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Development of Efficient Intensity Based Registration Techniques for Multi-modal Brain Images

机译:基于有效强度的多模式脑图像配准技术的发展

摘要

Recent advances in medical imaging have resulted in the development of many imaging techniques that capture various aspects of the patients anatomy and metabolism. These are accomplished with image registration: the task of transforming images on a common anatomical coordinate space. Image registration is one of the important task for multi-modal brain images, which has paramount importance in clinical diagnosis, leads to treatment of brain diseases. In many other applications, image registration characterizes anatomical variability, to detect changes in disease state over time, and by mapping functional information into anatomical space. This thesis is focused to explore intensity-based registration techniques to accomplish precise information with accurate transformation for multi-modal brain images. In this view, we addressed mainly three important issues of image registration both in the rigid and non-rigid framework, i.e. i) information theoretic based similarity measure for alignment measurement, ii) free form deformation (FFD) based transformation, and iii) evolutionary technique based optimization of the cost function. Mutual information (MI) is a widely used information theoretic similarity measure criterion for multi-modal brain image registration. MI only dense the quantitative aspects of information based on the probability of events. For rustication of the information of events, qualitative aspect i.e. utility or saliency is a necessitate factor for consideration. In this work, a novel similarity measure is proposed, which incorporates the utility information into mutual Information, known as Enhanced Mutual Information(EMI).It is found that the maximum information gain using EMI is higher as compared to that of other state of arts. The utility or saliency employed in EMI is a scale invariant parameter, and hence it may fail to register in case of projective and perspective transformations. To overcome this bottleneck, salient region (SR) based Enhance Mutual Information (SR-EMI)is proposed, a new similarity measure for robust and accurate registration. The proposed SR-EMI based registration technique is robust to register the multi-modal brain images at a faster rate with better alignment.
机译:医学成像的最新进展导致了许多成像技术的发展,这些成像技术捕获了患者解剖结构和新陈代谢的各个方面。这些都是通过图像配准来完成的:在共同的解剖坐标空间上转换图像的任务。图像配准是多模式脑部图像的重要任务之一,在临床诊断中最重要的是导致脑部疾病的治疗。在许多其他应用中,图像配准可表征解剖变异性,检测疾病状态随时间的变化以及通过将功能信息映射到解剖空间中。本文致力于探索基于强度的配准技术,以通过对多模式大脑图像进行精确转换来获得精确信息。在这种观点下,我们主要解决了刚性和非刚性框架中图像配准的三个重要问题,即:i)基于信息理论的对准测量相似性度量; ii)基于自由形式变形(FFD)的变换; iii)进化基于技术的成本函数优化。互信息(MI)是一种用于多模式脑图像配准的信息理论相似性度量标准。 MI仅基于事件的概率来密集化信息的定量方面。对于事件信息的质朴,定性方面,即效用或显着性是考虑的必要因素。在这项工作中,提出了一种新颖的相似性度量,该度量将实用程序信息合并到了互信息中,称为增强互信息(EMI)。发现与其他现有技术相比,使用EMI可获得的最大信息增益更高。 。 EMI中使用的效用或显着性是比例尺不变的参数,因此在投影变换和透视变换的情况下可能无法注册。为了克服这个瓶颈,提出了基于显着区域(SR)的增强互信息(SR-EMI),这是一种用于鲁棒和准确配准的新的相似性度量。所提出的基于SR-EMI的配准技术具有较强的鲁棒性,可以更快的速度配准更好的配准方式来配准多模式大脑图像。

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    Pradhan Smita;

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  • 年度 2016
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