Medina Inojosa Betsy J, Somers Virend K, Lara-Breitinger Kyla, Johnson Lynne A, Medina-Inojosa Jose R, Lopez-Jimenez Francisco
Division of Preventive Cardiology, Department of Cardiovascular Medicine, Mayo Clinic, 200 First Street SW, Rochester, MN 55905, USA.
Dan Abraham Healthy Living Center, Mayo Clinic, 200 First Street SW, Rochester, MN 55905, USA.
Eur Heart J Digit Health. 2024 Aug 15;5(5):582-590. doi: 10.1093/ehjdh/ztae059. eCollection 2024 Sep.
To test whether an index based on the combination of demographics and body volumes obtained with a multisensor 3D body volume (3D-BV) scanner and biplane imaging using a mobile application (myBVI®) will reliably predict the severity and presence of metabolic syndrome (MS).
We enrolled 1280 consecutive subjects who completed study protocol measurements, including 3D-BV and myBVI®. Body volumes and demographics were screened using the least absolute shrinkage and selection operator to select features associated with an MS severity score and prevalence. We randomly selected 80% of the subjects to train the models, and performance was assessed in 20% of the remaining observations and externally validated on 133 volunteers who prospectively underwent myBVI® measurements. The mean ± SD age was 43.7 ± 12.2 years, 63.7% were women, body mass index (BMI) was 28.2 ± 6.2 kg/m, and 30.2% had MS and an MS severity -score of -0.2 ± 0.9. Features coefficients equal to zero were removed from the model, and 14 were included in the final model and used to calculate the body volume index (BVI), demonstrating an area under the receiving operating curve (AUC) of 0.83 in the validation set. The myBVI® cohort had a mean age of 33 ± 10.3 years, 61% of whom were women, 10.5% MS, an average MS severity -score of -0.8, and an AUC of 0.88.
The described BVI model was associated with an increased severity and prevalence of MS compared with BMI and waist-to-hip ratio. Validation of the BVI had excellent performance when using myBVI®. This model could serve as a powerful screening tool for identifying MS.
测试基于人口统计学数据与通过多传感器三维人体体积(3D-BV)扫描仪及使用移动应用程序(myBVI®)的双平面成像获得的人体体积相结合的指数,能否可靠地预测代谢综合征(MS)的严重程度及存在情况。
我们招募了1280名连续的受试者,他们完成了包括3D-BV和myBVI®在内的研究方案测量。使用最小绝对收缩和选择算子筛选人体体积和人口统计学数据,以选择与MS严重程度评分及患病率相关的特征。我们随机选择80%的受试者来训练模型,并在其余20%的观察对象中评估模型性能,同时在133名前瞻性接受myBVI®测量的志愿者身上进行外部验证。受试者的平均年龄±标准差为43.7±12.2岁,女性占63.7%,体重指数(BMI)为28.2±6.2 kg/m²,30.2%患有MS且MS严重程度评分为-0.2±0.9。从模型中移除系数等于零的特征,最终模型纳入14个特征并用于计算人体体积指数(BVI),在验证集中显示出受试者工作特征曲线下面积(AUC)为0.83。myBVI®队列的平均年龄为33±10.3岁,其中61%为女性,10.5%患有MS,平均MS严重程度评分为-0.8,AUC为0.88。
与BMI和腰臀比相比,所描述的BVI模型与MS严重程度及患病率的增加相关。使用myBVI®时,BVI的验证表现出色。该模型可作为识别MS的有力筛查工具。