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Multimodality image registration in the head‐and‐neck using a deep learning‐derived synthetic CT as a bridge

机译:使用深层学习衍生的合成CT作为桥梁的头部和颈部中的多模图像登记

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摘要

Purpose To develop and demonstrate the efficacy of a novel head‐and‐neck multimodality image registration technique using deep‐learning‐based cross‐modality synthesis. Methods and Materials Twenty‐five head‐and‐neck patients received magnetic resonance (MR) and computed tomography (CT) (CT aligned ) scans on the same day with the same immobilization. Fivefold cross validation was used with all of the MR‐CT pairs to train a neural network to generate synthetic CTs from MR images. Twenty‐four of 25 patients also had a separate CT without immobilization (CT non‐aligned ) and were used for testing. CT non‐aligned 's were deformed to the synthetic CT, and compared to CT non‐aligned registered to MR. The same registrations were performed from MR to CT non‐aligned and from synthetic CT to CT non‐aligned . All registrations used B‐splines for modeling the deformation, and mutual information for the objective. Results were evaluated using the 95% Hausdorff distance among spinal cord contours, landmark error, inverse consistency, and Jacobian determinant of the estimated deformation fields. Results When large initial rigid misalignment is present, registering CT to MRI‐derived synthetic CT aligns the cord better than a direct registration. The average landmark error decreased from 9.8?±?3.1?mm in MR→CT non‐aligned to 6.0?±?2.1?mm in CT synth →CT non‐aligned deformable registrations. In the CT to MR direction, the landmark error decreased from 10.0?±?4.3?mm in CT non‐aligned →MR deformable registrations to 6.6?±?2.0?mm in CT non‐aligned →CT synth deformable registrations. The Jacobian determinant had an average value of 0.98. The proposed method also demonstrated improved inverse consistency over the direct method. Conclusions We showed that using a deep learning‐derived synthetic CT in lieu of an MR for MR→CT and CT→MR deformable registration offers superior results to direct multimodal registration.
机译:目的要开发和展示使用基于深度学习的横向形态合成的新型头部和颈部多模图像登记技术的功效。方法和材料二十五名头颈患者接受磁共振(MR)和计算断层扫描(CT)(CT)(CT)扫描在同一天的同一天,同样固定。与所有MR-CT对一起使用五倍交叉验证,以训练神经网络以从MR图像产生合成CTS。 25例25名患者中的24名也有一个单独的CT而无需固定(CT不排列)并用于测试。 CT不准对准的S变形为合成CT,与注册到MR的CT未对准的CT相比。从MR至CT未对准和合成CT至CT不准对准,进行相同的注册。所有注册使用的B样条用于建模变形,以及目标的相互信息。使用脊髓轮廓的95%Hausdorff距离来评估结果,估计变形场的突出区误差,逆一致性和雅各比的雅孚决定簇。结果当存在大的初始刚性未对准时,将CT注册到MRI衍生的合成CT,比直接注册更好地对准绳索。在MR→CT中的平均地标误差下降到9.8±3.1?mm,在CT合成→CT非对准可变形注册中,在6.0°→±2.1Ω2.1?mm。在CT到MR方向上,地标误差从10.0°(在CT不结对齐的→MR可变形的注册中)从10.0°→4.3Ω·mm减小到6.6?±2.0?2.0?2.0?2.0?2.0?2.0?2.0在CT不结盟→CT合成器可变形注册中。雅各比的决定因素的平均值为0.98。所提出的方法还证明了通过直接方法提高的逆一致性。结论我们表明,使用深度学习衍生的合成CT代替MR→CT和CT MR→MR可变形注册,可提供优异的结果,以指导多式联运注册。

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