基于自动化机器学习的退行性脊柱疾病术后患者谵妄预测模型。

Automated machine learning-based model for the prediction of delirium in patients after surgery for degenerative spinal disease.

机构信息

Outpatient Department, The Second Affiliated Hospital of Nanchang University, Nanchang, China.

Medical Innovation Center, the First Affiliated Hospital of Nanchang University, Nanchang, China.

出版信息

CNS Neurosci Ther. 2023 Jan;29(1):282-295. doi: 10.1111/cns.14002. Epub 2022 Oct 18.

Abstract

OBJECTIVE

This study used machine learning algorithms to identify critical variables and predict postoperative delirium (POD) in patients with degenerative spinal disease.

METHODS

We included 663 patients who underwent surgery for degenerative spinal disease and received general anesthesia. The LASSO method was used to screen essential features associated with POD. Clinical characteristics, preoperative laboratory parameters, and intraoperative variables were reviewed and were used to construct nine machine learning models including a training set and validation set (80% of participants), and were then evaluated in the rest of the study sample (20% of participants). The area under the receiver-operating characteristic curve (AUROC) and Brier scores were used to compare the prediction performances of different models. The eXtreme Gradient Boosting algorithms (XGBOOST) model was used to predict POD. The SHapley Additive exPlanations (SHAP) package was used to interpret the XGBOOST model. Data of 49 patients were prospectively collected for model validation.

RESULTS

The XGBOOST model outperformed the other classifier models in the training set (area under the curve [AUC]: 92.8%, 95% confidence interval [CI]: 90.7%-95.0%), validation set (AUC: 87.0%, 95% CI: 80.7%-93.3%). This model also achieved the lowest Brier Score. Twelve vital variables, including age, serum albumin, the admission-to-surgery time interval, C-reactive protein level, hypertension, intraoperative blood loss, intraoperative minimum blood pressure, cardiovascular-cerebrovascular disease, smoking, alcohol consumption, pulmonary disease, and admission-intraoperative maximum blood pressure difference, were selected. The XGBOOST model performed well in the prospective cohort (accuracy: 85.71%).

CONCLUSION

A machine learning model and a web predictor for delirium after surgery for the degenerative spinal disease were successfully developed to demonstrate the extent of POD risk during the perioperative period, which could guide appropriate preventive measures for high-risk patients.

摘要

目的

本研究使用机器学习算法识别退行性脊柱疾病患者术后谵妄(POD)的关键变量并进行预测。

方法

我们纳入了 663 例行退行性脊柱疾病手术并接受全身麻醉的患者。使用 LASSO 方法筛选与 POD 相关的关键特征。回顾了临床特征、术前实验室参数和术中变量,并用于构建包括训练集和验证集(80%的参与者)在内的 9 个机器学习模型,然后在其余研究样本(20%的参与者)中进行评估。采用受试者工作特征曲线下面积(AUROC)和 Brier 评分比较不同模型的预测性能。采用极端梯度提升算法(XGBOOST)模型预测 POD。采用 SHapley Additive exPlanations(SHAP)包对 XGBOOST 模型进行解释。前瞻性收集了 49 例患者的数据用于模型验证。

结果

在训练集(曲线下面积 [AUC]:92.8%,95%置信区间 [CI]:90.7%-95.0%)和验证集(AUC:87.0%,95%CI:80.7%-93.3%)中,XGBOOST 模型均优于其他分类器模型,该模型还具有最低的 Brier 评分。选择了 12 个关键变量,包括年龄、血清白蛋白、入院至手术时间间隔、C 反应蛋白水平、高血压、术中失血量、术中最低血压、心血管-脑血管疾病、吸烟、饮酒、肺部疾病和入院-术中最大血压差。XGBOOST 模型在前瞻性队列中表现良好(准确性:85.71%)。

结论

成功开发了用于退行性脊柱疾病术后谵妄的机器学习模型和网络预测器,以展示围手术期 POD 风险的程度,从而可以为高危患者提供适当的预防措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b58f/9804056/f9cd9b51f0a6/CNS-29-282-g004.jpg

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