Almubayyidh Mohammed, Parry-Jones Adrian R, Jenkins David A
Division of Cardiovascular Sciences, Faculty of Biology, Medicine and Health, University of Manchester, Manchester, UK.
Department of Aviation and Marine, Prince Sultan Bin Abdulaziz College for Emergency Medical Services, King Saud University, Riyadh, Saudi Arabia.
BMJ Neurol Open. 2024 Oct 26;6(2):e000878. doi: 10.1136/bmjno-2024-000878. eCollection 2024.
Distinguishing patients with intracerebral haemorrhage (ICH) from other suspected stroke cases in the prehospital setting is crucial for determining the appropriate level of care and minimising the onset-to-treatment time, thereby potentially improving outcomes. Therefore, we developed prehospital prediction models to identify patients with ICH among suspected stroke cases.
Data were obtained from the Field Administration of Stroke Therapy-Magnesium prehospital stroke trial, where paramedics evaluated multiple variables in suspected stroke cases within the first 2 hours from the last known well time. A total of 19 candidate predictors were included to minimise overfitting and were subsequently refined through the backward exclusion of non-significant predictors. We used logistic regression and eXtreme Gradient Boosting (XGBoost) models to evaluate the performance of the predictors. Model performance was assessed using the area under the receiver operating characteristic curve (AUC), confusion matrix metrics and calibration measures. Additionally, models were internally validated and corrected for optimism through bootstrapping. Furthermore, a nomogram was built to facilitate paramedics in estimating the probability of ICH.
We analysed 1649 suspected stroke cases, of which 373 (23%) were finally diagnosed with ICH. From the 19 candidate predictors, 9 were identified as independently associated with ICH (p<0.05). Male sex, arm weakness, worsening neurological status and high systolic blood pressure were positively associated with ICH. Conversely, a history of hyperlipidaemia, atrial fibrillation, coronary artery disease, ischaemic stroke and improving neurological status were associated with other diagnoses. Both logistic regression and XGBoost demonstrated good calibration and predictive performance, with optimism-corrected sensitivities ranging from 47% to 49%, specificities from 89% to 90% and AUCs from 0.796 to 0.801.
Our models demonstrate good predictive performance in distinguishing patients with ICH from other diagnoses, making them potentially useful tools for prehospital ICH management.
在院前环境中将脑出血(ICH)患者与其他疑似中风病例区分开来,对于确定适当的护理水平和缩短发病至治疗时间至关重要,从而有可能改善治疗结果。因此,我们开发了院前预测模型,以在疑似中风病例中识别脑出血患者。
数据来自中风治疗镁剂院前试验的现场管理,急救人员在距最后一次已知健康时间的前2小时内评估疑似中风病例的多个变量。总共纳入了19个候选预测因子以尽量减少过度拟合,随后通过反向排除无显著意义的预测因子进行了优化。我们使用逻辑回归和极端梯度提升(XGBoost)模型来评估预测因子的性能。使用受试者操作特征曲线下面积(AUC)、混淆矩阵指标和校准措施评估模型性能。此外,通过自举法对模型进行内部验证并校正乐观偏差。此外,构建了一个列线图以帮助急救人员估计脑出血的概率。
我们分析了1649例疑似中风病例,其中373例(23%)最终被诊断为脑出血。从19个候选预测因子中,9个被确定与脑出血独立相关(p<0.05)。男性、手臂无力、神经功能状态恶化和高收缩压与脑出血呈正相关。相反,高脂血症、心房颤动、冠状动脉疾病、缺血性中风病史和神经功能状态改善与其他诊断相关。逻辑回归和XGBoost均显示出良好的校准和预测性能,校正乐观偏差后的敏感性范围为47%至49%,特异性范围为89%至90%,AUC范围为0.796至0.801。
我们的模型在区分脑出血患者与其他诊断方面表现出良好的预测性能,使其有可能成为院前脑出血管理的有用工具。