From the Department of Drug Design and Pharmacology, University of Copenhagen, Copenhagen, Denmark (R.V.J., M.K., L.L.C., T.M.L.); Orthopaedic Surgery Research Unit and Department of Clinical Medicine, Aalborg University Hospital, Aalborg, Denmark (S.R.); and Department of Pharmaceutical Biosciences, Uppsala University, Uppsala, Sweden (U.S.H.S.).
Anesthesiology. 2015 Dec;123(6):1411-9. doi: 10.1097/ALN.0000000000000917.
Reduction in consumption of opioid rescue medication is often used as an endpoint when investigating analgesic efficacy of drugs by adjunct treatment, but appropriate methods are needed to analyze analgesic consumption in time. Repeated time-to-event (RTTE) modeling is proposed as a way to describe analgesic consumption by analyzing the timing of consecutive analgesic events.
Retrospective data were obtained from 63 patients receiving standard analgesic treatment including morphine on request after surgery following hip fracture. Times of analgesic events up to 96 h after surgery were extracted from hospital medical records. Parametric RTTE analysis was performed with exponential, Weibull, or Gompertz distribution of analgesic events using NONMEM, version 7.2 (ICON Development Solutions, USA). The potential influences of night versus day, sex, and age were investigated on the probability.
A Gompertz distribution RTTE model described the data well. The probability of having one or more analgesic events within 24 h was 80% for the first event, 55% for the second event, 31% for the third event, and 18% for fourth or more events for a typical woman of age 80 yr. The probability of analgesic events decreased in time, was reduced to 50% after 3.3 days after surgery, and was significantly lower (32%) during night compared with day.
RTTE modeling described analgesic consumption data well and could account for time-dependent changes in probability of analgesic events. Thus, RTTE modeling of analgesic events is proposed as a valuable tool when investigating new approaches to pain management such as opioid-sparing analgesia.
在通过辅助治疗研究药物的镇痛疗效时,经常使用减少阿片类救援药物的消耗作为终点,但需要适当的方法来及时分析镇痛消耗。重复时间事件(RTTE)建模被提议作为一种通过分析连续镇痛事件的时间来描述镇痛消耗的方法。
从 63 名接受髋部骨折手术后标准镇痛治疗(包括按需吗啡)的患者中获得回顾性数据。从医院病历中提取手术 96 小时内的镇痛事件时间。使用 NONMEM,版本 7.2(美国 ICON 发展解决方案),对镇痛事件的指数、Weibull 或 Gompertz 分布进行参数 RTTE 分析。研究了夜间与白天、性别和年龄对概率的潜在影响。
Gompertz 分布 RTTE 模型很好地描述了数据。首次事件的 24 小时内发生一次或多次镇痛事件的概率为 80%,第二次事件为 55%,第三次事件为 31%,第四次或更多事件为 80 岁女性的 18%。镇痛事件的概率随时间下降,术后 3.3 天后降至 50%,夜间明显低于白天(32%)。
RTTE 模型很好地描述了镇痛消耗数据,并可以解释镇痛事件概率随时间的变化。因此,RTTE 模型的镇痛事件被提议作为研究新的疼痛管理方法(如阿片类药物节约性镇痛)的有价值的工具。