ai -谵妄保护:老年外科患者术后谵妄的预测模型。

IF 2.6 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
PLoS ONE Pub Date : 2025-06-05 eCollection Date: 2025-01-01 DOI:10.1371/journal.pone.0322032
Sri Harsha Boppana, Divyansh Tyagi, Sachin Komati, Sri Lasya Boppana, Ritwik Raj, C David Mintz
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引用次数: 0

摘要

在老年患者中,术后谵妄(POD)是一个主要的并发症,可导致更高的发病率、更长的住院时间和更高的医疗费用。准确的POD预测模型可以通过指导预防策略来提高患者的预后。本研究利用先进的机器学习技术,利用全面的围手术期数据,建立了POD的预测模型。方法:我们检查了来自国家外科质量改进计划(NSQIP)的信息,其中包括17,000名65岁以上接受不同类型手术的患者。数据集包括患者人口统计学(年龄、性别)、合并症(糖尿病、心血管疾病、先前存在的痴呆)、手术细节(类型、持续时间)、麻醉类型和剂量以及术后结果等变量。分类变量采用数字编码,数据标准化,保证正态分布。评估了一系列机器学习方法,如决策树和随机森林。根据受试者工作特征(ROC)分析的最大曲线下面积(AUC)选择最终模型。使用GridSearchCV进行超参数调优,优化XGBoost模型的max_depth、min_child_weight和gamma等参数。结果:优化后的XGBoost模型具有较好的性能,AUC为0.85。关键的超参数包括min_child_weight = 1, max_depth = 5, gamma = 0.3, subsample = 0.9, colsample_bytree = 0.7, reg_alpha = 0.0007, learning_rate = 0.14, n_estimators = 123。该模型的准确率为0.926,召回率为0.945,精密度为0.934,f1评分为0.939,表明该模型具有较高的预测准确度和敏感性与特异性之间的平衡。结论:本研究提出了一个强大的基于xgboost的模型来预测老年外科患者的POD,证明了机器学习(ML)在临床风险评估中的潜力。借助模型平衡的性能指标和较高的准确性,医生可以在临床环境中识别高危患者并及时实施干预。后续的调查应该集中在整合到临床工作流程和外部验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

AI-delirium guard: Predictive modeling of postoperative delirium in elderly surgical patients.

AI-delirium guard: Predictive modeling of postoperative delirium in elderly surgical patients.

AI-delirium guard: Predictive modeling of postoperative delirium in elderly surgical patients.

AI-delirium guard: Predictive modeling of postoperative delirium in elderly surgical patients.

Introduction: In older patients, postoperative delirium (POD) is a major complication that can result in greater morbidity, longer hospital stays, and higher healthcare expenses. Accurate prediction models for POD can enhance patient outcomes by guiding preventative strategies. This study utilizes advanced machine learning techniques to develop a predictive model for POD using comprehensive perioperative data.

Methods: We examined information from the National Surgical Quality Improvement Program (NSQIP), which included 17,000 patients who were over 65 and undergoing different types of surgery. The dataset included variables such as patient demographics (age, sex), comorbidities (diabetes, cardiovascular diseases, pre-existing dementia), surgical details (type, duration), anesthesia type and dosage, and postoperative outcomes. Categorical variables were encoded numerically, and data standardization was applied to ensure normal distribution. A range of machine learning approaches were assessed such as Decision Trees and Random Forests. Based on the greatest Area Under the Curve (AUC) from Receiver Operating Characteristic (ROC) analysis, the final model was chosen. Hyperparameter tuning was performed using GridSearchCV, optimizing parameters like max_depth, min_child_weight, and gamma for XGBoost model.

Results: The optimized XGBoost model demonstrated superior performance, achieving an AUC of 0.85. Key hyperparameters included min_child_weight = 1, max_depth = 5, gamma = 0.3, subsample = 0.9, colsample_bytree = 0.7, reg_alpha = 0.0007, learning_rate = 0.14, and n_estimators = 123. The model exhibited an accuracy of 0.926, recall of 0.945, precision of 0.934, and an F1-score of 0.939, depicting a higher level of predictive accuracy & balance between sensitivity and specificity.

Conclusion: This study proposes a strong XGBoost-based model to predict POD in older surgical patients, demonstrating the potential of Machine Learning (ML) in clinical risk assessment. With the help of the model's balanced performance indicators and high accuracy, physicians may identify high-risk patients and promptly execute interventions in clinical settings. Subsequent investigations ought to concentrate on integration into clinical workflows and external validation.

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来源期刊
PLoS ONE
PLoS ONE 生物-生物学
CiteScore
6.20
自引率
5.40%
发文量
14242
审稿时长
3.7 months
期刊介绍: PLOS ONE is an international, peer-reviewed, open-access, online publication. PLOS ONE welcomes reports on primary research from any scientific discipline. It provides: * Open-access—freely accessible online, authors retain copyright * Fast publication times * Peer review by expert, practicing researchers * Post-publication tools to indicate quality and impact * Community-based dialogue on articles * Worldwide media coverage
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