Sheng Wang, Liu Yang, Tao Hu, Hui Deng, Weiling Tu, Yijie Wu, Linfeng Li
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引用次数: 0
摘要
目的:主动脉夹层(AD)是危及生命的心血管急症。延迟诊断常常导致治疗延误、死亡率升高和并发症。本研究探讨了导致AD误诊的因素,并提出了提高其早期诊断的策略。方法:对801例AD患者进行回顾性分析,选取219例纳入,分为训练组(131例)和验证组(88例)。采用二元logistic回归模型识别影响误诊的因素,并建立Nomogram预测模型。结果:分析显示,诸如症状发作的时间和突发性、典型的背部疼痛、预约就诊和实验室结果(d -二聚体、纤维蛋白原和白细胞计数)等因素在预测误诊方面具有重要意义。Nomogram模型预测准确率较高,训练集的ROC曲线下面积(Area under ROC curve, AUC)为0.924,验证集的AUC为0.912,具有较好的敏感性和特异性。结论:该模型为提高AD病例的诊断准确性和临床结果提供了潜力。
Related factors affecting misdiagnosis of aortic dissection: a single-center retrospective study.
Objective: Aortic dissection (AD) is a life-threatening cardiovascular emergency. Delayed diagnosis frequently leads to treatment delays, elevated mortality, and complications. This study investigates the factors contributing to the misdiagnosis of AD and proposes strategies for improving its early diagnosis.
Methods: A retrospective analysis of 801 patients with AD identified 219 cases for inclusion, which were split into a training set (131 cases) and a validation set (88 cases). A binary logistic regression model was used to identify factors influencing misdiagnosis, while a Nomogram prediction model was developed.
Results: The analysis revealed that factors such as the timing and suddenness of symptom onset, typical back pain, walk-in clinic visits, and laboratory results (D-dimer, fibrinogen, and white blood count) were significant in predicting misdiagnosis. The Nomogram model showed high predictive accuracy with an Area under the ROC curve (AUC) of 0.924 in the training set and 0.912 in the validation set, demonstrating good sensitivity and specificity.
Conclusion: The model offers potential for improving diagnostic accuracy and clinical outcomes in AD cases.
期刊介绍:
Frontiers? Which frontiers? Where exactly are the frontiers of cardiovascular medicine? And who should be defining these frontiers?
At Frontiers in Cardiovascular Medicine we believe it is worth being curious to foresee and explore beyond the current frontiers. In other words, we would like, through the articles published by our community journal Frontiers in Cardiovascular Medicine, to anticipate the future of cardiovascular medicine, and thus better prevent cardiovascular disorders and improve therapeutic options and outcomes of our patients.