Department of Biomedical Engineering, Tel Aviv University, Israel.
Department of Orthopedics, Shamir Medical Center, Be'er Ya'akov, Israel.
NMR Biomed. 2022 Dec;35(12):e4807. doi: 10.1002/nbm.4807. Epub 2022 Aug 13.
High-resolution mapping of magnetic resonance imaging (MRI)'s transverse relaxation time (T ) can benefit many clinical applications by offering improved anatomic details, enhancing the ability to probe tissues' microarchitecture, and facilitating the identification of early pathology. Increasing spatial resolutions, however, decreases data's signal-to-noise ratio (SNR), particularly at clinical scan times. This impairs imaging quality, and the accuracy of subsequent radiological interpretation. Recently, principal component analysis (PCA) was employed for denoising diffusion-weighted MR images and was shown to be effective for improving parameter estimation in multiexponential relaxometry. This study combines the Marchenko-Pastur PCA (MP-PCA) signal model with the echo modulation curve (EMC) algorithm for denoising multiecho spin-echo (MESE) MRI data and improving the precision of EMC-generated single T relaxation maps. The denoising technique was validated on simulations, phantom scans, and in vivo brain and knee data. MESE scans were performed on a 3-T Siemens scanner. The acquired images were denoised using the MP-PCA algorithm and were then provided as input for the EMC T -fitting algorithm. Quantitative analysis of the denoising quality included comparing the standard deviation and coefficient of variation of T values, along with gold standard SNR estimation of the phantom scans. The presented denoising technique shows an increase in T maps' precision and SNR, while successfully preserving the morphological features of the tissue. Employing MP-PCA denoising as a preprocessing step decreases the noise-related variability of T maps produced by the EMC algorithm and thus increases their precision. The proposed method can be useful for a wide range of clinical applications by facilitating earlier detection of pathologies and improving the accuracy of patients' follow-up.
磁共振成像(MRI)的横向弛豫时间(T )的高分辨率映射可以通过提供改进的解剖细节、增强探测组织微观结构的能力以及促进早期病理学的识别,从而使许多临床应用受益。然而,增加空间分辨率会降低数据的信噪比(SNR),尤其是在临床扫描时间内。这会降低成像质量和后续放射学解释的准确性。最近,主成分分析(PCA)被用于扩散加权磁共振图像的去噪,并已被证明在多指数弛豫测量中有效提高参数估计的准确性。本研究将 Marchenko-Pastur PCA(MP-PCA)信号模型与回波调制曲线(EMC)算法相结合,用于对多回波自旋回波(MESE)MRI 数据进行去噪,并提高 EMC 生成的单 T 弛豫图的精度。该去噪技术在模拟、体模扫描以及体内脑和膝关节数据中进行了验证。MESE 扫描在一台 3-T 西门子扫描仪上进行。使用 MP-PCA 算法对采集到的图像进行去噪,然后将其作为 EMC T 拟合算法的输入。去噪质量的定量分析包括比较 T 值的标准差和变异系数,以及体模扫描的金标准 SNR 估计。所提出的去噪技术提高了 T 图的精度和 SNR,同时成功保留了组织的形态特征。将 MP-PCA 去噪作为预处理步骤,减少了 EMC 算法产生的 T 图的噪声相关变异性,从而提高了其精度。该方法可以通过促进更早地检测病变和提高患者随访的准确性,为广泛的临床应用提供帮助。