Anesthesiology. 2021 Sep 1;135(3):396-405. doi: 10.1097/ALN.0000000000003871.
Clinical prediction models in anesthesia and surgery research have many clinical applications including preoperative risk stratification with implications for clinical utility in decision-making, resource utilization, and costs. It is imperative that predictive algorithms and multivariable models are validated in a suitable and comprehensive way in order to establish the robustness of the model in terms of accuracy, predictive ability, reliability, and generalizability. The purpose of this article is to educate anesthesia researchers at an introductory level on important statistical concepts involved with development and validation of multivariable prediction models for a binary outcome. Methods covered include assessments of discrimination and calibration through internal and external validation. An anesthesia research publication is examined to illustrate the process and presentation of multivariable prediction model development and validation for a binary outcome. Properly assessing the statistical and clinical validity of a multivariable prediction model is essential for reassuring the generalizability and reproducibility of the published tool.
麻醉和手术研究中的临床预测模型有许多临床应用,包括术前风险分层,这对决策中的临床实用性、资源利用和成本都有影响。为了确定模型在准确性、预测能力、可靠性和可推广性方面的稳健性,至关重要的是要以合适和全面的方式验证预测算法和多变量模型。本文的目的是向麻醉研究人员介绍与二项结局的多变量预测模型的开发和验证相关的重要统计概念。涵盖的方法包括通过内部和外部验证评估区分度和校准度。检查一篇麻醉研究出版物,来说明二项结局的多变量预测模型开发和验证的过程和表述。正确评估多变量预测模型的统计和临床有效性对于确保已发表工具的可推广性和可重复性至关重要。