Sloan Robert A, Kim Youngdeok, Kenyon Jonathan, Visentini-Scarzanella Marco, Sawada Susumu S, Sui Xuemei, Lee I-Min, Myers Jonathan N, Lavie Carl J
Department of Social and Behavioral Medicine, Kagoshima University Graduate Medical School, Kagoshima 890-8520, Japan.
Department of Kinesiology and Health Sciences, Virginia Commonwealth University, Richmond, VA 23284, USA.
J Clin Med. 2023 Apr 6;12(7):2740. doi: 10.3390/jcm12072740.
Cardiorespiratory fitness (CRF) is a predictor of chronic disease that is impractical to routinely measure in primary care settings. We used a new estimated cardiorespiratory fitness (eCRF) algorithm that uses information routinely documented in electronic health care records to predict abnormal blood glucose incidence.
Participants were adults (17.8% female) 20-81 years old at baseline from the Aerobics Center Longitudinal Study between 1979 and 2006. eCRF was based on sex, age, body mass index, resting heart rate, resting blood pressure, and smoking status. CRF was measured by maximal treadmill testing. Cox proportional hazards regression models were established using eCRF and CRF as independent variables predicting the abnormal blood glucose incidence while adjusting for covariates (age, sex, exam year, waist girth, heavy drinking, smoking, and family history of diabetes mellitus and lipids).
Of 8602 participants at risk at baseline, 3580 (41.6%) developed abnormal blood glucose during an average of 4.9 years follow-up. The average eCRF of 12.03 ± 1.75 METs was equivalent to the CRF of 12.15 ± 2.40 METs within the 10% equivalence limit. In fully adjusted models, the estimated risks were the same (HRs = 0.96), eCRF (95% CIs = 0.93-0.99), and CRF (95% CI of 0.94-0.98). Each 1-MET increase was associated with a 4% reduced risk.
Higher eCRF is associated with a lower risk of abnormal glucose. eCRF can be a vital sign used for research and prevention.
心肺适能(CRF)是慢性疾病的一个预测指标,但在初级保健机构中进行常规测量并不实际。我们使用了一种新的估计心肺适能(eCRF)算法,该算法利用电子健康记录中常规记录的信息来预测血糖异常发生率。
参与者为1979年至2006年期间参加有氧运动中心纵向研究的20 - 81岁成年人(女性占17.8%)。eCRF基于性别、年龄、体重指数、静息心率、静息血压和吸烟状况。CRF通过最大运动平板试验进行测量。以eCRF和CRF作为自变量,同时调整协变量(年龄、性别、检查年份、腰围、大量饮酒、吸烟以及糖尿病和血脂家族史),建立Cox比例风险回归模型来预测血糖异常发生率。
在基线时有风险的8602名参与者中,平均4.9年的随访期间有3580名(41.6%)出现血糖异常。平均eCRF为12.03±1.75梅脱,在10%的等效界限内与CRF的12.15±2.40梅脱相当。在完全调整的模型中,估计风险相同(风险比=0.96),eCRF(95%置信区间=0.93 - 0.99)和CRF(95%置信区间为0.94 - 0.98)。每增加1梅脱与风险降低4%相关。
较高的eCRF与较低的血糖异常风险相关。eCRF可作为用于研究和预防的生命体征。