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择期剖宫产并发症个体风险预测模型:系统评价。

Predictive models of individual risk of elective caesarean section complications: a systematic review.

机构信息

University of Aberdeen, School of Medicine, Medical Sciences and Nutrition, UK.

University of Aberdeen, School of Medicine, Medical Sciences and Nutrition, UK.

出版信息

Eur J Obstet Gynecol Reprod Biol. 2021 Jul;262:248-255. doi: 10.1016/j.ejogrb.2021.05.011. Epub 2021 May 8.

Abstract

INTRODUCTION

With increasing caesarean section (c-section) rates, personalized communication of risk has become paramount. A reliable tool to predict complications would support evidence-based discussions around planned mode of birth. This systematic review aimed to identify, synthesize and quality appraise prognostic models of maternal complications of elective c-section.

METHODS

MEDLINE, Embase, Web of Science, CINAHL and the Cochrane Library were searched on 27 January using terms relating to 'c-section', 'prognostic models' and complications such as 'infection'. Any study developing and/or validating a prognostic model for a maternal complication of elective c-section in the English language after January 1995 was selected for analysis. Data were extracted using a predetermined checklist: source of data; participants; outcome to be predicted; candidate predictors; sample size; missing data; model development; model performance; model evaluation; results; and interpretation. Quality was assessed using the Prediction model Risk Of Bias ASsessment Tool (PROBAST) tool.

RESULTS

In total, 7752 studies were identified; of these, 16 full papers were reviewed and three eligible studies were identified, containing three prognostic models derived from hospitals in Japan, South Africa and the UK. The models predicted risk of blood transfusion, spinal hypotension and postpartum haemorrhage. The study authors deemed their studies to be exploratory, exploratory and confirmatory, respectively. From the three studies, a total of 29 unique candidate predictors were identified, with 15 predictors in the final models. Maternal age (n = 3), previous c-section (n = 2), placenta praevia (n = 2) and pre-operative haemoglobin (n = 2) were found to be common predictors amongst the included studies. None of the studies were externally validated and all had a high risk of bias due to the analysis technique used.

CONCLUSION

Few models have been developed to predict complications of elective c-section. Existing models predicting blood transfusion, spinal hypotension and postpartum haemorrhage cannot be recommended for clinical practice. Future research should focus on identifying predictors known before surgery and validating the resulting models.

摘要

介绍

随着剖宫产率的不断提高,个性化的风险沟通变得至关重要。一个可靠的工具来预测并发症将支持围绕计划分娩方式的循证讨论。本系统评价旨在确定、综合和质量评估择期剖宫产产妇并发症的预后模型。

方法

使用与“剖宫产”、“预后模型”和“感染”等并发症相关的术语,于 2023 年 1 月 27 日在 MEDLINE、Embase、Web of Science、CINAHL 和 Cochrane Library 进行了检索。选择 1995 年 1 月以后用英语开发和/或验证择期剖宫产产妇并发症预后模型的任何研究进行分析。使用预定的清单提取数据:数据来源;参与者;预测结果;候选预测因子;样本量;缺失数据;模型开发;模型性能;模型评估;结果;和解释。使用预测模型风险偏倚评估工具(PROBAST)评估质量。

结果

共确定了 7752 项研究;其中,有 16 篇全文进行了回顾,确定了 3 项符合条件的研究,包含了来自日本、南非和英国的 3 个预后模型。这些模型预测了输血、脊髓低血压和产后出血的风险。研究作者分别认为他们的研究是探索性的、探索性的和验证性的。在这 3 项研究中,共确定了 29 个独特的候选预测因子,最终模型中有 15 个预测因子。产妇年龄(n=3)、既往剖宫产(n=2)、前置胎盘(n=2)和术前血红蛋白(n=2)是纳入研究中常见的预测因子。没有一项研究进行了外部验证,所有研究由于使用的分析技术而存在很高的偏倚风险。

结论

很少有模型被开发出来预测择期剖宫产的并发症。现有的预测输血、脊髓低血压和产后出血的模型不能推荐用于临床实践。未来的研究应侧重于确定术前已知的预测因子,并验证由此产生的模型。

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