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成人术后急性疼痛的预后临床预测模型:系统评价。

Prognostic clinical prediction models for acute post-surgical pain in adults: a systematic review.

机构信息

Department of Anaesthesiology and Intensive Care, Aarhus University Hospital, Aarhus, Denmark.

Department of Clinical Epidemiology, Aarhus University, Aarhus, Denmark.

出版信息

Anaesthesia. 2024 Dec;79(12):1335-1347. doi: 10.1111/anae.16429. Epub 2024 Sep 16.

Abstract

BACKGROUND

Acute post-surgical pain is managed inadequately in many patients undergoing surgery. Several prognostic risk prediction models have been developed to identify patients at high risk of developing moderate to severe acute post-surgical pain. The aim of this systematic review was to describe and evaluate the methodological conduct of these prediction models.

METHODS

We searched MEDLINE, EMBASE and CINAHL for studies of prognostic risk prediction models for acute post-surgical pain using predetermined criteria. Prediction model performance was evaluated according to discrimination and calibration. Adherence to TRIPOD guidelines was assessed. Risk of bias and applicability was independently assessed by two reviewers using the prediction model risk of bias assessment tool.

RESULTS

We included 14 studies reporting on 17 prediction models. The most common predictors identified in final prediction models included age; surgery type; sex or gender; anxiety or fear of surgery; pre-operative pain intensity; pre-operative analgesic use; pain catastrophising; and expected surgical incision size. Discrimination, measured by the area under receiver operating characteristic curves or c-statistic, ranged from 0.61 to 0.83. Calibration was only reported for seven models. The median (IQR [range]) overall adherence rate to TRIPOD items was 62 (53-66 [47-72])%. All prediction models were at high risk of bias.

CONCLUSIONS

Effective prediction models could support the prevention and treatment of acute post-surgical pain; however, existing models are at high risk of bias which may affect their reliability to inform practice. Consideration should be given to the goals, timing of intended use and desired outcomes of a prediction model before development.

摘要

背景

许多接受手术的患者术后急性疼痛管理不足。已经开发了几种预后风险预测模型,以识别发生中重度术后急性疼痛的高风险患者。本系统评价的目的是描述和评估这些预测模型的方法学表现。

方法

我们使用预定标准在 MEDLINE、EMBASE 和 CINAHL 中搜索用于术后急性疼痛的预后风险预测模型的研究。根据区分度和校准度评估预测模型的性能。采用预测模型风险偏倚评估工具,由两名评审员独立评估 TRIPOD 指南的遵循情况、偏倚风险和适用性。

结果

我们纳入了 14 项研究,报道了 17 个预测模型。最终预测模型中最常见的预测因素包括年龄、手术类型、性别或性别、对手术的焦虑或恐惧、术前疼痛强度、术前镇痛使用、疼痛灾难化和预期手术切口大小。通过接受者操作特征曲线下面积或 c 统计量衡量的区分度范围为 0.61 至 0.83。仅报告了七个模型的校准情况。TRIPOD 项目的中位数(IQR [范围])总体依从率为 62(53-66 [47-72])%。所有预测模型均存在高偏倚风险。

结论

有效的预测模型可以支持术后急性疼痛的预防和治疗;然而,现有的模型存在高偏倚风险,这可能会影响其可靠性,从而无法为实践提供信息。在开发预测模型之前,应考虑其目标、预期使用的时间和预期结果。

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