- VernacularTitle:儿童矮小症的影响因素及列线图模型的构建
- Author:
Yongxia WANG
1
;
Xiao CHEN
;
Mei LI
;
Lijun JIANG
;
Hui DING
Author Information
- Keywords: dwarfism in children; influencing factors; nomogram model; birth weight; physi-cal exercise
- From: Journal of Clinical Medicine in Practice 2024;28(2):92-95
- CountryChina
- Language:Chinese
- Abstract: Objective To explore the influencing factors of dwarfism in children and construct a nomogram model.Methods From June 2020 to December 2022,1,500 children were selected as the research objects,and 1,422 cases were effectively investigated.According to incidence of dwarf-ism,the children were divided into normal group(n=1,351)and dwarfism group(n=71).Univa-riate and multivariate Logistic regression analyses were used to explore the influencing factors of dwarf-ism in children;the R software was used to construct a nomogram model for prediction of the occurrence of dwarfism in children,and the receiver operating characteristic(ROC)curve and calibration curve were used to evaluate the discrimination and consistency of the nomogram model.Results Among the 1 422 children,71 cases had dwarfism,with an incidence rate of 4.99%.Multivariate Logistic re-gression analysis showed that birth weight,family history of dwarfism,milk intake and physical exer-cise were the influencing factors for the occurrence of dwarfism in children(P<0.05).The area un-der the curve of the ROC curve predicted by the nomogram model for the occurrence of dwarfism in children was 0.897(95%CI,0.856 to 0.938),with good discrimination;the calibration curve slope of the nomogram model for predicting the occurrence of dwarfism in children approached 1,and the Hosmer-Lemeshow goodness of fit test showed that the was 5.020 and P was 0.740,indicating good consistency.Conclusion The nomogram model for predicting the occurrence of dwarfism in children based on four influencing factors of birth weight,family history of dwarfism,milk intake and physical exercise has good discrimination and consistency,which can provide reference for the devel-opment of personalized intervention measures in clinical practice.