Hypertension and depression,
as 2 major public health issues, are closely related. For patients having
hypertension, in particular, depression is a risk factor for mortality and jeopardizes their wellbeing. The aim of the study is to apply support vector machine (SVM) learning to blood tests and vital signs to classify patients having
hypertension complicated by depression and patients having
hypertension alone for the identification of novel markers.Data on patients having both
hypertension and depression (nā=ā147) and patients having
hypertension alone (nā=ā147) were obtained from electronic medical records of admissions containing the records on blood tests and vital signs. Using SVM, we distinguished patients having both
hypertension and depression from gender- and age-matched patients having
hypertension alone.SVM-based classification achieved 73.5% accuracy by 10-fold cross-validation between patients having both
hypertension and depression and those having
hypertension alone. Twelve features were selected to compose the optimal feature sets, including body temperature (T),
glucose (GLU),
creatine kinase (CK),
albumin (ALB),
hydroxybutyrate dehydrogenase (HBDH), blood
urea nitrogen (BUN),
uric Acid (UA),
creatinine (Crea),
cholesterol (TC), total
protein (TP), pulse (P), and respiration (R).SVM can be used to distinguish patients having both
hypertension and depression from those having
hypertension alone. A significant association was identified between depression and blood tests and vital signs. This approach can be helpful for clinical diagnosis of depression, but further studies are needed to verify the role of these candidate markers for depression diagnosis.