Wei Dongyue, Gu Tijun, Yi Chunhua, Tang Yun, Liu Fujing
Department of Pediatrics, The Affiliated Changzhou NO.2 People's Hospital of Nanjing Medical University, Jiangsu, China.
Department of Emergency, The Affiliated Changzhou NO.2 People's Hospital of Nanjing Medical University, Jiangsu, China.
Shock. 2022 Aug 1;58(2):95-102. doi: 10.1097/SHK.0000000000001962. Epub 2022 Jul 24.
Background: No predictive models are currently available to predict poor prognosis in patients with severe heatstroke. We aimed to establish a predictive model to help clinicians identify the risk of death and customize individualized treatment. Methods: The medical records and data of 115 patients with severe heatstroke hospitalized in the intensive care unit of Changzhou No. 2 People's Hospital between June 2013 and September 2019 were retrospectively analyzed for modeling. Furthermore, data of 84 patients with severe heatstroke treated at Jintan No. 1 People's Hospital from June 2013 to 2021 were retrospectively analyzed for external verification of the model. We analyzed the hematological parameters of the patients recorded within 24 h of admission, which included routine blood tests, liver function, renal function, coagulation routine, and myocardial enzyme levels. Risk factors related to death in patients with severe heatstroke were screened using Least Absolute Shrinkage and Selection Operator regression. The independent variable risk ratio for death was investigated using the Cox univariate and multivariate regression analyses. The nomogram was subsequently used to establish a suitable prediction model. A receiver operating characteristic curve was drawn to evaluate the predictive power of the prediction model and the Acute Physiology and Chronic Health Evaluation (APACHE II) score. In addition, decision curve analysis was established to assess the clinical net benefit. The advantages and disadvantages of both models were evaluated using the integrated discrimination improvement and Net Reclassification Index. A calibration curve was constructed to assess predictive power and actual conditions. The external data sets were used to verify the predictive accuracy of the model. Results: All independent variables screened by Least Absolute Shrinkage and Selection Operator regression were independent risk factors for death in patients with severe heatstroke, which included neutrophil/lymphocyte ratio, platelet (PLT), troponin I, creatine kinase myocardial band, lactate dehydrogenase, human serum albumin, D-dimer, and APACHE-II scores. On days 10 and 30, the integrated discrimination improvement of the prediction model established was 0.311 and 0.364 times higher than that of the APACHE-II score, respectively; and the continuous Net Reclassification Index was 0.568 and 0.482 times higher than that of APACHE-II, respectively. Furthermore, we established that the area under the curve (AUC) of the prediction model was 0.905 and 0.918 on days 10 and 30, respectively. Decision curve analysis revealed that the AUC of this model was 7.67% and 10.67% on days 10 and 30, respectively. The calibration curve showed that the predicted conditions suitably fit the actual requirements. External data verification showed that the AUC on day 10 indicated by the prediction model was 0.908 (95% confidence interval, 82.2-99.4), and the AUC on day 30 was 0.930 (95% confidence interval, 0.860-0.999). Conclusion: The survival rate of patients with severe heatstroke within 24 h of admission on days 10 and 30 can be effectively predicted using a simple nomogram; additionally, this nomogram can be used to evaluate risks and make appropriate decisions in clinical settings.
目前尚无预测模型可用于预测重症中暑患者的不良预后。我们旨在建立一个预测模型,以帮助临床医生识别死亡风险并制定个性化治疗方案。方法:回顾性分析2013年6月至2019年9月在常州市第二人民医院重症监护病房住院的115例重症中暑患者的病历和数据进行建模。此外,回顾性分析2013年6月至2021年在金坛区第一人民医院治疗的84例重症中暑患者的数据,对模型进行外部验证。我们分析了患者入院24小时内记录的血液学参数,包括血常规、肝功能、肾功能、凝血常规和心肌酶水平。使用最小绝对收缩和选择算子回归筛选重症中暑患者死亡的危险因素。使用Cox单因素和多因素回归分析研究死亡的自变量风险比。随后使用列线图建立合适的预测模型。绘制受试者工作特征曲线以评估预测模型和急性生理与慢性健康状况评估(APACHE II)评分的预测能力。此外,建立决策曲线分析以评估临床净效益。使用综合判别改善和净重新分类指数评估两种模型的优缺点。构建校准曲线以评估预测能力和实际情况。使用外部数据集验证模型的预测准确性。结果:通过最小绝对收缩和选择算子回归筛选出的所有自变量均为重症中暑患者死亡的独立危险因素,包括中性粒细胞/淋巴细胞比值、血小板(PLT)、肌钙蛋白I、肌酸激酶心肌型同工酶、乳酸脱氢酶、人血清白蛋白、D-二聚体和APACHE-II评分。在第10天和第30天,建立的预测模型的综合判别改善分别比APACHE-II评分高0.311倍和0.364倍;连续净重新分类指数分别比APACHE-II高0.568倍和0.482倍。此外,我们确定预测模型在第10天和第30天的曲线下面积(AUC)分别为0.905和0.918。决策曲线分析显示,该模型在第10天和第30天的AUC分别为7.67%和10.67%。校准曲线表明预测情况与实际要求相符。外部数据验证显示,预测模型在第10天的AUC为0.908(95%置信区间,82.2 - 99.4),第30天的AUC为0.930(95%置信区间,0.860 - 0.999)。结论:使用简单的列线图可以有效预测重症中暑患者入院24小时内第10天和第30天的生存率;此外,该列线图可用于评估风险并在临床环境中做出适当决策。