Application of bone metabolic parameters in the diagnosis of growing pains

Objective The present study aimed to assess the diagnostic significance of serum bone metabolic parameters in children with growing pains (GPs). Methods All patients diagnosed with GP and healthy controls matched with age and gender were recruited at the outpatient clinic of Children's Hospital...

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Veröffentlicht in:Journal of clinical laboratory analysis 2022-02, Vol.36 (2), p.e24184-n/a
Hauptverfasser: Li, Huamei, Wang, Bing, He, Lin, Tao, Ran, Shang, Shiqiang
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Sprache:eng
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Zusammenfassung:Objective The present study aimed to assess the diagnostic significance of serum bone metabolic parameters in children with growing pains (GPs). Methods All patients diagnosed with GP and healthy controls matched with age and gender were recruited at the outpatient clinic of Children's Hospital at Zhejiang University School of Medicine from August 2016 to August 2021. In all subjects, serum levels of calcium (Ca), phosphorus (P), procollagen type‐I N‐terminal (PINP), parathormone (PTH), 25‐hydroxyvitamin D (25‐(OH)D), osteocalcin (OC), N‐terminal cross‐linked telopeptides of type‐I collagen (CTX), and tartrate‐resistant acid phosphatase type 5b (TRACP5b) were investigated. The univariate analysis, multivariate logistic regression analysis, and receiver operating characteristic (ROC) curve were used to identify the bone metabolic parameters factors for diagnosing GP. Results We enrolled 386 children with GP and 399 healthy controls in present study. The mean age of GP group was 5.319 years, and, primarily, the subjects were preschool‐age children. The gender ratio (male‐to‐female) was 1.27 in GP group. After adjusting for age and gender, we identified that the serum levels of Ca (p  P (0.583) > PTH (0.541). A combination of independent diagnostic factors and multivariable logistic regression analysis provided a refined logistic regression model to improve the diagnostic potential, of which the AUC had reached 0.655. Conclusions Serum levels of Ca, P, PINP, and PTH could be independent diagnostic factors associated with GP. The logistic model was significantly superior to bone metabolic parameters for diagnosing GP. Serum levels of Ca, P, PINP and PTH could be independent diagnostic factors associated with GP. The logistic model was significantly superior to bone metabolic parameters for diagnosing GP.
ISSN:0887-8013
1098-2825
DOI:10.1002/jcla.24184