Chen Zhu, Liu Yuedan, Qin Zhibin, Li Haojie, Xie Siyuan, Fan Litian, Liu Qilin, Huang Jin
Department of Medical Engineering, West China Hospital, Sichuan University, Chengdu 610041, China.
Innovation Institute for Integration of Medicine and Engineering, West China Hospital, Sichuan University, Chengdu 610041, China.
Sensors (Basel). 2025 Aug 4;25(15):4790. doi: 10.3390/s25154790.
CT scanners are essential tools in modern medical imaging. Sudden failures of their X-ray tubes can lead to equipment downtime, affecting healthcare services and patient diagnosis. However, existing prediction methods based on a single model struggle to adapt to the multi-stage variation characteristics of tube lifespan and have limited modeling capabilities for temporal features. To address these issues, this paper proposes an intelligent prediction architecture for CT tubes' remaining useful life based on a dual-branch neural network. This architecture consists of two specialized branches: a residual self-attention BiLSTM (RSA-BiLSTM) and a multi-layer dilation temporal convolutional network (D-TCN). The RSA-BiLSTM branch extracts multi-scale features and also enhances the long-term dependency modeling capability for temporal data. The D-TCN branch captures multi-scale temporal features through multi-layer dilated convolutions, effectively handling non-linear changes in the degradation phase. Furthermore, a dynamic phase detector is applied to integrate the prediction results from both branches. In terms of optimization strategy, a dynamically weighted triplet mixed loss function is designed to adjust the weight ratios of different prediction tasks, effectively solving the problems of sample imbalance and uneven prediction accuracy. Experimental results using leave-one-out cross-validation (LOOCV) on six different CT tube datasets show that the proposed method achieved significant advantages over five comparison models, with an average MSE of 2.92, MAE of 0.46, and R of 0.77. The LOOCV strategy ensures robust evaluation by testing each tube dataset independently while training on the remaining five, providing reliable generalization assessment across different CT equipment. Ablation experiments further confirmed that the collaborative design of multiple components is significant for improving the accuracy of X-ray tubes remaining life prediction.
CT扫描仪是现代医学成像中的重要工具。其X射线管的突然故障可能导致设备停机,影响医疗服务和患者诊断。然而,现有的基于单一模型的预测方法难以适应管寿命的多阶段变化特征,并且对时间特征的建模能力有限。为了解决这些问题,本文提出了一种基于双分支神经网络的CT管剩余使用寿命智能预测架构。该架构由两个专门的分支组成:一个残差自注意力双向长短期记忆网络(RSA-BiLSTM)和一个多层扩张时间卷积网络(D-TCN)。RSA-BiLSTM分支提取多尺度特征,并增强对时间数据的长期依赖建模能力。D-TCN分支通过多层扩张卷积捕捉多尺度时间特征,有效处理退化阶段的非线性变化。此外,应用动态相位检测器来整合两个分支的预测结果。在优化策略方面,设计了一种动态加权三元组混合损失函数来调整不同预测任务的权重比,有效解决了样本不平衡和预测精度不均的问题。在六个不同的CT管数据集上使用留一法交叉验证(LOOCV)的实验结果表明,所提出的方法比五个比较模型具有显著优势,平均均方误差为2.92,平均绝对误差为0.46,相关系数为0.77。LOOCV策略通过在其余五个数据集上训练的同时独立测试每个管数据集来确保稳健评估,提供跨不同CT设备的可靠泛化评估。消融实验进一步证实,多个组件的协同设计对于提高X射线管剩余寿命预测的准确性具有重要意义。