Assessing perioperative risks in a mixed elderly surgical population using machine learning: A multi-objective symbolic regression approach to cardiorespiratory fitness derived from cardiopulmonary exercise testing.

PLOS digital health Pub Date : 2025-05-16 eCollection Date: 2025-05-01 DOI:10.1371/journal.pdig.0000851
Pietro Arina, Davide Ferrari, Maciej R Kaczorek, Nicholas Tetlow, Amy Dewar, Robert Stephens, Daniel Martin, Ramani Moonesinghe, Mervyn Singer, John Whittle, Evangelos B Mazomenos
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Abstract

Accurate preoperative risk assessment is of great value to both patients and clinical teams. Several risk scores have been developed but are often not calibrated to the local institution, limited in terms of data input into the underlying models, and/or lack individual precision. Machine Learning (ML) models have the potential to address limitations in existing scoring systems. A database of 1190 elderly patients who underwent major elective surgery was analyzed retrospectively. Preoperative cardiorespiratory fitness data from cardiopulmonary exercise testing (CPET), demographic and clinical data were extracted and integrated into advanced machine learning (ML) algorithms. Multi-Objective-Symbolic-Regression (MOSR), a novel algorithm utilizing Genetic Programming to generate mathematical formulae for learning tasks, was employed to predict patient morbidity at Postoperative Day 3, as defined by the PostOperative Morbidity Survey (POMS). Shapley-Additive-exPlanations (SHAP) was subsequently used to analyze feature contributions. Model performance was benchmarked against existing risk prediction scores, namely the Portsmouth-Physiological-and-Operative-Severity-Score-for-the-Enumeration-of-Mortality-and-Morbidity (PPOSSUM) and the Duke-Activity-Status-Index, as well as linear regression using CPET features. A model was also developed for the same task using data directly extracted from the CPET time-series. The incorporation of cardiorespiratory fitness data enhanced the performance of all models for predicting postoperative morbidity by 20% compared to sole reliance on clinical data. Cardiorespiratory fitness features demonstrated greater importance than clinical features in the SHAP analysis. Models utilizing data taken directly from the CPET time-series demonstrated a 12% improvement over the cardiorespiratory fitness models. MOSR model surpassed all other models in every experiment, demonstrating excellent robustness and generalization capabilities. Integrating cardiorespiratory fitness data with ML models enables improved preoperative prediction of postoperative morbidity in elective surgical patients. The MOSR model stands out for its capacity to pinpoint essential features and build models that are both simple and accurate, showing excellent generalizability.

使用机器学习评估混合老年手术人群的围手术期风险:一种多目标符号回归方法,用于心肺运动测试得出的心肺适应性。
准确的术前风险评估对患者和临床团队都具有重要的价值。已经开发了几种风险评分,但通常没有根据当地机构进行校准,在基础模型的数据输入方面受到限制,并且/或者缺乏个人精度。机器学习(ML)模型有可能解决现有评分系统的局限性。回顾性分析1190例接受择期大手术的老年患者的资料。从心肺运动测试(CPET)、人口统计学和临床数据中提取术前心肺健康数据,并将其整合到先进的机器学习(ML)算法中。多目标符号回归(MOSR)是一种利用遗传规划生成学习任务数学公式的新算法,用于预测术后第3天的患者发病率,由术后发病率调查(POMS)定义。shapley - additive - explanation (SHAP)随后被用于分析特征贡献。模型性能以现有的风险预测评分为基准,即朴茨茅斯-生理和手术-严重程度-死亡率和发病率计数评分(possum)和公爵活动-状态指数,以及使用CPET特征的线性回归。使用直接从CPET时间序列中提取的数据,还为相同的任务开发了一个模型。与单纯依赖临床数据相比,合并心肺健康数据使所有预测术后发病率的模型的性能提高了20%。在SHAP分析中,心肺功能特征比临床特征更重要。使用直接从CPET时间序列中获取的数据的模型比心肺健康模型改善了12%。MOSR模型在每次实验中都优于其他所有模型,表现出出色的鲁棒性和泛化能力。将心肺健康数据与ML模型相结合,可以改善择期手术患者术前术后发病率的预测。MOSR模型以其精确定位基本特征和构建既简单又准确的模型的能力而脱颖而出,表现出出色的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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