[建立脓毒症相关急性肾损伤死亡预测模型]。

Q3 Medicine
Xiaohan Li, Changju Zhu, Chao Lan, Qi Liu
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Data of SA-AKI patients were screened from the eICU-CRD database, including demographic characteristics, medical history, SA-AKI type, Kidney Disease: Improving Global Outcomes (KDIGO)-AKI staging, severity of illness scores, vital signs, laboratory indicators, and treatment measures; with admission time as the observation start point, death as the outcome event, and a follow-up time of 30 days. Relevant variables of patients with different 30-day prognoses were compared. Univariate Logistic regression analysis and multivariate Logistic regression forward likelihood ratio analysis were used to screen for risk factors associated with 30-day death in SA-AKI patients, and a predictive model nomogram was constructed. Receiver operator characteristic curve (ROC curve), calibration curve, and Hosmer-Lemeshow test were used to validate the predictive performance of the model.</p><p><strong>Results: </strong>A total of 201 SA-AKI patients' data were finally enrolled, among which 51 survived for 30 days and 150 died, with a mortality of 74.63%. Compared with the survival group, patients in the death group were older [years old: 68 (60, 78) vs. 59 (52, 69), P < 0.01], had lower body weight, proportion of transient SA-AKI, platelet count (PLT) and blood glucose [body weight (kg): 79 (65, 95) vs. 91 (71, 127), proportion of transient SA-AKI: 61.33% (92/150) vs. 82.35% (42/51), PLT (×10<sup>9</sup>/L): 207 (116, 313) vs. 260 (176, 338), blood glucose (mmol/L): 5.5 (4.4, 7.1) vs. 6.4 (5.1, 7.6), all P < 0.05] and higher proportion of persistent SA-AKI, sequential organ failure assessment (SOFA) score, lactic acid (Lac), and total bilirubin [TBil; proportion of persistent SA-AKI: 38.67% (58/150) vs. 17.65% (9/51), SOFA score: 7 (5, 22) vs. 5 (2, 7), Lac (mmol/L): 0.4 (0.2, 0.7) vs. 0.3 (0.2, 0.4), TBil (μmol/L): 41.0 (17.1, 51.3) vs. 18.8 (17.1, 34.2), all P < 0.05]. Univariate Logistic regression analysis showed that age [odds ratio (OR) = 1.035, 95% confidence interval (95%CI) was 1.013-1.058, P = 0.002], body weight (OR = 0.987, 95%CI was 0.977-0.996, P = 0.007), persistent SA-AKI (OR = 2.942, 95%CI was 1.333-6.491, P = 0.008), SOFA score (OR = 1.073, 95%CI was 1.020-1.129, P = 0.006), PLT (OR = 0.998, 95%CI was 0.996-1.000, P = 0.034), Lac (OR = 1.142, 95%CI was 1.009-1.292, P = 0.035), TBil (OR = 1.422, 95%CI was 1.070-1.890, P = 0.015) were associated with 30-day death risk in SA-AKI patients. Multivariate Logistic regression forward likelihood ratio analysis showed that age (OR = 1.051, 95%CI was 1.023-1.079, P = 0.000), body weight (OR = 0.985, 95%CI was 0.974-0.995, P = 0.005), cardiovascular disease (OR = 9.055, 95%CI was 1.037-79.084, P = 0.046), persistent SA-AKI (OR = 3.020, 95%CI was 1.258-7.249, P = 0.013), SOFA score (OR = 1.076, 95%CI was 1.013-1.143, P = 0.017), and PLT (OR = 0.997, 95%CI was 0.995-1.000, P = 0.030) were independent risk factors for 30-day death in SA-AKI patients. Based on the above risk factors, a predictive model nomogram for 30-day death in SA-AKI patients was constructed. ROC curve analysis showed that the area under the ROC curve (AUC) of the model was 0.798 (95%CI was 0.722-0.873), with a sensitivity of 86.7% and a specificity of 62.7%. Calibration curve showed that the fitted curve was close to the standard line, indicating that the predicted probability was close to the actual probability, suggesting good predictive performance of the model. Hosmer-Lemeshow test showed χ <sup>2</sup> = 6.393, df = 8, P = 0.603 > 0.05, suggesting that the model could fit the observed data well. The quality of model fitting was judged by the accuracy of model prediction. The results showed that the prediction accuracy rate of the model was 95.3%, and the overall prediction accuracy rate of the model was 81.6%, indicating good model fitting.</p><p><strong>Conclusions: </strong>A predictive model for 30-day death in SA-AKI patients based on risk factors can be successfully constructed, and the model has high accuracy, sensitivity, reliability, and certain specificity, which can help to early identify high-risk patients for death and adopt more proactive treatment strategies.</p>","PeriodicalId":24079,"journal":{"name":"Zhonghua wei zhong bing ji jiu yi xue","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"[Construction of a predictive model of death for sepsis-associated acute kidney injury].\",\"authors\":\"Xiaohan Li, Changju Zhu, Chao Lan, Qi Liu\",\"doi\":\"10.3760/cma.j.cn121430-20240130-00098\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objective: </strong>To establish a predictive model nomogram for 30-day death in patients with sepsis-associated acute kidney injury (SA-AKI) by using the data from the large international database, the Electronic Intensive Care Unit-Collaborative Research Database (eICU-CRD), and to validate its predictive performance.</p><p><strong>Methods: </strong>A retrospective cohort study was conducted using data from the eICU-CRD. Data of SA-AKI patients were screened from the eICU-CRD database, including demographic characteristics, medical history, SA-AKI type, Kidney Disease: Improving Global Outcomes (KDIGO)-AKI staging, severity of illness scores, vital signs, laboratory indicators, and treatment measures; with admission time as the observation start point, death as the outcome event, and a follow-up time of 30 days. Relevant variables of patients with different 30-day prognoses were compared. Univariate Logistic regression analysis and multivariate Logistic regression forward likelihood ratio analysis were used to screen for risk factors associated with 30-day death in SA-AKI patients, and a predictive model nomogram was constructed. Receiver operator characteristic curve (ROC curve), calibration curve, and Hosmer-Lemeshow test were used to validate the predictive performance of the model.</p><p><strong>Results: </strong>A total of 201 SA-AKI patients' data were finally enrolled, among which 51 survived for 30 days and 150 died, with a mortality of 74.63%. 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Univariate Logistic regression analysis showed that age [odds ratio (OR) = 1.035, 95% confidence interval (95%CI) was 1.013-1.058, P = 0.002], body weight (OR = 0.987, 95%CI was 0.977-0.996, P = 0.007), persistent SA-AKI (OR = 2.942, 95%CI was 1.333-6.491, P = 0.008), SOFA score (OR = 1.073, 95%CI was 1.020-1.129, P = 0.006), PLT (OR = 0.998, 95%CI was 0.996-1.000, P = 0.034), Lac (OR = 1.142, 95%CI was 1.009-1.292, P = 0.035), TBil (OR = 1.422, 95%CI was 1.070-1.890, P = 0.015) were associated with 30-day death risk in SA-AKI patients. 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引用次数: 0

摘要

目的利用大型国际数据库--重症监护病房-合作研究电子数据库(eICU-CRD)的数据,建立脓毒症相关急性肾损伤(SA-AKI)患者 30 天死亡预测模型提名图,并验证其预测性能:方法:利用 eICU-CRD 数据进行了一项回顾性队列研究。从 eICU-CRD 数据库中筛选出 SA-AKI 患者的数据,包括人口统计学特征、病史、SA-AKI 类型、肾脏疾病、改善全球预后(KDK)、肾脏疾病和肾脏疾病的预后:入院时间为观察起点,死亡为结局事件,随访时间为 30 天。比较了 30 天预后不同的患者的相关变量。采用单变量 Logistic 回归分析和多变量 Logistic 回归前向似然比分析筛选与 SA-AKI 患者 30 天死亡相关的风险因素,并构建了预测模型提名图。采用接收者操作特征曲线(ROC曲线)、校准曲线和Hosmer-Lemeshow检验来验证模型的预测性能:最终共收集了 201 名 SA-AKI 患者的数据,其中 51 人存活 30 天,150 人死亡,死亡率为 74.63%。与存活组相比,死亡组患者年龄更大[年龄:68(60,78)对 59(52,69),P <0.01],体重、一过性 SA-AKI比例、血小板计数(PLT)和血糖更低[体重(公斤):79(65,95)对 59(52,69),P <0.01]:79 (65, 95) vs. 91 (71, 127),一过性 SA-AKI 比例:61.33% (92/150) vs. 82.35% (42/51),PLT (×109/L): 207 (116, 313) vs. 260 (176, 338),血糖 (mmol/L): 5.5 (4.4, 7.1) vs. 6.4 (5.1, 7.6),所有 P 均 < 0.05],持续性 SA-AKI、序贯器官衰竭评估(SOFA)评分、乳酸(Lac)和总胆红素[TBil;持续性 SA-AKI 比例:38.67% (58/150) vs. 17.65% (9/51),SOFA 评分:7 (5, 22) vs. 5 (2, 7),Lac (mmol/L): 0.4 (0.2, 0.7) vs. 0.3 (0.2, 0.4),TBil (μmol/L): 41.0 (17.1, 51.3) vs. 18.8 (17.1, 34.2),所有 P <0.05]。单变量逻辑回归分析显示,年龄[几率比(OR)= 1.035,95% 置信区间(95%CI)为 1.013-1.058,P = 0.002]、体重(OR = 0.987,95%CI 为 0.977-0.996,P = 0.007)、持续 SA-AKI(OR = 2.942,95%CI 为 1.333-6.491,P = 0.008)、SOFA 评分(OR = 1.073,95%CI 为 1.020-1.129,P = 0.006)、PLT(OR = 0.998,95%CI 为 0.996-1.000,P = 0.034)、Lac(OR = 1.142,95%CI 为 1.009-1.292,P = 0.035)、TBil(OR = 1.422,95%CI 为 1.070-1.890,P = 0.015)与 SA-AKI 患者 30 天死亡风险相关。多变量逻辑回归前向似然比分析显示,年龄(OR = 1.051,95%CI 为 1.023-1.079,P = 0.000)、体重(OR = 0.985,95%CI 为 0.974-0.995,P = 0.005)、心血管疾病(OR = 9.055,95%CI 为 1.037-79.084,P = 0.046)、持续性 SA-AKI(OR = 3.020,95%CI 为 1.258-7.249,P = 0.013)、SOFA 评分(OR = 1.076,95%CI 为 1.013-1.143,P = 0.017)和 PLT(OR = 0.997,95%CI 为 0.995-1.000,P = 0.030)是 SA-AKI 患者 30 天死亡的独立危险因素。根据上述风险因素,构建了SA-AKI患者30天死亡预测模型提名图。ROC 曲线分析显示,该模型的 ROC 曲线下面积(AUC)为 0.798(95%CI 为 0.722-0.873),灵敏度为 86.7%,特异度为 62.7%。校准曲线显示,拟合曲线接近标准线,表明预测概率接近实际概率,表明该模型具有良好的预测性能。Hosmer-Lemeshow 检验显示,χ 2 = 6.393,df = 8,P = 0.603 > 0.05,表明模型能很好地拟合观察到的数据。模型拟合质量的评判标准是模型预测的准确率。结果显示,模型的预测准确率为 95.3%,模型的总体预测准确率为 81.6%,表明模型拟合良好:结论:成功构建了基于危险因素的SA-AKI患者30天死亡预测模型,该模型具有较高的准确性、灵敏度、可靠性和一定的特异性,有助于早期识别死亡高危患者,采取更积极的治疗策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Construction of a predictive model of death for sepsis-associated acute kidney injury].

Objective: To establish a predictive model nomogram for 30-day death in patients with sepsis-associated acute kidney injury (SA-AKI) by using the data from the large international database, the Electronic Intensive Care Unit-Collaborative Research Database (eICU-CRD), and to validate its predictive performance.

Methods: A retrospective cohort study was conducted using data from the eICU-CRD. Data of SA-AKI patients were screened from the eICU-CRD database, including demographic characteristics, medical history, SA-AKI type, Kidney Disease: Improving Global Outcomes (KDIGO)-AKI staging, severity of illness scores, vital signs, laboratory indicators, and treatment measures; with admission time as the observation start point, death as the outcome event, and a follow-up time of 30 days. Relevant variables of patients with different 30-day prognoses were compared. Univariate Logistic regression analysis and multivariate Logistic regression forward likelihood ratio analysis were used to screen for risk factors associated with 30-day death in SA-AKI patients, and a predictive model nomogram was constructed. Receiver operator characteristic curve (ROC curve), calibration curve, and Hosmer-Lemeshow test were used to validate the predictive performance of the model.

Results: A total of 201 SA-AKI patients' data were finally enrolled, among which 51 survived for 30 days and 150 died, with a mortality of 74.63%. Compared with the survival group, patients in the death group were older [years old: 68 (60, 78) vs. 59 (52, 69), P < 0.01], had lower body weight, proportion of transient SA-AKI, platelet count (PLT) and blood glucose [body weight (kg): 79 (65, 95) vs. 91 (71, 127), proportion of transient SA-AKI: 61.33% (92/150) vs. 82.35% (42/51), PLT (×109/L): 207 (116, 313) vs. 260 (176, 338), blood glucose (mmol/L): 5.5 (4.4, 7.1) vs. 6.4 (5.1, 7.6), all P < 0.05] and higher proportion of persistent SA-AKI, sequential organ failure assessment (SOFA) score, lactic acid (Lac), and total bilirubin [TBil; proportion of persistent SA-AKI: 38.67% (58/150) vs. 17.65% (9/51), SOFA score: 7 (5, 22) vs. 5 (2, 7), Lac (mmol/L): 0.4 (0.2, 0.7) vs. 0.3 (0.2, 0.4), TBil (μmol/L): 41.0 (17.1, 51.3) vs. 18.8 (17.1, 34.2), all P < 0.05]. Univariate Logistic regression analysis showed that age [odds ratio (OR) = 1.035, 95% confidence interval (95%CI) was 1.013-1.058, P = 0.002], body weight (OR = 0.987, 95%CI was 0.977-0.996, P = 0.007), persistent SA-AKI (OR = 2.942, 95%CI was 1.333-6.491, P = 0.008), SOFA score (OR = 1.073, 95%CI was 1.020-1.129, P = 0.006), PLT (OR = 0.998, 95%CI was 0.996-1.000, P = 0.034), Lac (OR = 1.142, 95%CI was 1.009-1.292, P = 0.035), TBil (OR = 1.422, 95%CI was 1.070-1.890, P = 0.015) were associated with 30-day death risk in SA-AKI patients. Multivariate Logistic regression forward likelihood ratio analysis showed that age (OR = 1.051, 95%CI was 1.023-1.079, P = 0.000), body weight (OR = 0.985, 95%CI was 0.974-0.995, P = 0.005), cardiovascular disease (OR = 9.055, 95%CI was 1.037-79.084, P = 0.046), persistent SA-AKI (OR = 3.020, 95%CI was 1.258-7.249, P = 0.013), SOFA score (OR = 1.076, 95%CI was 1.013-1.143, P = 0.017), and PLT (OR = 0.997, 95%CI was 0.995-1.000, P = 0.030) were independent risk factors for 30-day death in SA-AKI patients. Based on the above risk factors, a predictive model nomogram for 30-day death in SA-AKI patients was constructed. ROC curve analysis showed that the area under the ROC curve (AUC) of the model was 0.798 (95%CI was 0.722-0.873), with a sensitivity of 86.7% and a specificity of 62.7%. Calibration curve showed that the fitted curve was close to the standard line, indicating that the predicted probability was close to the actual probability, suggesting good predictive performance of the model. Hosmer-Lemeshow test showed χ 2 = 6.393, df = 8, P = 0.603 > 0.05, suggesting that the model could fit the observed data well. The quality of model fitting was judged by the accuracy of model prediction. The results showed that the prediction accuracy rate of the model was 95.3%, and the overall prediction accuracy rate of the model was 81.6%, indicating good model fitting.

Conclusions: A predictive model for 30-day death in SA-AKI patients based on risk factors can be successfully constructed, and the model has high accuracy, sensitivity, reliability, and certain specificity, which can help to early identify high-risk patients for death and adopt more proactive treatment strategies.

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Zhonghua wei zhong bing ji jiu yi xue
Zhonghua wei zhong bing ji jiu yi xue Medicine-Critical Care and Intensive Care Medicine
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