Xavier Jacqueline Fernandes de Sa, Feuerstein Shirley C, De Moraes Augusto Cesar Ferreira, de Oliveira Tiago Almeida, da Silva Gomes Evellyn Ravena, de Almeida Silva Maria Isabela Alves, de Oliveira Luiz Fernando, de Carvalho Heraclito Barbosa, Marin Kliver Antonio, Nascimento-Ferreira Marcus Vinicius
Health, Physical Activity and Behavior Research (HEALTHY-BRA) Group, Universidade Federal do Tocantins, Miracema do Tocantins 77650-000, Brazil.
Texas PARC-Texas Physical Activity Research Collaborative Lab, Michael and Susan Dell Center for Healthy Living, Department of Epidemiology, School of Public Health in Austin, The University of Texas Health Science Center at Houston, Austin, TX 78701, USA.
J Pers Med. 2024 Jul 30;14(8):810. doi: 10.3390/jpm14080810.
Metabolic syndrome increases the risk of heart disease and diabetes. Early identification and management are crucial, especially in economically challenged regions with limited healthcare access.
To develop nomograms for individualized risk estimation for metabolic syndrome in young people from low-income regions.
We assessed 496 college students from two Brazilian cities with Gini indices ≤0.56. Of these, 69.9% were female, 65.1% were younger than 20 years, 71.8% were non-white, and 64.3% were enrolled in health-related courses. For external validity, we assessed metabolic syndrome in a subset of 375 students.
We found 10 variables associated with abdominal obesity by logistic regression: age, biological sex, physical education facilities, enrollment in sports competitions during elementary school, grade retention, physical education as the preferred subject, physical education classes per week, and enrollment in sports training in secondary school (score A); adherence to 24 h movement behaviors (B score); and body weight (score C). We designed three nomograms (for scores A, B, and C), all of which showed acceptable performance according to the area under the receiver operating characteristic curve (≥0.70) and calibration (Hosmer-Lemeshow test, > 0.05). In the external validation, we observed higher predictive capability for the A and B scores, while the C score had lower but still acceptable predictive ability.
User-friendly self-reported data accurately predict metabolic syndrome among youths from economically challenging areas.
代谢综合征会增加患心脏病和糖尿病的风险。早期识别和管理至关重要,尤其是在医疗保健可及性有限的经济困难地区。
为低收入地区年轻人的代谢综合征个体风险评估开发列线图。
我们评估了来自巴西两个基尼指数≤0.56城市的496名大学生。其中,69.9%为女性,65.1%年龄小于20岁,71.8%为非白人,64.3%就读于与健康相关的课程。为进行外部验证,我们评估了375名学生亚组中的代谢综合征情况。
通过逻辑回归,我们发现10个与腹部肥胖相关的变量:年龄、生物性别、体育设施、小学期间参加体育比赛情况、留级情况、体育作为首选科目、每周体育课节数以及中学参加体育训练情况(A分数);坚持24小时运动行为(B分数);以及体重(C分数)。我们设计了三个列线图(用于A、B和C分数),根据受试者工作特征曲线下面积(≥0.70)和校准(Hosmer-Lemeshow检验,>0.05),所有列线图均表现出可接受的性能。在外部验证中,我们观察到A和B分数的预测能力较高,而C分数的预测能力较低但仍可接受。
用户友好的自我报告数据能够准确预测经济困难地区青少年的代谢综合征。