Xinli Ma, Jie Zhao, Ming Yan, Yanping Zhang, Fan Li, Jing Jia, Lu Ding
Critical Medicine Department, The Second Hospital of Jilin University, Changchun, Jilin, China.
Nursing Department, The Second Hospital of Jilin University, Changchun, Jilin, China.
Front Comput Neurosci. 2025 Aug 18;19:1615576. doi: 10.3389/fncom.2025.1615576. eCollection 2025.
Diaphragm dysfunction represents a significant complication in elderly patients undergoing mechanical ventilation, often resulting in extended intensive care stays, unsuccessful weaning attempts, and increased healthcare expenditures. To address the deficiency of precise, real-time decision support in this context, a novel artificial intelligence framework is proposed, integrating imaging, physiological signals, and ventilator parameters. Initially, a hierarchical Transformer encoder is employed to extract modality-specific embeddings, followed by an attention-guided cross-modal fusion module and a temporal network for dynamic trend prediction. The framework was assessed using three public datasets, which are, the MIMIC-IV, eICU, and Chest X-ray. The proposed model achieved the highest accuracy (92.3% on MIMIC-IV, 91.8% on eICU, 92.0% on Chest X-ray) and surpassed all baselines in precision, recall, F1-score, and Matthews correlation coefficient. Additionally, the model's probability estimates were well-calibrated, and its SHAP-based explainability analysis identified ventilator volume and key imaging features as primary predictors. The clinical implications of this study are significant. By providing precise and interpretable predictions, the proposed model has the potential to transform critical care practices by offering a pathway to more effective and personalized interventions for high-risk patients.
膈肌功能障碍是老年机械通气患者的一个重要并发症,常导致重症监护时间延长、撤机尝试失败以及医疗费用增加。为了解决这一背景下精确实时决策支持的不足,提出了一种新型人工智能框架,该框架整合了成像、生理信号和呼吸机参数。首先,使用分层Transformer编码器提取特定模态的嵌入,然后是注意力引导的跨模态融合模块和用于动态趋势预测的时间网络。使用三个公共数据集(即MIMIC-IV、eICU和胸部X光)对该框架进行了评估。所提出的模型达到了最高准确率(在MIMIC-IV上为92.3%,在eICU上为91.8%,在胸部X光上为92.0%),并在精确率、召回率、F1分数和马修斯相关系数方面超过了所有基线。此外,该模型的概率估计经过了良好校准,其基于SHAP的可解释性分析确定呼吸机容量和关键成像特征为主要预测因素。这项研究的临床意义重大。通过提供精确且可解释的预测,所提出的模型有可能通过为高危患者提供更有效和个性化干预的途径来改变重症监护实践。