Research Article
Machine Learning Approach to Extract Diagnostic and Prognostic Thresholds: Application in Prognosis of Cardiovascular Mortality
Table 1
Baseline characteristics.
| | Frequency in percent or median |
| | Demographic variables | | | Men, % () | 32.1 (177) | | Age, years | | | Race, % () | | | Mixed | 73.1 (404) | | Caucasian | 22.2 (122) | | African-Venezuelan | 4 (22) | | Natives | 0.5 (3) | | Use of antihypertensive drugs, % () | 30.9 (170) | | Use of anti-diabetic drugs, % () | 11.1 (61) | | History of cardiovascular disease, % () | 11.5 (63) | | Diagnosis of diabetes mellitus, % () | 18.1 (100) | | Lifestyle, physical and lipid factors | | | Smoking current status, % () | 15.6 (86) | | Drinking current status, % () | 31.6 (174) | | Body max index, kg/m2 | | | Total serum cholesterol, mmol/L | | | 24-hour ambulatory measurements | | | Systolic blood pressure, mm Hg | | | Diastolic blood pressure, mm Hg | | | Heart rate, bpm | |
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