Zeng Jinping, Zhang Min, Du Jiaolan, Han Junde, Song Qin, Duan Ting, Yang Jun, Wu Yinyin
Department of Epidemiology and Health Statistics, School of Public Health, Hangzhou Normal University, Hangzhou, China.
Department of Occupational and Environmental Health, School of Public Health, Hangzhou Normal University, Hangzhou, China.
Front Pharmacol. 2024 May 23;15:1361923. doi: 10.3389/fphar.2024.1361923. eCollection 2024.
Patients with acute tubular necrosis (ATN) not only have severe renal failure, but also have many comorbidities, which can be life-threatening and require timely treatment. Identifying the influencing factors of ATN and taking appropriate interventions can effectively shorten the duration of the disease to reduce mortality and improve patient prognosis. Mortality prediction models were constructed by using the random survival forest (RSF) algorithm and the Cox regression. Next, the performance of both models was assessed by the out-of-bag (OOB) error rate, the integrated brier score, the prediction error curve, and area under the curve (AUC) at 30, 60 and 90 days. Finally, the optimal prediction model was selected and the decision curve analysis and nomogram were established. : RSF model was constructed under the optimal combination of parameters (mtry = 10, nodesize = 88). Vasopressors, international normalized ratio (INR)_min, chloride_max, base excess_min, bicarbonate_max, anion gap_min, and metastatic solid tumor were identified as risk factors that had strong influence on mortality in ATN patients. Uni-variate and multivariate regression analyses were used to establish the Cox regression model. Nor-epinephrine, vasopressors, INR_min, severe liver disease, and metastatic solid tumor were identified as important risk factors. The discrimination and calibration ability of both predictive models were demonstrated by the OOB error rate and the integrated brier score. However, the prediction error curve of Cox regression model was consistently lower than that of RSF model, indicating that Cox regression model was more stable and reliable. Then, Cox regression model was also more accurate in predicting mortality of ATN patients based on the AUC at different time points (30, 60 and 90 days). The analysis of decision curve analysis shows that the net benefit range of Cox regression model at different time points is large, indicating that the model has good clinical effectiveness. Finally, a nomogram predicting the risk of death was created based on Cox model. The Cox regression model is superior to the RSF algorithm model in predicting mortality of patients with ATN. Moreover, the model has certain clinical utility, which can provide clinicians with some reference basis in the treatment of ATN and contribute to improve patient prognosis.
急性肾小管坏死(ATN)患者不仅患有严重的肾衰竭,还伴有许多合并症,这些合并症可能危及生命,需要及时治疗。识别ATN的影响因素并采取适当干预措施可以有效缩短病程,降低死亡率,改善患者预后。使用随机生存森林(RSF)算法和Cox回归构建死亡率预测模型。接下来,通过袋外(OOB)错误率、综合Brier评分、预测误差曲线以及30、60和90天时的曲线下面积(AUC)评估两个模型的性能。最后,选择最佳预测模型并建立决策曲线分析和列线图。:在参数的最佳组合(mtry = 10,节点大小 = 88)下构建RSF模型。血管升压药、国际标准化比值(INR)_min、氯_max、碱剩余_min、碳酸氢盐_max、阴离子间隙_min和转移性实体瘤被确定为对ATN患者死亡率有强烈影响的危险因素。使用单变量和多变量回归分析建立Cox回归模型。去甲肾上腺素、血管升压药、INR_min、严重肝病和转移性实体瘤被确定为重要危险因素。两个预测模型的辨别和校准能力通过OOB错误率和综合Brier评分得到证明。然而Cox回归模型的预测误差曲线始终低于RSF模型,表明Cox回归模型更稳定可靠。然后,基于不同时间点(30、60和90天)的AUC,Cox回归模型在预测ATN患者死亡率方面也更准确。决策曲线分析表明,Cox回归模型在不同时间点的净效益范围较大,表明该模型具有良好的临床有效性。最后,基于Cox模型创建了预测死亡风险的列线图。在预测ATN患者死亡率方面,Cox回归模型优于RSF算法模型。此外,该模型具有一定的临床实用性,可为临床医生治疗ATN提供一些参考依据,有助于改善患者预后。