难治性继发性甲状旁腺功能亢进的超声表现与实验室指标的相关性
Chinese Journal of Medical Imaging Technology(2018)
Abstract
目的 探讨难治性继发性甲状旁腺功能亢进(SHPT)的超声表现与实验室指标间的相关性.方法 对30例难治性SHPT患者术前行二维超声及CEUS检查,测量并计算甲状旁腺体积和及增强区域体积和.记录术前2天内实验室检验指标水平,包括血清全段甲状旁腺激素(iPTH)、血清钙、血清磷、血清碱性磷酸酶(ALP).计算校正血清钙、校正血清钙磷乘积.分析甲状旁腺体积和与各检验指标的相关性.结果 甲状旁腺体积和、增强区域甲状旁腺体积和与iPTH呈正相关(r=0.48、0.50,P均=0.01),而与血清钙、血清磷、ALP、校正血清钙、钙磷乘积间无相关性(P均>0.05).结论 超声测算的甲状旁腺体积和可反映甲状旁腺活性状态,为诊断及监测SHPT提供参考.
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Key words
Hyperparathyroidism,Ultrasonography,Parathyroid hormone
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