Literature DB >> 29604170

Developing and validating a new precise risk-prediction model for new-onset hypertension: The Jichi Genki hypertension prediction model (JG model).

Hiroshi Kanegae1,2, Takamitsu Oikawa1, Kenji Suzuki3, Yukie Okawara2, Kazuomi Kario2.   

Abstract

No integrated risk assessment tools that include lifestyle factors and uric acid have been developed. In accordance with the Industrial Safety and Health Law in Japan, a follow-up examination of 63 495 normotensive individuals (mean age 42.8 years) who underwent a health checkup in 2010 was conducted every year for 5 years. The primary endpoint was new-onset hypertension (systolic blood pressure [SBP]/diastolic blood pressure [DBP] ≥ 140/90 mm Hg and/or the initiation of antihypertensive medications with self-reported hypertension). During the mean 3.4 years of follow-up, 7402 participants (11.7%) developed hypertension. The prediction model included age, sex, body mass index (BMI), SBP, DBP, low-density lipoprotein cholesterol, uric acid, proteinuria, current smoking, alcohol intake, eating rate, DBP by age, and BMI by age at baseline and was created by using Cox proportional hazards models to calculate 3-year absolute risks. The derivation analysis confirmed that the model performed well both with respect to discrimination and calibration (n = 63 495; C-statistic = 0.885, 95% confidence interval [CI], 0.865-0.903; χ2 statistic = 13.6, degree of freedom [df] = 7). In the external validation analysis, moreover, the model performed well both in its discrimination and calibration characteristics (n = 14 168; C-statistic = 0.846; 95%CI, 0.775-0.905; χ2 statistic = 8.7, df = 7). Adding LDL cholesterol, uric acid, proteinuria, alcohol intake, eating rate, and BMI by age to the base model yielded a significantly higher C-statistic, net reclassification improvement (NRI), and integrated discrimination improvement, especially NRInon-event (NRI = 0.127, 95%CI = 0.100-0.152; NRInon-event  = 0.108, 95%CI = 0.102-0.117). In conclusion, a highly precise model with good performance was developed for predicting incident hypertension using the new parameters of eating rate, uric acid, proteinuria, and BMI by age. ©2018 Wiley Periodicals, Inc.

Entities:  

Keywords:  derivation; eating rate; hypertension; prediction model; uric acid; validation

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Year:  2018        PMID: 29604170      PMCID: PMC8031110          DOI: 10.1111/jch.13270

Source DB:  PubMed          Journal:  J Clin Hypertens (Greenwich)        ISSN: 1524-6175            Impact factor:   3.738


  34 in total

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2.  Highly precise risk prediction model for new-onset hypertension using artificial intelligence techniques.

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Journal:  J Clin Hypertens (Greenwich)       Date:  2019-12-09       Impact factor: 3.738

3.  Developing and validating a new precise risk-prediction model for new-onset hypertension: The Jichi Genki hypertension prediction model (JG model).

Authors:  Hiroshi Kanegae; Takamitsu Oikawa; Kenji Suzuki; Yukie Okawara; Kazuomi Kario
Journal:  J Clin Hypertens (Greenwich)       Date:  2018-03-31       Impact factor: 3.738

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