The Journal of Clinical Hypertension (Apr 2024)
Nomogram‐based risk assessment model for left ventricular hypertrophy in patients with essential hypertension: Incorporating clinical characteristics and biomarkers
Abstract
Abstract Left ventricular hypertrophy (LVH) is a hypertensive heart disease that significantly escalates the risk of clinical cardiovascular events. Its etiology potentially incorporates various clinical attributes such as gender, age, and renal function. From mechanistic perspective, the remodeling process of LVH can trigger increment in certain biomarkers, notably sST2 and NT‐proBNP. This multicenter, retrospective study aimed to construct an LVH risk assessment model and identify the risk factors. A total of 417 patients with essential hypertension (EH), including 214 males and 203 females aged 31–80 years, were enrolled in this study; of these, 161 (38.6%) were diagnosed with LVH. Based on variables demonstrating significant disparities between the LVH and Non‐LVH groups, three multivariate stepwise logistic regression models were constructed for risk assessment: the “Clinical characteristics” model, the “Biomarkers” model (each based on their respective variables), and the “Clinical characteristics + Biomarkers” model, which amalgamated both sets of variables. The results revealed that the “Clinical characteristics + Biomarkers” model surpassed the baseline models in performance (AUC values of the “Clinical characteristics + Biomarkers” model, the “Biomarkers” model, and the “Clinical characteristics” model were .83, .75, and .74, respectively; P < .0001 for both comparisons). The optimized model suggested that being female (OR: 4.26, P <.001), being overweight (OR: 1.88, p = .02) or obese (OR: 2.36, p = .02), duration of hypertension (OR: 1.04, P = .04), grade III hypertension (OR: 2.12, P < .001), and sST2 (log‐transformed, OR: 1.14, P < .001) were risk factors, while eGFR acted as a protective factor (OR: .98, P = .01). These findings suggest that the integration of clinical characteristics and biomarkers can enhance the performance of LVH risk assessment.
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