首页> 外文期刊>AJNR. American journal of neuroradiology >Transcranial MR Imaging-Guided Focused Ultrasound Interventions Using Deep Learning Synthesized CT
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Transcranial MR Imaging-Guided Focused Ultrasound Interventions Using Deep Learning Synthesized CT

机译:经颅MR成像引导的聚焦超声干预使用深度学习合成CT

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BACKGROUND AND PURPOSE: Transcranial MR imaging-guided focused ultrasound is a promising novel technique to treat multiple disorders and diseases. Planning for transcranial MR imaging-guided focused ultrasound requires both a CT scan for skull density estimation and treatment-planning simulation and an MR imaging for target identification. It is desirable to simplify the clinical workflow of transcranial MR imaging-guided focused ultrasound treatment planning. The purpose of this study was to examine the feasibility of deep learning techniques to convert MR imaging ultrashort TE images directly to synthetic CT of the skull images for use in transcranial MR imaging-guided focused ultrasound treatment planning. MATERIALS AND METHODS: The U-Net neural network was trained and tested on data obtained from 41 subjects (mean age, 66.4 +/- 11.0 years; 15 women). The derived neural network model was evaluated using a k-fold cross-validation method. Derived acoustic properties were verified by comparing the whole skull-density ratio from deep learning synthesized CT of the skull with the reference CT of the skull. In addition, acoustic and temperature simulations were performed using the deep learning CT to predict the target temperature rise during transcranial MR imaging-guided focused ultrasound. RESULTS: The derived deep learning model generates synthetic CT of the skull images that are highly comparable with the true CT of the skull images. Their intensities in Hounsfield units have a spatial correlation coefficient of 0.80 +/- 0.08, a mean absolute error of 104.57 +/- 21.33 HU, and a subject-wise correlation coefficient of 0.91. Furthermore, deep learning CT of the skull is reliable in the skull-density ratio estimation (r = 0.96). A simulation study showed that both the peak target temperatures and temperature distribution from deep learning CT are comparable with those of the reference CT. CONCLUSIONS: The deep learning method can be used to simplify workflow associated with transcranial MR imaging-guided focused ultrasound.
机译:背景和目的:经颅MR成像引导的聚焦超声是一种治疗多种疾病和疾病的有前途的新技术。用于经颅MR成像引导的聚焦超声的规划需要CT扫描用于颅缘密度估计和治疗计划模拟和用于目标识别的MR成像。期望简化经颅MR影像引导的超声治疗计划的临床工作流程。本研究的目的是研究深度学习技术的可行性,将MR Imagort TE图像转换为颅骨图像的合成CT,以用于经颅MR显影引导的超声处理规划。材料和方法:U-Net神经网络接受培训和测试从41个科目获得的数据(平均年龄,66.4 +/- 11.0岁; 15名女性)。使用K折叠交叉验证方法评估衍生的神经网络模型。通过将来自颅骨的深度学习合成CT的深度学习合成CT的整体颅浓度比与颅骨的参考CT进行比较来验证衍生的声学性质。另外,使用深度学习CT进行声学和温度模拟,以预测经扫描MR显影引导的超声检查期间的目标温度升高。结果:派生的深度学习模型产生与颅骨图像的真实CT相比的颅骨图像的合成CT。它们在Hounsfield单元中的强度具有0.80 +/- 0.08的空间相关系数,平均绝对误差为104.57 +/- 21.33 Hu,主题相关系数为0.91。此外,颅骨的深度学习CT在颅氏密度估计(R = 0.96)中可靠。仿真研究表明,深度学习CT的峰值目标温度和温度分布均与参考CT的峰值相当。结论:深度学习方法可用于简化与经颅MR影像引导聚焦超声相关的工作流程。

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    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

    Siemens Healthcare GmbH Erlangen Germany;

    Siemens Med Solut USA Malvern PA USA;

    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

    Univ Maryland Sch Med Dept Diagnost Radiol &

    Nucl Med 670 W Baltimore St Baltimore MD 21201 USA;

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  • 正文语种 eng
  • 中图分类 放射医学;
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