Functional MRI-based machine learning strategy for prediction of postoperative delirium in cardiac surgery patients: A secondary analysis of a prospective observational study

IF 5 2区 医学 Q1 ANESTHESIOLOGY
Mei-Yan Zhou , Yi-Bing Shi , Sheng-Jie Bai , Yao Lu , Yan Zhang , Wei Zhang , Wei Wang , Yang-Zi Zhu , Jun-Li Cao , Li-Wei Wang
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引用次数: 0

Abstract

Study objective

Delirium is a common complication after cardiac surgery and is associated with poor prognosis. An effective delirium prediction model could identify high-risk patients who might benefit from targeted prevention strategies. We introduce machine learning models that employ resting-state functional MRI datasets obtained before surgery to predict postoperative delirium.

Design

A secondary analysis of a prospective observational study.

Setting

The study was conducted at one tertiary hospital in China.

Patients

The study involved 103 patients who underwent preoperative functional MRI scan and cardiac valve replacement.

Interventions

None.

Measurements

Delirium was assessed twice daily for the first seven postoperative days using the Confusion Assessment Method. We used three whole-brain functional connectivity (FC) measures (parcel-wise connectivity matrix, mean FC and degree of FC) and trained three machine models, namely, random forest, logistic regression, and linear support vector machine, to distinguish delirium patients from patients without delirium. The top performing model was selected for further training with functional MRI datasets and clinical variables.

Main results

This study included 103 participants. A total of 29 participants (28.2 %) met postoperative delirium criteria. Based solely on functional MRI datasets, the random forest model trained using the degree of FC achieved the highest accuracy (0.864), precision (0.887), specificity (0.894), F1 score (0.859) and area under the curve (0.924), and this model was further optimized for accuracy (0.879), sensitivity (0.909), F1 score (0.882) and area under the curve (0.928) by fusing clinical variables. The most discriminative nodes for predicting postoperative delirium were located in the default, cingulo-opercular, and frontoparietal networks.

Conclusions

This study found that the random forest model using preoperative functional MRI data and clinical variables was accurate in identifying patients at high risk of developing delirium after cardiac surgery.
基于功能核磁共振的机器学习策略预测心脏手术患者术后谵妄:一项前瞻性观察研究的二次分析
研究目的谵妄是心脏手术后常见的并发症,预后较差。一个有效的谵妄预测模型可以识别高危患者,他们可能受益于有针对性的预防策略。我们引入机器学习模型,利用术前获得的静息状态功能MRI数据集来预测术后谵妄。设计前瞻性观察性研究的二次分析。本研究在中国一家三级医院进行。患者:本研究纳入103例患者,术前进行了功能性MRI扫描和心脏瓣膜置换术。干预:测量术后前7天使用混淆评估法评估谵妄,每天两次。我们使用三种全脑功能连通性(FC)度量(包裹连接矩阵,平均FC和FC度)并训练三种机器模型,即随机森林,逻辑回归和线性支持向量机,以区分谵妄患者和非谵妄患者。选择表现最好的模型进行功能MRI数据集和临床变量的进一步训练。本研究共纳入103名受试者。共有29名参与者(28.2%)符合术后谵妄标准。仅在功能MRI数据集上,采用FC度训练的随机森林模型准确率最高(0.864),精密度最高(0.887),特异性最高(0.894),F1评分最高(0.859),曲线下面积最高(0.924),融合临床变量进一步优化模型准确率为0.879,灵敏度为0.909,F1评分最高(0.882),曲线下面积最高(0.928)。预测术后谵妄最具鉴别性的节点位于默认网络、扣带回-眼窝网络和额顶叶网络。结论本研究发现利用术前功能MRI数据和临床变量建立的随机森林模型能够准确识别心脏手术后谵妄高危患者。
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来源期刊
CiteScore
7.40
自引率
4.50%
发文量
346
审稿时长
23 days
期刊介绍: The Journal of Clinical Anesthesia (JCA) addresses all aspects of anesthesia practice, including anesthetic administration, pharmacokinetics, preoperative and postoperative considerations, coexisting disease and other complicating factors, cost issues, and similar concerns anesthesiologists contend with daily. Exceptionally high standards of presentation and accuracy are maintained. The core of the journal is original contributions on subjects relevant to clinical practice, and rigorously peer-reviewed. Highly respected international experts have joined together to form the Editorial Board, sharing their years of experience and clinical expertise. Specialized section editors cover the various subspecialties within the field. To keep your practical clinical skills current, the journal bridges the gap between the laboratory and the clinical practice of anesthesiology and critical care to clarify how new insights can improve daily practice.
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