医学
继发性甲状旁腺功能亢进
甲状旁腺激素
指南
甲状旁腺功能亢进
原发性甲状旁腺功能亢进
内科学
泌尿科
肾脏疾病
内分泌学
临床实习
围手术期
重症监护医学
胃肠病学
外科
病理
钙
物理疗法
作者
Marjon A Smit,Caroline M J van Kinschot,Joke van der Linden,Charlotte van Noord,Snježana Kos
出处
期刊:Endocrine Reviews
[The Endocrine Society]
日期:2019-05-13
卷期号:40 (6): 1468-1480
被引量:61
标识
DOI:10.1210/er.2018-00220
摘要
Abstract PTH is an important regulator of calcium and phosphate homeostasis and bone remodeling. It is metabolized into PTH fragments, which are measured to a different extent by PTH assays of different generations because of differences in fragments recognized and lack of assay standardization. PTH is measured in the workup of several conditions, and clinical guidelines provide recommendations concerning these measurements. This review provides an overview of the impact of differences between PTH assays, applying distinct clinical guidelines for primary and secondary hyperparathyroidism and perioperative use of PTH measurements. Guidelines deal with PTH measurement in different ways, recommending either trend monitoring, the use of a fold increase of the upper reference limit, or an absolute PTH cutoff value. For classic primary hyperparathyroidism (PHPT), the type of PTH assay used will not affect diagnosis or management because the precise concentration of PTH is less relevant. In chronic kidney disease, the guideline recommends treating secondary hyperparathyroidism above a twofold to ninefold PTH increase, which will result in different clinical decisions depending on the assay used. For patients after bariatric surgery, guidelines state absolute cutoff values for PTH, but the impact of different generation assays is unknown because direct comparison of PTH assays has never been performed. During parathyroid surgery, PTH measurements with a third-generation assay reflect treatment success more rapidly than second-generation assays. Increased awareness among clinicians regarding the complexity of PTH measurements is warranted because it can affect clinical decisions.
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