Point of care with serial NT-proBNP measurement in patients with acute decompensated heart failure as a therapy-monitoring during hospitalization (POC-HF): Study protocol of a prospective, unblinded, randomized, controlled pilot trial

CONTEMPORARY CLINICAL TRIALS COMMUNICATIONS(2021)

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摘要
Despite important advances in diagnosis and medical therapy of heart failure (HF), disease monitoring and therapy guidance remains to be based on clinical signs and symptoms. NT-proBNP was repeatedly demonstrated to be a strong and independent predictor of morbidity and mortality in patients with HF. Only few - and conflicting - data are available on the efficacy of serial measurement of NT-proBNP as a tool for treatment monitoring in HF. These data are limited to the outpatient setting. Currently, no data are available on the effects of this approach in patients hospitalized for acute decompensated HF. The goal of this study is to explore whether the availability of serial NT-proBNP measurements may influence treatment decisions in patients with acute decompensated HF, and whether this leads to more rapid dose adjustments of prognostically beneficial medical therapies and earlier hospital discharge. In the intervention group, serial measurements of NT-proBNP every second business day are performed and made available to the treating physician, while no serial measurements are available in control group. HF therapy is left at the discretion of the treating physician. The primary endpoints are defined as the effects of monitoring NT-proBNP on medical HF therapy decisions, including type and dosing of medical therapies and the rapidity of adjustments, length of hospital stay, and evaluation of the changes in NT-proBNP values. Additional secondary endpoints include incidence of electrolyte imbalances and renal failure, changes in NYHA functional class, vital signs, body weight, quality of life, incidence of adverse events, transfer to Intensive Care Units, and mortality.
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关键词
Acute heart failure, NT-proBNP, Serial measurements, Disease monitoring, Therapy guidance
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