[Construction and validation of a predictive model for early occurrence of lower extremity deep venous thrombosis in ICU patients with sepsis].

Zhiling Qi, Detao Ding, Cuihuan Wu, Xiuxia Han, Zongqiang Li, Yan Zhang, Qinghe Hu, Cuiping Hao, Fuguo Yang
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Abstract

Objective: To investigate the risk factors of lower extremity deep venous thrombosis (LEDVT) in patients with sepsis during hospitalization in intensive care unit (ICU), and to construct a nomogram prediction model of LEDVT in sepsis patients in the ICU based on the critical care scores combined with inflammatory markers, and to validate its effectiveness in early prediction.

Methods: 726 sepsis patients admitted to the ICU of the Affiliated Hospital of Jining Medical University from January 2015 to December 2021 were retrospectively included as the training set to construct the prediction model. In addition, 213 sepsis patients admitted to the ICU of the Affiliated Hospital of Jining Medical University from January 2022 to June 2023 were retrospectively included as the validation set to verify the performance of the prediction model. Clinical data of patients were collected, such as demographic information, vital signs at the time of admission to the ICU, underlying diseases, past history, various types of scores within 24 hours of admission to the ICU, the first laboratory indexes of admission to the ICU, lower extremity venous ultrasound results, treatment, and prognostic indexes. Lasso regression analysis was used to screen the influencing factors for the occurrence of LEDVT in sepsis patients, and the results of Logistic regression analysis were synthesized to construct a nomogram model. The nomogram model was evaluated by receiver operator characteristic curve (ROC curve), calibration curve, clinical impact curve (CIC) and decision curve analysis (DCA).

Results: The incidence of LEDVT after ICU admission was 21.5% (156/726) in the training set of sepsis patients and 21.6% (46/213) in the validation set of sepsis patients. The baseline data of patients in both training and validation sets were comparable. Lasso regression analysis showed that seven independent variables were screened from 67 parameters to be associated with the occurrence of LEDVT in patients with sepsis. Logistic regression analysis showed that the age [odds ratio (OR) = 1.03, 95% confidence interval (95%CI) was 1.01 to 1.04, P < 0.001], body mass index (BMI: OR = 1.05, 95%CI was 1.01 to 1.09, P = 0.009), venous thromboembolism (VTE) score (OR = 1.20, 95%CI was 1.11 to 1.29, P < 0.001), activated partial thromboplastin time (APTT: OR = 0.98, 95%CI was 0.97 to 0.99, P = 0.009), D-dimer (OR = 1.03, 95%CI was 1.01 to 1.04, P < 0.001), skin or soft-tissue infection (OR = 2.53, 95%CI was 1.29 to 4.98, P = 0.007), and femoral venous cannulation (OR = 3.72, 95%CI was 2.50 to 5.54, P < 0.001) were the independent influences on the occurrence of LEDVT in patients with sepsis. The nomogram model was constructed by combining the above variables, and the ROC curve analysis showed that the area under the curve (AUC) of the nomogram model for predicting the occurrence of LEDVT in patients with sepsis was 0.793 (95%CI was 0.746 to 0.841), and the AUC in the validation set was 0.844 (95%CI was 0.786 to 0.901). The calibration curve showed that its predicted probability was in good agreement with the actual probabilities were in good agreement, and both CIC and DCA curves suggested a favorable net clinical benefit.

Conclusions: The nomogram model based on the critical illness scores combined with inflammatory markers can be used for early prediction of LEDVT in ICU sepsis patients, which helps clinicians to identify the risk factors for LEDVT in sepsis patients earlier, so as to achieve early treatment.

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[构建并验证脓毒症重症监护病房患者下肢深静脉血栓早期发生的预测模型]。
目的研究重症监护病房(ICU)脓毒症患者住院期间下肢深静脉血栓形成(LEDVT)的危险因素,基于重症监护评分结合炎症标志物构建ICU脓毒症患者LEDVT的提名图预测模型,并验证其早期预测的有效性。方法:回顾性纳入2015年1月至2021年12月济宁医科大学附属医院ICU收治的726例脓毒症患者作为构建预测模型的训练集。此外,济宁医科大学附属医院ICU还回顾性纳入了2022年1月至2023年6月收治的213例脓毒症患者作为验证集,以验证预测模型的性能。收集患者的临床资料,如人口统计学资料、入ICU时的生命体征、基础疾病、既往史、入ICU后24小时内的各类评分、入ICU后的首次实验室指标、下肢静脉超声检查结果、治疗情况、预后指标等。采用Lasso回归分析筛选脓毒症患者发生LEDVT的影响因素,并综合Logistic回归分析结果构建提名图模型。通过接收者操作特征曲线(ROC曲线)、校准曲线、临床影响曲线(CIC)和决策曲线分析(DCA)对提名图模型进行评估:结果:脓毒症患者入ICU后LEDVT的发生率在训练集中为21.5%(156/726),在验证集中为21.6%(46/213)。训练集和验证集患者的基线数据具有可比性。Lasso回归分析显示,从67个参数中筛选出7个自变量与脓毒症患者LEDVT的发生有关。逻辑回归分析显示,年龄[几率比(OR)= 1.03,95% 置信区间(95%CI)为 1.01 至 1.04,P < 0.001]、体重指数(BMI:OR = 1.05,95%CI 为 1.01 至 1.09,P = 0.009)、静脉血栓栓塞(VTE)评分(OR = 1.20,95%CI 为 1.11 至 1.29,P <0.001)、活化部分凝血活酶时间(APTT:OR = 0.98,95%CI 为 0.97 至 0.99,P = 0.009)、D-二聚体(OR = 1.03,95%CI 为 1.01 至 1.04,P < 0.001)、皮肤或软组织感染(OR = 2.53,95%CI 为 1.29 至 4.98,P = 0.007)和股静脉插管(OR = 3.72,95%CI 为 2.50 至 5.54,P < 0.001)是脓毒症患者发生 LEDVT 的独立影响因素。ROC曲线分析表明,提名图模型预测脓毒症患者发生LEDVT的曲线下面积(AUC)为0.793(95%CI为0.746至0.841),验证集的AUC为0.844(95%CI为0.786至0.901)。校准曲线显示,其预测概率与实际概率吻合良好,CIC和DCA曲线均显示出良好的临床净获益:基于危重病评分结合炎症标志物的提名图模型可用于 ICU 败血症患者 LEDVT 的早期预测,有助于临床医生更早地识别败血症患者 LEDVT 的危险因素,从而实现早期治疗。
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来源期刊
Zhonghua wei zhong bing ji jiu yi xue
Zhonghua wei zhong bing ji jiu yi xue Medicine-Critical Care and Intensive Care Medicine
CiteScore
1.00
自引率
0.00%
发文量
42
期刊最新文献
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