improves prediction of unconscious and fainting patients requiring conveyance to a hospital emergency department (or equivalent) when compared with machine learning models using MPDS codes only. This suggests there is some useful information in unstructured data captured by emergency call handlers that complements MPDS codes. Quantifying this gain can help inform emergency medical service policy when evaluating the decision to expand or augment existing CDSS.
机译:目的:预科预防急救医疗服务使用临床决策支持系统(CDS)进行分类。呼叫处理程序常常通过涵盖涵盖关键事件信息的免费文本说明来补充这一点。我们调查了使用此类自由文本笔记的功能的机器学习方法是否可以提高需要运输的无意识患者的预测。我们分析了通过医疗优先派遣系统(MPDS)的所有伦敦救护服务呼叫的子集。 2018年涉及无意识或晕厥的患者。我们使用并比较两种机器学习算法:随机森林(RF)和梯度升压机(GBM)。对于每种事件,我们预测患者是否会用作特征1)MPDS代码,2)自由文本笔记和3)两者在一起传达给医院急诊部门或等价物。我们使用曲线(AUC)度量下的区域评估模型性能。鉴于结果的不平衡(患者传达71%,未传达29%),我们还考虑敏感性和特异性。结果:仅使用MPDS代码导致0.57的AUC。使用文本笔记得到改善的AUC评分为0.63,组合两个给出了0.64的AUC评分(RF和GBM相似)。 GBM型号在灵敏度(综合模型中的RF 0.93 Vs 0.62的型号更好),但特异性较低(组合模型中的RF为0.17与0.56).Conclusions:使用呼叫处理程序所做的免费文本中包含的信息与MPDS仅与使用MPDS代码的机器学习模型相比,与MPDS的结合可提高需要对医院应急部门(或等同物)的无意识和晕厥患者的预测。这表明在由紧急呼叫处理程序捕获的非结构化数据中存在一些有用的信息,这些数据补充了MPDS代码。量化此增益可以帮助在评估展开或增强现有CDS的决定时通知紧急医疗服务政策。

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