论文标题
在卷积神经网络中,使用卷积长的短期记忆为全身动态PET进行无监督的框架间运动校正
Unsupervised inter-frame motion correction for whole-body dynamic PET using convolutional long short-term memory in a convolutional neural network
论文作者
论文摘要
全身动态PET中的受试者运动引入了框架间的不匹配,并严重影响参数成像。传统的非刚性注册方法通常在计算上是强度且耗时的。深度学习方法在快速速度方面可以实现高精度,但尚未考虑到示踪剂分布变化或全身范围。在这项工作中,我们开发了一个无监督的自动深度学习框架,以纠正框架间的身体运动。运动估计网络是一个卷积神经网络,具有组合卷积长的短期记忆层,充分利用动态的时间特征和空间信息。我们的数据集在90分钟的FDG全身动态PET扫描中包含27个受试者。与传统和深度学习基线相比,使用了9倍的交叉验证,我们证明了所提出的网络在增强的定性和定量空间对齐方面获得了卓越的性能,参数$ k_ {i} $和$ v_ {b} $图像以及显着降低了参数拟合误差。我们还展示了拟议的运动校正方法影响估计参数图像的下游分析的潜力,从而提高了将恶性与良性多代谢区域区分开的能力。一旦受过培训,我们提出的网络的运动估计推理时间比常规注册基线快460倍,表明其在临床环境中很容易应用。
Subject motion in whole-body dynamic PET introduces inter-frame mismatch and seriously impacts parametric imaging. Traditional non-rigid registration methods are generally computationally intense and time-consuming. Deep learning approaches are promising in achieving high accuracy with fast speed, but have yet been investigated with consideration for tracer distribution changes or in the whole-body scope. In this work, we developed an unsupervised automatic deep learning-based framework to correct inter-frame body motion. The motion estimation network is a convolutional neural network with a combined convolutional long short-term memory layer, fully utilizing dynamic temporal features and spatial information. Our dataset contains 27 subjects each under a 90-min FDG whole-body dynamic PET scan. With 9-fold cross-validation, compared with both traditional and deep learning baselines, we demonstrated that the proposed network obtained superior performance in enhanced qualitative and quantitative spatial alignment between parametric $K_{i}$ and $V_{b}$ images and in significantly reduced parametric fitting error. We also showed the potential of the proposed motion correction method for impacting downstream analysis of the estimated parametric images, improving the ability to distinguish malignant from benign hypermetabolic regions of interest. Once trained, the motion estimation inference time of our proposed network was around 460 times faster than the conventional registration baseline, showing its potential to be easily applied in clinical settings.