兰克尔
医学
骨重建
骨保护素
骨质疏松症
硬骨素
骨矿物
内科学
股骨颈
人口
内分泌学
受体
激活剂(遗传学)
生物
环境卫生
基因
Wnt信号通路
生物化学
作者
Athanasios N. Tsartsalis,George Ι. Lambrou,Dimitrios N. Tsartsalis,Ioannis Papassotiriou,Eugenia Vlachou,Evangelos Terpos,George P. Chrousos,Christina Kanaka‐Gantenbein,Antonis Kattamis
标识
DOI:10.2174/1566524019666190314114447
摘要
Background: Thalassemia major (TM) patients eventually face many new health conditions, including endocrinopathies and low bone mineral density, usually observed in the aging general population. Objective: The aim of the current study was to evaluate the biomarkers of bone remodeling in TM patients and to compare them with both osteoporotic and healthy population, in order to investigate the new therapeutic paths. Methods: Sixty-four patients with TM (32 men and 32 women) participated in the study. The patients were evaluated with dual-energy X-ray absorptiometry (DXA) of the lumbar spine and femoral neck and with markers of bone remodeling including receptor activator of nuclear factor kappa-Β ligand (RANKL), osteoprotegerin (OPG), C-terminal telopeptide (CTX), and sclerostin. Results were compared with those from 12 postmenopausal women with osteoporosis and 12 women with normal bone mineral density. Results: The statistical analysis of the biochemical markers of bone metabolism revealed overall significant differences between the three groups only for RANKL and OPG/RANKL (p=0.049 and p=0.009). RANKL was higher and OPG/RANKL was lower in TM patients compared to osteoporosis group. Conclusion: Patients with TM do not have a higher probability of suffering from osteoporosis from the general population. However, some markers of osteoclast activity differ between patients with TM and osteoporosis, indicating the possible differences in terms of anti-osteoporotic treatment. The lack of significant differences among the three groups in regards to the levels of CTX and sclerostin may indicate the potential efficacy of the current osteoporotic treatment also for TM patients.
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