医学
利钠肽
内科学
肺动脉高压
心脏病学
危险分层
协议限制
静脉血
平均差
生物标志物
置信区间
心力衰竭
核医学
生物化学
化学
作者
Harrison Stubbs,John Cannon,Emily Knightbridge,Charlotte Durrington,Chloe Roddis,Wendy Gin‐Sing,F C Massey,Daniel Knight,Ruta Virsinskaite,James Lordan,Eleanor Sear,Joy Apple-Pinguel,Eleanor Morris,Martin Johnson,Stephen J. Wort
标识
DOI:10.1136/bmjresp-2023-002124
摘要
Background N-terminal pro-B-type natriuretic peptide (NT-proBNP) is a biomarker of cardiac ventricular wall stress that is incorporated into pulmonary hypertension (PH) risk stratification models. Sendaway sampling may enable patients to perform NT-proBNP tests remotely. This UK-wide study aimed to assess the agreement of sendaway NT-proBNP with standard venous NT-proBNP and to assess the effect of delayed processing. Methods Reference venous NT-proBNP was collected from PH patients. Samples for capillary and venous sendaway tests were collected contemporaneously, mailed to a reference laboratory and processed at 3 and 7 days using a Roche Cobas e411 device. Differences in paired measurements were analysed with Passing-Bablok regression, percentage difference plots and the % difference in risk strata. Results 113 patients were included in the study. 13% of day 3 capillary samples were insufficient. Day 3 capillary samples were not equivalent to reference samples (Passing Bablok analysis slope of 0.91 (95% CI 0.88 to 0.93) and intercept of 6.0 (95% CI 0.2 to 15.9)). The relative median difference was −7% and there were acceptable limits of agreement. Day 3 capillary NT-proBNP accurately risk stratified patients in 93.5% of cases. By comparison, day 3 venous results accurately risk stratified patients in 90.1% of cases and were equivalent by Passing-Bablok regression. Delayed sampling of sendaway tests led to an unacceptable level of agreement and systematically underestimated NT-proBNP. Conclusions Sendaway NT-proBNP sampling may provide an objective measure of right ventricular strain for virtual PH clinics. Results must be interpreted with caution in cases of delayed sampling.
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