Slavine Nikolai V, Seiler Stephen J, McColl Roderick W, Lenkinski Robert E
Translational Research, Department of Radiology, UT Southwestern Medical Center, 5323 Harry Hines Boulevard, Dallas, TX 75390-9061, USA.
Breast Imaging, Department of Radiology, UT Southwestern Medical Center, 5323 Harry Hines Boulevard, Dallas, TX 75390-9061, USA.
Phys Med. 2017 Jul;39:164-173. doi: 10.1016/j.ejmp.2017.06.025. Epub 2017 Jul 5.
To evaluate in clinical use a rapidly converging, efficient iterative deconvolution algorithm (RSEMD) for improving the quantitative accuracy of previously reconstructed breast images by a commercial positron emission mammography (PEM) scanner.
The RSEMD method was tested on imaging data from clinical Naviscan Flex Solo II PEM scanner. This method was applied to anthropomorphic like breast phantom data and patient breast images previously reconstructed with Naviscan software to determine improvements in image resolution, signal to noise ratio (SNR) and contrast to noise ratio (CNR).
In all of the patients' breast studies the improved images proved to have higher resolution, contrast and lower noise as compared with images reconstructed by conventional methods. In general, the values of CNR reached a plateau at an average of 6 iterations with an average improvement factor of about 2 for post-reconstructed Flex Solo II PEM images. Improvements in image resolution after the application of RSEMD have also been demonstrated.
A rapidly converging, iterative deconvolution algorithm with a resolution subsets-based approach (RSEMD) that operates on patient DICOM images has been used for quantitative improvement in breast imaging. The RSEMD method can be applied to PEM images to enhance the resolution and contrast in cancer diagnosis to monitor the tumor progression at the earliest stages.
评估一种快速收敛、高效的迭代反卷积算法(RSEMD)在临床应用中的效果,该算法用于提高商用正电子发射乳腺成像(PEM)扫描仪先前重建的乳腺图像的定量准确性。
在临床Naviscan Flex Solo II PEM扫描仪的成像数据上测试RSEMD方法。将该方法应用于类人体乳腺模型数据以及先前用Naviscan软件重建的患者乳腺图像,以确定图像分辨率、信噪比(SNR)和对比噪声比(CNR)的改善情况。
在所有患者的乳腺研究中,与传统方法重建的图像相比,改进后的图像具有更高的分辨率、对比度和更低的噪声。一般来说,对于重建后的Flex Solo II PEM图像,CNR值在平均6次迭代时达到平稳状态,平均改善因子约为2。应用RSEMD后图像分辨率也得到了提高。
一种基于分辨率子集的快速收敛迭代反卷积算法(RSEMD)已用于对患者DICOM图像进行定量改进,以提高乳腺成像质量。RSEMD方法可应用于PEM图像,以提高癌症诊断中的分辨率和对比度,从而在最早阶段监测肿瘤进展。