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Deep Learning based Respiratory Pattern Classification and Applications in PET/CT Motion Correction

机译:基于深度学习的呼吸模式分类及其在PET / CT运动校正中的应用

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Respiratory motion has to be corrected in PET/CT imaging for precise tumor detection and quantification. The optimal motion correction methods for regular breathers and irregular breathers could be different. In this study, we developed deep learning based methods to automatically classify patient breathing patterns and investigated the impact of breathing pattern variability on gating performance. We implemented a hybrid neural network consisting of convolutional (Conv) layers, recurrent layers (LSTM, long short-term memory) and a linear classifier to differentiate breathing patterns. 1295 respiratory traces collected using RPM (Real-time Position Management) system were used for training and testing, as well as additional traces acquired using the Anzai system. We optimized the deep neural network with respect to data preprocessing, augmentation, weighted loss function and generalization capability. The results showed that the proposed deep learning model has reached a high prediction accuracy, with a sensitivity of 92.0% and a specificity of 91.8%. Using phase gating approach, for regular breathers, end-expiration phase gating can effectively reduce the respiratory motion. In contrast, for irregular breathers, larger amount of intra-gate motion was present in the gated PET/CT images and more sophisticated motion correction methods are required.
机译:必须在PET / CT成像中纠正呼吸运动,才能精确检测和定量肿瘤。常规呼吸和不规则呼吸的最佳运动校正方法可能不同。在这项研究中,我们开发了基于深度学习的方法来自动对患者的呼吸模式进行分类,并研究了呼吸模式变异性对门控性能的影响。我们实现了由卷积(Conv)层,递归层(LSTM,长短期记忆)和线性分类器组成的混合神经网络,以区分呼吸模式。使用RPM(实时位置管理)系统收集的1295条呼吸道用于训练和测试,以及使用Anzai系统获得的其他迹线。我们在数据预处理,扩充,加权损失函数和泛化能力方面优化了深度神经网络。结果表明,提出的深度学习模型具有较高的预测精度,灵敏度为92.0%,特异性为91.8%。使用相位门控方法,对于常规呼吸者,呼气末期相位门控可以有效地减少呼吸运动。相反,对于不规则的呼吸,门控PET / CT图像中存在大量门内运动,因此需要更复杂的运动校正方法。

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