老年心血管疾病患者拔牙不良事件的预测危险因素

IF 4.3
Annals of medicine Pub Date : 2025-12-01 Epub Date: 2025-01-02 DOI:10.1080/07853890.2024.2448274
Shaojun Ma, Xu Chen, Yurun Zhai, Xinyi Sun, Jing Sheng, Yun Sun, Haiya Wang
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引用次数: 0

摘要

背景:拔牙是心血管事件的危险因素,尤其是老年患者。然而,迄今为止还没有开发出临床工具来预测拔牙过程中不良事件(ae)的风险。材料与方法:前瞻性纳入774例老年心血管疾病(CVD)患者(年龄≥60岁),计划于2021年1月至2022年7月在上海市第九人民医院口腔外科行拔牙手术。为了确定ae的预测危险因素,我们收集并记录了一般特征、临床信息、体格和影像学检查、心理测试、围手术期特征和手术特征等62个因素。结果:采用单因素logistic回归模型对62个潜在危险因素进行分析,其中21个因素纳入多因素模型(p值均< 0.05)。逐步选择年龄、收缩压、重度高血压、起搏器使用史、卒中、射血分数、瓣膜功能不全、房性早搏、室性早搏、拔牙1颗以上、一般健康问卷-28评分等11个因素纳入预测模型(p值均< 0.05)。试验组曲线下面积为0.893(0.866,0.919),灵敏度为0.878(0.827,0.93),特异度为0.735(0.697,0.773),准确度为0.768(0.736,0.800)。在验证组,这些值分别为0.857(0.760,0.954)、0.938(0.819,1.056)和0.524(0.417,0.631)。我们创建了一个图来预测拔牙过程中发生ae的危险因素。精神状态对不良反应的发生风险起关键作用,血压对不良反应的预测也有关键影响。结论:我们建立并验证了包含11个临床因素的老年CVD患者拔牙时ae的预测模型,该模型效果良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive risk factors for adverse events during tooth extraction among elderly patients with cardiovascular diseases.

Background: Tooth extraction is a risk factor for cardiovascular events, particularly in elderly patients. However, no clinical tool has been developed to date to predict the risk of adverse events (AEs) during tooth extraction.

Materials and methods: We prospectively enrolled 774 elderly patients (aged ≥ 60 years) with cardiovascular disease (CVD) who were scheduled to undergo tooth extraction at the dental surgery department of Shanghai Ninth People's Hospital from January 2021 to July 2022. To determine the predictive risk factors for AEs, we collected and recorded 62 factors on general characteristics, clinical information, physical and imaging examinations, psychological tests, perioperative characteristics, and surgical characteristics.

Results: We used a univariate logistic regression model to explore the 62 potential risk factors and included 21 factors in a multivariate model (all P-values < 0.05). After stepwise selection, 11 factors, including age, systolic blood pressure, severe hypertension, history of pacemaker use, stroke, ejection fraction, valvular insufficiency, atrial premature beats, ventricular premature beats, extraction of more than one tooth and the General Health Questionnaire-28 score, were included in the predictive model (all P-values < 0.05). In the test group, the area under the curve was 0.893 (0.866, 0.919), sensitivity was 0.878 (0.827, 0.93), specificity was 0.735 (0.697, 0.773) and accuracy was 0.768 (0.736, 0.800). In the validation group, these values were 0.857 (0.760, 0.954), 0.938 (0.819, 1.056) and 0.524 (0.417, 0.631), respectively. We created a nomogram to predict the risk factors for AEs during tooth extraction. Mental status plays a critical role in the risk of adverse effects, and the blood pressure also has a key influence on the prediction of adverse effects.

Conclusions: We developed and validated a predictive model with 11 clinical factors for the AEs during tooth extraction in elderly patients with CVD with well efficiency.

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