医学
观察研究
四分位数
动员
傍晚
队列研究
队列
前瞻性队列研究
心脏病学
内科学
物理疗法
外科
置信区间
考古
历史
物理
天文
作者
Sandra Lauck,Maggie Yu,C. Bancroft,Britt Borregaard,J Polderman,Anna L. Stephenson,Éric Durand,Mariama Akodad,David Meier,Holly Andrews,L. Achtem,Erjiang Tang,David Wood,Janarthanan Sathananthan,John G. Webb
标识
DOI:10.1093/eurjcn/zvad081
摘要
Early mobilization is associated with improved outcomes in hospitalized older patients. We sought to determine the effect of a nurse-led protocol on mobilization 4 h after transfemoral transcatheter aortic valve implantation (TAVI) across different units of care.We conducted a prospective observational cohort single-centre study of consecutive patients. We implemented a standardized protocol for safe early recovery and progressive mobilization in the critical care and cardiac telemetry units. We measured the time to first mobilization and conducted descriptive statistics to identify patient and system barriers to timely ambulation. We recruited 139 patients (82.5 years, SD = 6.7; 46% women). At baseline, patients who were mobilized early (≤4 h) and late (>4 h) did not differ, except for higher rates of diabetes (25.5% vs. 43.9%, P = 0.032) and peripheral arterial disease (8.2% vs. 26.8%, P = 0.003) in the late mobilization group. The median time to mobilization was 4 h [inter-quartile range (IQR) 3.25, 4]; 98 patients (70.5%) were mobilized successfully after 4 h of bedrest; 118 (84.9%) were walking by the evening of the procedure (<8 h bedrest); and 21 (15.1%) were on bedrest overnight and mobilized the following day. Primary reasons for overnight bedrest were arrhythmia monitoring (n = 10, 7.2%) and haemodynamic and/or neurological instability (n = 6, 4.3%); six patients (4.3%) experienced delayed ambulation due to system issues. Procedure location in the hybrid operating room and transfer to critical care were associated with longer bedrest times.Standardized nurse-led mobilization 4 h after TF TAVI is feasible in the absence of clinical complications and system barriers.
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