论文标题
实时MR-THERMOMETIRETREMERY对呼吸相关的伪影进行深度校正
Deep correction of breathing-related artifacts in real-time MR-thermometry
论文作者
论文摘要
实时MR成像已在临床上适应用于监测热疗法,因为它可以同时提供与解剖信息同时提供的温度图。然而,由于温度伪像是由呼吸道和生理运动引起的,因此基于质子的谐振频率温度计仍然具有挑战性。如果未经校正,这些伪影会导致温度估计的严重错误并损害治疗指导。在这项研究中,我们评估了对腹部MR-thermometry中运动相关误差的在线校正的深度学习。为此,设计了卷积神经网络(CNN),以从高温之前的制备学习阶段中获得的图像学习明显的温度扰动。设计的CNN的输入是最新的图像,不需要运动替代。在随后的热疗过程中,最近的幅度图像用作CNN模型的输入,以便为当前温度图生成在线校正。该方法的伪影抑制性能是在12名自由呼吸志愿者上评估的,在所有检查的情况下都发现了坚固且无伪影。此外,使用高强度聚焦超声评估了体内消融的温度准确性和精度。在提出的工作流的不同阶段所涉及的所有计算均设计与治疗过程的临床时间限制兼容。
Real-time MR-imaging has been clinically adapted for monitoring thermal therapies since it can provide on-the-fly temperature maps simultaneously with anatomical information. However, proton resonance frequency based thermometry of moving targets remains challenging since temperature artifacts are induced by the respiratory as well as physiological motion. If left uncorrected, these artifacts lead to severe errors in temperature estimates and impair therapy guidance. In this study, we evaluated deep learning for on-line correction of motion related errors in abdominal MR-thermometry. For this, a convolutional neural network (CNN) was designed to learn the apparent temperature perturbation from images acquired during a preparative learning stage prior to hyperthermia. The input of the designed CNN is the most recent magnitude image and no surrogate of motion is needed. During the subsequent hyperthermia procedure, the recent magnitude image is used as an input for the CNN-model in order to generate an on-line correction for the current temperature map. The method's artifact suppression performance was evaluated on 12 free breathing volunteers and was found robust and artifact-free in all examined cases. Furthermore, thermometric precision and accuracy was assessed for in vivo ablation using high intensity focused ultrasound. All calculations involved at the different stages of the proposed workflow were designed to be compatible with the clinical time constraints of a therapeutic procedure.