A Systematic Review on the Use of Registration-Based Change Tracking Methods in Longitudinal Radiological Images.

Jeeho E Im, Muhammed Khalifa, Adriana V Gregory, Bradley J Erickson, Timothy L Kline
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Abstract

Registration is the process of spatially and/or temporally aligning different images. It is a critical tool that can facilitate the automatic tracking of pathological changes detected in radiological images and align images captured by different imaging systems and/or those acquired using different acquisition parameters. The longitudinal analysis of clinical changes has a significant role in helping clinicians evaluate disease progression and determine the most suitable course of treatment for patients. This study provides a comprehensive review of the role registration-based approaches play in automated change tracking in radiological imaging and explores the three types of registration approaches which include rigid, affine, and nonrigid registration, as well as methods of detecting and quantifying changes in registered longitudinal images: the intensity-based approach and the deformation-based approach. After providing an overview and background, we highlight the clinical applications of these methods, specifically focusing on computed tomography (CT) and magnetic resonance imaging (MRI) in tumors and multiple sclerosis (MS), two of the most heavily studied areas in automated change tracking. We conclude with a discussion and recommendation for future directions.

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关于在纵向放射图像中使用基于配准的变化跟踪方法的系统性综述。
配准是对不同图像进行空间和/或时间配准的过程。它是一种重要的工具,有助于自动跟踪放射图像中检测到的病理变化,并对不同成像系统和/或使用不同采集参数采集的图像进行配准。临床变化的纵向分析在帮助临床医生评估疾病进展和确定最适合患者的治疗方案方面发挥着重要作用。本研究全面回顾了基于配准的方法在放射成像自动变化跟踪中的作用,探讨了刚性配准、仿射配准和非刚性配准等三种配准方法,以及检测和量化配准纵向图像变化的方法:基于强度的方法和基于形变的方法。在介绍了概述和背景之后,我们重点介绍了这些方法的临床应用,特别是计算机断层扫描(CT)和磁共振成像(MRI)在肿瘤和多发性硬化症(MS)中的应用,这两个领域是自动变化跟踪研究最多的领域。最后,我们对未来的发展方向进行了讨论并提出了建议。
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