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A Review on Computer-Aided Modelling and Quantification of PET-CT Images for Accurate Segmentation to Bring Imagination to Life

机译:宠物CT图像计算机辅助建模和量化的综述,以便对生命带来想象力

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Image segmentation is a process of dividing image into smaller parts to identify the individual objects. Often, this process helps in the quantification of digital images related to disease complications for metabolic process. This work reports on the use of computer-aided modelling tools and rapid prototyping technology to document, preserve and reproduce in three dimensions, and historic machines and mechanisms are used for accurate medical diagnosis. Epidemiological and clinical trials have confirmed the greater incidence and prevalence of deaths due to the inability to acquire qualitative information from the acquisition of images in primary stage itself. Rapid prototyping gives a better understanding of clinical and physiologic mechanisms of various disorders and pain, lesion detection. In image segmentation process, thresholding method is suitable for defining optimal value for identification and detection of region of interest. The standard uptake value (SUV) is based on selecting threshold value to utilize a similarity metric between the grey level of image and data points obtained from the threshold values. This is based on the intensities or inhomogeneity of clustering framework. Affinity propagation is used for images as a matrix by measuring the square patches from similarity texture. A major challenge in computer vision is to extract this information directly from the images available to us, help users, and to see and feel as an actual part in order to bring a computer image to life. Actually, the framework is given by PET-CT images which is used to identify and detect malignant tissues in a human body with accurate measurements of SUVs. This process involves ROI identification, segmentation, rendering and SUV functional quantification for promising results. The results obtained from computer modelling are transformed into real substance by rapid prototyping technology to feel and provide accurate diagnosis to patient.
机译:图像分割是将图像分成较小部分以识别各个对象的过程。通常,该过程有助于定量与代谢过程的疾病并发症相关的数字图像。这项工作报告了使用计算机辅助建模工具和快速原型制作技术,以三维记录,保护和再现,以及历史机器和机制用于准确的医学诊断。流行病学和临床试验已经证实了更大的发病和死亡的发生率由于无法获得来自收购初级阶段本身图像的定性信息。快速原型制作能够更好地理解各种疾病和疼痛,病变检测的临床和生理机制。在图像分割过程中,阈值化方法适用于定义识别和检测感兴趣区域的最佳值。标准摄取值(SUV)基于选择阈值,以利用从阈值获得的图像的灰度级和数据点之间的相似性度量。这是基于集群框架的强度或不均匀性。通过测量来自相似性纹理的方形贴片,亲和力传播作为矩阵作为矩阵。计算机愿景中的一项重大挑战是直接从可用的图像中提取此信息,帮助用户,并视为实际部分,以便将计算机图像带到生命。实际上,该框架由PET-CT图像给出,用于鉴定和检测人体中的恶性组织,以精确测量SUV。该过程涉及ROI识别,分割,渲染和SUV功能量化,用于有前途的结果。从计算机建模获得的结果通过快速原型技术转变为真实物质,感受和为患者提供准确的诊断。

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