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术后肺部并发症预测。

Prediction of postoperative pulmonary complications.

机构信息

Department of Anesthesiology.

Department of Intensive Care.

出版信息

Curr Opin Anaesthesiol. 2019 Jun;32(3):443-451. doi: 10.1097/ACO.0000000000000730.

Abstract

PURPOSE OF REVIEW

Prediction of postoperative pulmonary complications (PPCs) enables individually applied preventive measures and maybe even early treatment if a PPC eventually starts to develop. The purpose of this review is to describe crucial steps in the development and validation of prediction models, examine these steps in the current literature and describe what the future holds for PPC prediction.

RECENT FINDINGS

A systematic search of the medical literature identified 21 articles reporting on prediction models for PPCs. The studies were heterogeneous with regard to design, derivation cohort and whether or not a validation cohort was used. Furthermore, as definitions for PPCs varied substantially, PPC rates were quite different. One-third of the studies had a sufficient sample size for building a prediction model. In most articles, an internal validation step was reported, suggesting a good fit. In the four articles that reported an externally validation step, in three the prognostic model performed less well in external validation. The ARISCAT risk score was the only score that kept sufficient predictive power in external validation, albeit that the sample sizes of the cohorts used may have been too small. Analysis by machine learning could help building new prediction models, as unbiased cluster analyses could uncover clusters of patients with specific underlying pathophysiological mechanisms. Adding biomarkers to the model could optimize identification of biological phenotypes of risk groups.

SUMMARY

Many predictive models for PPCs have been reported on. Development of more robust PPC prediction models could be supported by machine learning.

摘要

目的综述

预测术后肺部并发症(PPC)可使患者接受个体化的预防措施,如果 PPC 确实开始发展,甚至可以进行早期治疗。本综述的目的是描述开发和验证预测模型的关键步骤,检查当前文献中的这些步骤,并描述 PPC 预测的未来前景。

最近的发现

对医学文献进行系统搜索,确定了 21 篇关于 PPC 预测模型的文章。这些研究在设计、推导队列以及是否使用验证队列方面存在异质性。此外,由于 PPC 的定义差异很大,PPC 发生率也大不相同。三分之一的研究有足够的样本量来建立预测模型。在大多数文章中,报告了内部验证步骤,表明拟合良好。在报告外部验证步骤的四篇文章中,有三篇在外部验证中预测模型的性能较差。ARISCAT 风险评分是唯一在外部验证中保持足够预测能力的评分,尽管使用的队列样本量可能太小。通过机器学习进行分析可能有助于建立新的预测模型,因为无偏聚类分析可以发现具有特定潜在病理生理机制的患者群。将生物标志物添加到模型中可以优化风险组的生物学表型识别。

总结

已经报道了许多 PPC 预测模型。机器学习可以支持开发更稳健的 PPC 预测模型。

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