Mahmoodi Mohammad Reza, Baneshi Mohammad Reza, Rastegari Azam
Cardiovascular Research Center & Nutrition Department, School of Health, Kerman University of Medical Sciences. Haft Bagh-E-Alavi Highway, Kerman, Iran.
Research Center for Modeling in Health, Institute for Futures Studies in Health, Kerman University of Medical Sciences, Kerman, Iran.
Ther Adv Endocrinol Metab. 2015 Dec;6(6):258-66. doi: 10.1177/2042018815600641.
We sought to predict occurrence of myocardial infarction (MI) by means of a classification and regression tree (CART) model by conventional risk factors in middle-aged versus elderly (age ⩾65years) diabetic and nondiabetic patients from the Modares Heart Study.
A total of 469 patients were randomly selected and categorized into two groups according to clinical diabetes status. Group I consisted of 238 diabetic patients and group II consisted of 231 nondiabetic patients. Our population was MI positive. The outcome investigated was diabetes mellitus. We used a decision-analytic model to predict the diagnosis of patients with suspected MI.
We constructed 4 predictive patterns using 12 input variables and 1 output variable in terms of their sensitivity, specificity and risk. The differences among patterns were due to inclusion of predictor variables. The CART model suggested different variables of hypertension, mean cell volume, fasting blood sugar, cholesterol, triglyceride and uric acid concentration based on middle-aged and elderly patients at high risk for MI. Levels of biochemical measurements identified as best risk cutoff points. In evaluating the precision of different patterns, sensitivity and specificity were 47.9-84.0% and 56.3-93.0%, respectively.
The CART model is capable of symbolizing interpretable clinical data for confirming and better prediction of MI occurrence in clinic or in hospital. Therefore, predictor variables in pattern could affect the outcome based on age group variable. Hyperglycemia, hypertension, hyperlipidemia and hyperuricemia were serious predictors for occurrence of MI in diabetics.
我们试图通过分类回归树(CART)模型,利用来自莫达雷斯心脏研究的中年与老年(年龄≥65岁)糖尿病和非糖尿病患者的传统危险因素来预测心肌梗死(MI)的发生。
总共随机选择469例患者,并根据临床糖尿病状态分为两组。第一组由238例糖尿病患者组成,第二组由231例非糖尿病患者组成。我们的研究对象为MI阳性。所研究的结局是糖尿病。我们使用决策分析模型来预测疑似MI患者的诊断。
我们使用12个输入变量和1个输出变量,根据其敏感性、特异性和风险构建了4种预测模式。模式之间的差异归因于预测变量的纳入。CART模型根据MI高危的中年和老年患者,提出了高血压、平均细胞体积、空腹血糖、胆固醇、甘油三酯和尿酸浓度等不同变量。生化测量水平被确定为最佳风险临界点。在评估不同模式的精确度时,敏感性和特异性分别为47.9% - 84.0%和56.3% - 93.0%。
CART模型能够将可解释的临床数据进行符号化,以在临床或医院中确认并更好地预测MI的发生。因此,模式中的预测变量可能会根据年龄组变量影响结局。高血糖、高血压、高脂血症和高尿酸血症是糖尿病患者发生MI的重要预测因素。