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A new automated method for analysis of rCBF-SPECT images based on the active-shape algorithm: normal values.

机译:一种基于主动形状算法分析rCBF-spECT图像的新方法:正常值。

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摘要

Most nuclear medicine clinicians use only visual assessment when interpreting regional cerebral blood flow (rCBF) from single-photon emission computed tomography (SPECT) images in clinical practice. The aims of this study were to develop a new, easy to use, automated method for quantification of rCBF-SPECT and to create normal values by using the method on a normal population. We developed a 3-dimensional method based on a brain-shaped model and the active-shape algorithm. The method defines the surface shape of the brain and then projects the maximum counts 0-1·5 cm deep for designated surface points. These surface projection values are divided into cortical regions representing the different lobes and presented relative to the whole cortex, cerebellum or cerebellar maximum. (99m) Tc-hexa methyl propylene amine oxime (HMPAO) SPECT was performed on 30 healthy volunteers with a mean age of 74 years (range 64-98). The ability of the active-shape algorithm to define the shape of the brain was satisfactory when visually scrutinized. The results of the quantification show rCBF values in the frontal, temporal and parietal lobes of 87-88% using cerebellum as the reference. There were no significant differences in normal rCBF values between male and female subjects and only a weak relation between rCBF and age. In conclusion, our new automated method was able to quantify rCBF-SPECT images and create normal values in ranges as expected. Further studies are needed to assess the clinical value of this method and the normal values.
机译:在临床实践中,大多数核医学临床医生在从单光子发射计算机断层扫描(SPECT)图像解释局部脑血流量(rCBF)时仅使用视觉评估。这项研究的目的是开发一种定量rCBF-SPECT的简便易行的新自动化方法,并通过对正常人群使用该方法创建正常值。我们开发了一种基于大脑形状模型和主动形状算法的3维方法。该方法定义了大脑的表面形状,然后针对指定的表面点投影了最大计数0-1·5 cm深。这些表面投影值分为代表不同叶的皮质区域,并相对于整个皮质,小脑或小脑最大值呈现。 (99m)Tc-六甲基丙烯胺肟(HMPAO)SPECT是对30名平均年龄为74岁(范围64-98)的健康志愿者进行的。视觉检查时,主动形状算法定义大脑形状的能力令人满意。定量结果显示,以小脑为参照,额叶,颞叶和顶叶的rCBF值为87-88%。男性和女性受试者的正常rCBF值之间无显着差异,而rCBF与年龄之间仅存在弱关系。总之,我们的新自动化方法能够量化rCBF-SPECT图像并按预期在范围内创建正常值。需要进一步研究以评估该方法的临床价值和正常价值。

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