Zhu Dongping, Feng Junfei, Guo Jie, Duan Jixian, Yang Yan, Leng Jing
School of Clinical Medicine, Dali University, Dali, China.
Department of Respiratory and Critical Care, the Third People's Hospital of Yunnan Province, Kunming, China.
J Thorac Dis. 2024 Jul 30;16(7):4447-4459. doi: 10.21037/jtd-23-1876. Epub 2024 Jul 25.
The incidence of pulmonary embolism (PE) has been on the rise annually. Despite receiving regular sequential anticoagulation therapy, some patients with non-high-risk acute PE (APE) continue to experience residual pulmonary vascular obstruction (RPVO). This study sought to identify the risk factors for RPVO following 3 months of sequential anticoagulation therapy for non-high-risk PE. Machine learning techniques were utilized to construct a clinical prediction model for predicting the occurrence of RPVO.
A total of 254 acute non-high-risk PE patients were included in this study, all of whom were admitted to the Third People's Hospital of Yunnan Province between 2020 and 2023. After 3 months of regular anticoagulant treatment, computed tomography pulmonary angiography (CTPA) were reviewed to identify the presence of RPVO. Patients were then categorized into either the thrombolysis group or the thrombosis residue group. Throughout the study period, 49 patients were excluded due to missing data, irregular treatment, or loss to follow-up. Clinical symptoms, physical signs, and laboratory results of 205 PE patients were recorded. Correlation and collinearity analyses were conducted on relevant risk factors, and significance tests were performed. Heat maps illustrating the relationships between influencing factors were generated. Predictors were selected using least absolute shrinkage and selection operator (LASSO) regression, followed by multivariate logistic regression analysis to create a predictive model. Internal validation of the model was also carried out.
By searching the literature to understand all the clinical indicators that may affect the efficacy of anticoagulation therapy. A total of 205 patients with non-high-risk acute pulmonary thromboembolism were evaluated for various risk factors. Five independent factors were identified by multivariable analysis-age, chronic obstructive pulmonary disease (COPD), acratia, pulmonary systolic blood pressure (PASP), and major arterial embolism-and their P value, odds ratio (OR) and confidence interval (CI) were as follows: (P=0.012, OR =1.123; 95% CI: 1.026-1.23), (P=0.002, OR =13.30; 95% CI: 2.673-66.188), (P=0.001, OR =14.009; 95% CI: 2.782-70.547), (P=0.003, OR =1.061; 95% CI: 1.020-1.103) and (P<0.001, OR =18.128; 95% CI: 3.853-85.293), which may indicate a poor prognosis after standard anticoagulant therapy. A nomogram was constructed using these variables and internally validated. The receiver operating characteristic (ROC) curves of the model demonstrated strong predictive accuracy, with an area under the curve (AUC) of 0.94 (95% CI: 0.89-0.96) for the training set and 0.93 (95% CI: 0.88-0.95) for the validation set. Calibration curves were utilized to assess the practicality of the nomogram.
A novel predictive model was developed based on a single-center retrospective study to identify patients with RPVO following anticoagulant therapy for acute non-high-risk PE. This model may aid in the early detection of patients, prompt adjustment of treatment, and ultimately lead to a decrease in adverse outcomes.
肺栓塞(PE)的发病率逐年上升。尽管接受了常规序贯抗凝治疗,但一些非高危急性肺栓塞(APE)患者仍持续存在残余肺血管阻塞(RPVO)。本研究旨在确定非高危PE患者序贯抗凝治疗3个月后发生RPVO的危险因素。利用机器学习技术构建临床预测模型,以预测RPVO的发生。
本研究共纳入254例急性非高危PE患者,均于2020年至2023年期间入住云南省第三人民医院。经过3个月的常规抗凝治疗后,复查计算机断层扫描肺动脉造影(CTPA)以确定是否存在RPVO。然后将患者分为溶栓组或血栓残留组。在整个研究期间,49例患者因数据缺失、治疗不规律或失访而被排除。记录205例PE患者的临床症状、体征和实验室检查结果。对相关危险因素进行相关性和共线性分析,并进行显著性检验。生成了说明影响因素之间关系的热图。使用最小绝对收缩和选择算子(LASSO)回归选择预测因子,然后进行多变量逻辑回归分析以创建预测模型。还对模型进行了内部验证。
通过检索文献了解所有可能影响抗凝治疗效果的临床指标。对205例非高危急性肺血栓栓塞患者进行了各种危险因素评估。多变量分析确定了5个独立因素——年龄、慢性阻塞性肺疾病(COPD)、肌力减退、肺动脉收缩压(PASP)和大动脉栓塞——其P值、比值比(OR)和置信区间(CI)如下:(P = 0.012,OR = 1.123;95% CI:1.026 - 1.23),(P = 0.002,OR = 13.30;95% CI:2.673 - 66.188),(P = 0.001,OR = 14.009;95% CI:2.782 - 70.547),(P = 0.003,OR = 1.061;95% CI:1.020 - 1.103)和(P < 0.001,OR = 18.128;95% CI:3.853 - 85.293),这可能表明标准抗凝治疗后预后不良。使用这些变量构建了列线图并进行了内部验证。该模型的受试者工作特征(ROC)曲线显示出很强的预测准确性,训练集的曲线下面积(AUC)为0.94(95% CI:0.89 - 0.96),验证集的AUC为0.93(95% CI:0.88 - 0.95)。使用校准曲线评估列线图的实用性。
基于单中心回顾性研究开发了一种新型预测模型,以识别急性非高危PE抗凝治疗后发生RPVO的患者。该模型可能有助于早期发现患者,及时调整治疗,并最终降低不良结局的发生率。