Iterative Image Processing for Early Diagnostic of Beta-Amyloid Plaque Deposition in Pre-Clinical Alzheimer's Disease Studies.

Nikolai V Slavine, Padmakar V Kulkarni, Roderick W McColl
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引用次数: 5

Abstract

Purpose: To test and evaluate an efficient iterative image processing strategy to improve the quality of sub-optimal pre-clinical PET images. A novel iterative resolution subsets-based method to reduce noise and enhance resolution (RSEMD) has been demonstrated on examples of PET imaging studies of Alzheimer's disease (AD) plaques deposition in mice brains.

Materials and methods: The RSEMD method was applied to imaging studies of non-invasive detection of beta-amyloid plaque in transgenic mouse models of AD. Data acquisition utilized a Siemens Inveon® micro PET/CT device. Quantitative uptake of the tracer in control and AD mice brains was determined by counting the extent of plaque deposition by histological staining. The pre-clinical imaging software inviCRO® was used for fitting the recovery PET images to the mouse brain atlas and obtaining the time activity curves (TAC) from different brain areas.

Results: In all of the AD studies the post-processed images proved to have higher resolution and lower noise as compared with images reconstructed by conventional OSEM method. In general, the values of SNR reached a plateau at around 10 iterations with an improvement factor of about 2 over sub-optimal PET brain images.

Conclusions: A rapidly converging, iterative deconvolution image processing algorithm with a resolution subsets-based approach RSEMD has been used for quantitative studies of changes in Alzheimer's pathology over time. The RSEMD method can be applied to sub-optimal clinical PET brain images to improve image quality to diagnostically acceptable levels and will be crucial in order to facilitate diagnosis of AD progression at the earliest stages.

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迭代图像处理用于阿尔茨海默病临床前研究中β -淀粉样斑块沉积的早期诊断。
目的:测试和评估一种有效的迭代图像处理策略,以提高临床前PET图像的质量。一种新的基于迭代分辨率子集的方法来降低噪声和提高分辨率(RSEMD)已经在阿尔茨海默病(AD)斑块沉积的小鼠大脑PET成像研究中得到了证明。材料与方法:应用RSEMD方法对转基因AD小鼠模型进行无创检测β -淀粉样蛋白斑块的影像学研究。数据采集采用西门子Inveon®微型PET/CT设备。通过组织学染色计数斑块沉积程度来确定对照和AD小鼠脑内示踪剂的定量摄取。采用临床前成像软件inviCRO®对恢复PET图像与小鼠脑图谱进行拟合,获得不同脑区时间活动曲线(TAC)。结果:在所有的AD研究中,与传统的OSEM方法重建的图像相比,后处理后的图像具有更高的分辨率和更低的噪声。一般来说,信噪比在大约10次迭代时达到平台,与次优PET脑图像相比,改进因子约为2。结论:基于分辨率子集的RSEMD方法快速收敛、迭代反卷积图像处理算法已被用于定量研究阿尔茨海默病病理随时间的变化。RSEMD方法可以应用于次优的临床PET脑图像,将图像质量提高到诊断可接受的水平,对于促进早期诊断AD进展至关重要。
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