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Predicting long-term cardiovascular risk using the mayo clinic cardiovascular risk score in a referral population

机译:使用mayo临床心血管疾病风险评分对转诊人群进行长期心血管疾病风险预测

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摘要

Exercise testing provides valuable information but is rarely integrated to derive a risk prediction model in a referral population. In this study, we assessed the predictive value of conventional cardiovascular risk factors and exercise test parameters in 6,546 consecutive adults referred for exercise testing, who were followed for a period of 8.1 ± 3.7 years for incident myocardial infarction, coronary revascularization, and cardiovascular death. A risk prediction model was developed, and cross-validation of model was performed by splitting the data set into 10 equal random subsets, with model fitting based on 9 of the 10 subsets and testing in of the remaining subset, repeated in all 10 possible ways. The best performing model was chosen based on measurements of model discrimination and stability. A risk score was constructed from the final model, with points assigned for the presence of each predictor based on the regression coefficients. Using both conventional risk factors and exercise test parameters, a total of 9 variables were identified as independent and robust predictors and were included in a risk score. The prognostic ability of this model was compared with that of the Adult Treatment Panel III model using the net reclassification and integrated discrimination index. From the cross-validation results, the c statistic of 0.77 for the final model indicated strong predictive power. In conclusion, we developed, tested, and internally validated a novel risk prediction model using exercise treadmill testing parameters.
机译:运动测试可提供有价值的信息,但很少集成以得出推荐人群中的风险预测模型。在这项研究中,我们评估了常规心血管危险因素和运动测试参数在6,546名连续进行运动测试的成年人中的预测价值,这些成年人因发生心肌梗塞,冠状动脉血运重建和心血管死亡而接受了8.1±3.7年的随访。开发了风险预测模型,然后通过将数据集划分为10个相等的随机子集进行交叉验证,并基于10个子集中的9个对模型进行拟合,并测试其余子集中的情况,并以所有10种可能的方式重复进行。根据对模型辨别力和稳定性的测量结果选择性能最佳的模型。从最终模型构建风险评分,并根据回归系数为每个预测变量的存在分配点。使用常规风险因素和运动测试参数,总共确定了9个变量作为独立和可靠的预测变量,并包括在风险评分中。使用净重分类和综合区分指数,将该模型的预后能力与成人治疗小组III的预后能力进行了比较。从交叉验证的结果来看,最终模型的c统计量为0.77表明具有强大的预测能力。总之,我们使用跑步机测试参数开发,测试和内部验证了新型风险预测模型。

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