Department of Electrical Engineering, Indian Institute of Technology Roorkee, Roorkee, 247667, Uttarakhand, India.
Department of Civil Engineering, National Institute of Technology Raipur, Raipur, Chhatisgarh, 492010, India.
J Med Syst. 2016 May;40(5):122. doi: 10.1007/s10916-016-0478-5. Epub 2016 Apr 1.
Fusion of the functional image with an anatomical image provides additional diagnostic information. It is widely used in diagnosis, treatment planning, and follow-up of oncology. Functional image is a low-resolution pseudo color image representing the uptake of radioactive tracer that gives the important metabolic information. Whereas, anatomical image is a high-resolution gray scale image that gives structural details. Fused image should consist of all the anatomical details without any changes in the functional content. This is achieved through fusion in de-correlated color model and the choice of color model has greater impact on the fusion outcome. In the present work, suitability of different color models for functional and anatomical image fusion is studied. After converting the functional image into de-correlated color model, the achromatic component of functional image is fused with an anatomical image by using proposed nonsubsampled shearlet transform (NSST) based image fusion algorithm to get new achromatic component with all the anatomical details. This new achromatic and original chromatic channels of functional image are converted to RGB format to get fused functional and anatomical image. Fusion is performed in different color models. Different cases of SPECT-MRI images are used for this color model study. Based on visual and quantitative analysis of fused images, the best color model for the stated purpose is determined.
功能图像与解剖图像的融合提供了额外的诊断信息。它广泛应用于肿瘤的诊断、治疗计划和随访。功能图像是一种低分辨率的伪彩色图像,代表放射性示踪剂的摄取,提供重要的代谢信息。而解剖图像则是一种高分辨率的灰度图像,提供结构细节。融合图像应包含所有的解剖细节,而不改变功能内容。这可以通过在去相关颜色模型中进行融合来实现,颜色模型的选择对融合结果有更大的影响。在本工作中,研究了不同颜色模型在功能和解剖图像融合中的适用性。将功能图像转换为去相关颜色模型后,通过使用所提出的基于非下采样剪切波变换(NSST)的图像融合算法,将功能图像的非彩色分量与解剖图像融合,得到具有所有解剖细节的新非彩色分量。将新的非彩色分量和原始的功能图像的彩色分量转换为 RGB 格式,得到融合的功能和解剖图像。在不同的颜色模型中进行融合。该颜色模型研究使用了不同的 SPECT-MRI 图像案例。根据融合图像的视觉和定量分析,确定了最适合该目的的颜色模型。