Modeling 4D Changes in Pathological Anatomy using Domain Adaptation: Analysis of TBI Imaging using a Tumor Database.

Bo Wang, Marcel Prastawa, Avishek Saha, Suyash P Awate, Andrei Irimia, Micah C Chambers, Paul M Vespa, John D Van Horn, Valerio Pascucci, Guido Gerig
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引用次数: 10

Abstract

Analysis of 4D medical images presenting pathology (i.e., lesions) is significantly challenging due to the presence of complex changes over time. Image analysis methods for 4D images with lesions need to account for changes in brain structures due to deformation, as well as the formation and deletion of new structures (e.g., edema, bleeding) due to the physiological processes associated with damage, intervention, and recovery. We propose a novel framework that models 4D changes in pathological anatomy across time, and provides explicit mapping from a healthy template to subjects with pathology. Moreover, our framework uses transfer learning to leverage rich information from a known source domain, where we have a collection of completely segmented images, to yield effective appearance models for the input target domain. The automatic 4D segmentation method uses a novel domain adaptation technique for generative kernel density models to transfer information between different domains, resulting in a fully automatic method that requires no user interaction. We demonstrate the effectiveness of our novel approach with the analysis of 4D images of traumatic brain injury (TBI), using a synthetic tumor database as the source domain.

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使用域适应建模病理解剖的4D变化:使用肿瘤数据库分析TBI成像。
由于随着时间的推移存在复杂的变化,因此对呈现病理(即病变)的4D医学图像的分析具有很大的挑战性。对于有病变的4D图像,图像分析方法需要考虑到脑结构因变形而发生的变化,以及与损伤、干预和恢复相关的生理过程所导致的新结构的形成和缺失(如水肿、出血)。我们提出了一个新的框架来模拟病理解剖随时间的4D变化,并提供从健康模板到病理受试者的明确映射。此外,我们的框架使用迁移学习来利用来自已知源域的丰富信息,其中我们有一组完全分割的图像,从而为输入目标域产生有效的外观模型。自动四维分割方法采用了一种新颖的生成核密度模型域自适应技术,在不同域之间传递信息,实现了不需要用户交互的全自动分割方法。我们通过使用合成肿瘤数据库作为源域,对创伤性脑损伤(TBI)的4D图像进行分析,证明了我们的新方法的有效性。
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Mapping Dynamic Changes in Ventricular Volume onto Baseline Cortical Surfaces in Normal Aging, MCI, and Alzheimer's Disease. A Dynamical Clustering Model of Brain Connectivity Inspired by the N -Body Problem. Modeling 4D Changes in Pathological Anatomy using Domain Adaptation: Analysis of TBI Imaging using a Tumor Database. PARP1 gene variation and microglial activity on [11C]PBR28 PET in older adults at risk for Alzheimer's disease. A Graph-Based Integration of Multimodal Brain Imaging Data for the Detection of Early Mild Cognitive Impairment (E-MCI).
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