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首页> 外文期刊>Medical Physics >A deep learning method for producing ventilation images from 4DCT: First comparison with technegas SPECT ventilation
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A deep learning method for producing ventilation images from 4DCT: First comparison with technegas SPECT ventilation

机译:从4DCT产生通风图像的深度学习方法:与Technegas Spect通风的首先比较

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摘要

Purpose The purpose of this study is to develop a deep learning (DL) method for producing four‐dimensional computed tomography (4DCT) ventilation imaging and to evaluate the accuracy of the DL‐based ventilation imaging against single‐photon emission‐computed tomography (SPECT) ventilation imaging (SPECT‐VI). The performance of the DL‐based method is assessed by comparing with density change‐ and Jacobian‐based (HU and JAC) methods. Materials and methods Fifty patients with esophagus or lung cancer who underwent thoracic radiotherapy were enrolled in this study. For each patient, 4DCT scans paired with 99mTc‐Technegas SPECT/CT were acquired before the first radiotherapy treatment. 4DCT and SPECT/CT were first rigidly registered using MIMvista and converted to data matrix using MATLAB, and then transferred to a DL model based on U‐net for correlating 4DCT features and SPECT‐VI. Two forms of 4DCT dataset [(a) ten phases and (b) two phases of peak‐exhalation and peak‐inhalation] as input are studied. Tenfold cross‐validation procedure was used to evaluate the performance of the DL model. For comparative evaluation, HU and JAC methodologies are used to calculate specific ventilation imaging based on 4DCT (CTVI) for each patient. The voxel‐wise Spearman’s correlation was evaluated over the whole lung between each of CTVI and corresponding SPECT‐VI. The SPECT‐VI and produced CTVIs were segmented into high, median, and low functional lung (HFL, MFL, and LFL) regions. The spatial overlap of corresponding HFL, MFL, and LFL for each CTVI against SPECT‐VI was also evaluated using the dice similarity coefficient (DSC). The averaged DSC of functional lung regions was calculated and statistically analyzed with a one‐factor ANONA model among different methods. Results The voxel‐wise Spearman r s values were (0.22?±?0.31), (?0.09?±?0.18), and (0.73?±?0.16)/(0.71?±?0.17) for the CTVI HU , CTVI JAC , and CTVI DL(1) /CTVI DL(2) . These results showed the DL method yielded the strongest correlation with SPECT‐VI. Using the DSC as the spatial overlap metric, we found that the CTVI HU , CTVI JAC , and CTVI DL(1) /CTVI DL(2) methods achieved averaged DSC values for all patients to be (0.45?±?0.08), (0.33?±?0.04), and (0.73?±?0.09)/(0.71?±?0.09), respectively. The results demonstrated that the DL method yielded the highest similarity with SPECT‐VI with the prominently significant difference ( P ??10 ?7 ). Conclusions This study developed a DL method for producing CTVI and performed a validation against SPECT‐VI. The results demonstrated that DL method can derive CTVI with greatly improved accuracy in comparison to HU and JAC methods. The produced ventilation images can be more accurate and useful for lung functional avoidance radiotherapy and treatment response modeling.
机译:目的本研究的目的是开发一种深度学习(DL)方法,用于产生四维计算断层扫描(4DCT)通风成像,并评估基于DL的通风成像对单光子发射计算断层扫描的精度(SPECT )通风成像(SPECT-VI)。通过与密度变化和基于Jacobian(HU和JAC)方法进行比较来评估基于DL的方法的性能。在本研究中注册了在本研究中进行了接受胸部放射治疗的食管或肺癌的五十患者。对于每位患者,在第一次放射治疗之前,在第一次放射治疗之前与99MTC-Technegas SPECT / CT配对的4DCT扫描。首先使用MIMVista刚性注册4DCT和SPECT / CT,并使用MATLAB转换为数据矩阵,然后基于U-Net转换为DL模型,用于相关4DCT功能和SPECT-VI。研究了两种形式的4DCT数据集[(a)十个阶段和(b)峰呼气和峰值吸入的两个相]。十倍交叉验证程序用于评估DL模型的性能。对于对比评估,Hu和Jac方法用于根据每位患者的4DCT(CTVI)计算特定通风成像。在CTVI和相应的SPECT-VI之间的整个肺部中评估了体素 - 明智的矛盾的相关性。 SPECT-VI和产生的CTVI被分段为高,中值和低函数肺(HFL,MFL和LFL)区域。使用骰子相似度系数(DSC)评估每个CTVI的相应HFL,MFL和LFL的空间重叠。在不同方法之间用单因素Anona模型计算和统计分析功能性肺区的平均DSC。结果Voxel-Wise Spearman Rs值(0.22≤x≤0.31),(0.09?±0.18),(0.73?±0.16)/(0.71?±0.16),CTVI Hu,CTVI Jac,和CTVI DL(1)/ CTVI DL(2)。这些结果表明DL方法产生与SPECT-VI的最强相关性。使用DSC作为空间重叠度量,我们发现CTVI HU,CTVI JAC和CTVI DL(1)/ CTVI DL(2)方法为所有患者的平均DSC值达到了(0.45?±0.08),( 0.33?±0.04),分别(0.73〜±0.09)/(0.71?±0.09)。结果表明,DL方法与SPECT-VI具有突出显着差异的最高相似性(P≤≤10?7)。结论本研究开发了一种用于生产CTVI并对SPECT-VI进行验证的DL方法。结果表明,与胡锦涛和JAC方法相比,DL方法可以通过大大提高的精度提高CTVI。产生的通风图像可以更准确,可用于肺功能避免放疗和治疗响应建模。

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