Generation of synthetic CT from MRI for MRI-based attenuation correction of brain PET images using radiomics and machine learning.

Medical physics Pub Date : 2025-05-12 DOI:10.1002/mp.17867
Amin Hoseinipourasl, Gholam-Ali Hossein-Zadeh, Peyman Sheikhzadeh, Hossein Arabalibeik, Shaghayegh Karimi Alavijeh, Habib Zaidi, Mohammad Reza Ay
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Abstract

Background: Accurate quantitative PET imaging in neurological studies requires proper attenuation correction. MRI-guided attenuation correction in PET/MRI remains challenging owing to the lack of direct relationship between MRI intensities and linear attenuation coefficients.

Purpose: This study aims at generating accurate patient-specific synthetic CT volumes, attenuation maps, and attenuation correction factor (ACF) sinograms with continuous values utilizing a combination of machine learning algorithms, image processing techniques, and voxel-based radiomics feature extraction approaches.

Methods: Brain MR images of ten healthy volunteers were acquired using IR-pointwise encoding time reduction with radial acquisition (IR-PETRA) and VIBE-Dixon techniques. synthetic CT (SCT) images, attenuation maps, and attenuation correction factors (ACFs) were generated using the LightGBM, a fast and accurate machine learning algorithm, from the radiomics-based and image processing-based feature maps of MR images. Additionally, ultra-low-dose CT images of the same volunteers were acquired and served as the standard of reference for evaluation. The SCT images, attenuation maps, and ACF sinograms were assessed using qualitative and quantitative evaluation metrics and compared against their corresponding reference images, attenuation maps, and ACF sinograms.

Results: The voxel-wise and volume-wise comparison between synthetic and reference CT images yielded an average mean absolute error of 60.75 ± 8.8 HUs, an average structural similarity index of 0.88 ± 0.02, and an average peak signal-to-noise ratio of 32.83 ± 2.74 dB. Additionally, we compared MRI-based attenuation maps and ACF sinograms with their CT-based counterparts, revealing average normalized mean absolute errors of 1.48% and 1.33%, respectively.

Conclusion: Quantitative assessments indicated higher correlations and similarities between LightGBM-synthesized CT and Reference CT images. Moreover, the cross-validation results showed the possibility of producing accurate SCT images, MRI-based attenuation maps, and ACF sinograms. This might spur the implementation of MRI-based attenuation correction on PET/MRI and dedicated brain PET scanners with lower computational time using CPU-based processors.

利用放射组学和机器学习从MRI生成合成CT,用于基于MRI的脑PET图像衰减校正。
背景:在神经学研究中准确定量的PET成像需要适当的衰减校正。由于MRI强度与线性衰减系数之间缺乏直接关系,MRI引导的PET/MRI衰减校正仍然具有挑战性。目的:本研究旨在结合机器学习算法、图像处理技术和基于体素的放射组学特征提取方法,生成具有连续值的精确的患者特异性合成CT体积、衰减图和衰减校正因子(ACF)图。方法:采用IR-PETRA和VIBE-Dixon技术获取10例健康志愿者的脑MR图像。使用LightGBM(一种快速准确的机器学习算法)从基于放射组学和基于图像处理的MR图像特征图中生成合成CT (SCT)图像、衰减图和衰减校正因子(ACFs)。同时获取同一志愿者的超低剂量CT图像,作为评价的参考标准。采用定性和定量评价指标对SCT图像、衰减图和ACF图进行评估,并与相应的参考图像、衰减图和ACF图进行比较。结果:合成CT图像与参考CT图像在体素和体积上的平均绝对误差为60.75±8.8 HUs,平均结构相似指数为0.88±0.02,平均峰值信噪比为32.83±2.74 dB。此外,我们将基于mri的衰减图和ACF图与基于ct的衰减图进行了比较,显示平均归一化平均绝对误差分别为1.48%和1.33%。结论:定量评价显示lightgbm合成CT与参考CT图像具有较高的相关性和相似性。此外,交叉验证结果显示可以生成准确的SCT图像、基于mri的衰减图和ACF图。这可能会刺激在PET/MRI和专用脑PET扫描仪上实现基于MRI的衰减校正,使用基于cpu的处理器减少计算时间。
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