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首页> 外文期刊>Clinical kidney journal. >Use of machine-learning algorithms to determine features of systolic blood pressure variability that predict poor outcomes in hypertensive patients
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Use of machine-learning algorithms to determine features of systolic blood pressure variability that predict poor outcomes in hypertensive patients

机译:使用机器学习算法确定可预测高血压患者预后不良的收缩压变异性特征

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Background We re-analyzed data from the Systolic Blood Pressure Intervention Trial (SPRINT) trial to identify features of systolic blood pressure (SBP) variability that portend poor cardiovascular outcomes using a nonlinear machine-learning algorithm. Methods We included all patients who completed 1?year of the study without reaching any primary endpoint during the first year, specifically: myocardial infarction, other acute coronary syndromes, stroke, heart failure or death from a cardiovascular event ( n =?8799; 94%). In addition to clinical variables, features representing longitudinal SBP trends and variability were determined and combined in a random forest algorithm, optimized using cross-validation, using 70% of patients in the training set. Area under the curve (AUC) was measured using a 30% testing set. Finally, feature importance was determined by minimizing node impurity averaging over all trees in the forest for a specific feature. Results A total of 365 patients (4.1%) reached the combined primary outcome over 37?months of follow-up. The random forest classifier had an AUC of 0.71 on the testing set. The 10 most significant features selected in order of importance by the automated algorithm included the urine albumin/creatinine (CR) ratio, estimated glomerular filtration rate, age, serum CR, history of subclinical cardiovascular disease (CVD), cholesterol, a variable representing SBP signals using wavelet transformation, high-density lipoprotein, the 90th percentile of SBP and triglyceride level. Conclusions We successfully demonstrated use of random forest algorithm to define best prognostic longitudinal SBP representations. In addition to known risk factors for CVD, transformed variables for time series SBP measurements were found to be important in predicting poor cardiovascular outcomes and require further evaluation.
机译:背景我们重新分析了收缩压干预试验(SPRINT)试验中的数据,以识别收缩压(SBP)变异性的特征,这些特征预示了使用非线性机器学习算法的不良心血管预后。方法我们纳入了完成研究1年但未在第一年达到任何主要终点的所有患者,特别是:心肌梗塞,其他急性冠脉综合征,中风,心力衰竭或因心血管事件死亡(n =?8799; 94)。 %)。除了临床变量外,还确定了代表纵向SBP趋势和变异性的特征,并在随机森林算法中进行了组合,并使用交叉验证对最佳森林算法进行了优化,其中使用了训练集中的70%患者。使用30%的测试仪测量曲线下面积(AUC)。最后,通过最小化特定特征在森林中所有树木上的节点杂质平均来确定特征重要性。结果总共365例患者(4.1%)在37个月的随访中达到了合并的主要结局。测试集上的随机森林分类器的AUC为0.71。自动化算法按重要性顺序选择的10个最重要特征包括尿白蛋白/肌酐(CR)比,估计的肾小球滤过率,年龄,血清CR,亚临床心血管疾病(CVD)史,胆固醇,代表SBP的变量使用小波变换,高密度脂蛋白,SBP的第90个百分位数和甘油三酸酯水平检测信号。结论我们成功地证明了使用随机森林算法定义最佳的预后纵向SBP表现。除了已知的CVD危险因素外,发现时间序列SBP测量值的转换变量对于预测不良心血管结果也很重要,需要进一步评估。

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