首页> 外文期刊>NeuroImage: Clinical >Medical image analysis methods in MR/CT-imaged acute-subacute ischemic stroke lesion: Segmentation, prediction and insights into dynamic evolution simulation models. A critical appraisal
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Medical image analysis methods in MR/CT-imaged acute-subacute ischemic stroke lesion: Segmentation, prediction and insights into dynamic evolution simulation models. A critical appraisal

机译:MR / CT成像的急性亚急性缺血性卒中病变的医学图像分析方法:对动态进化模拟模型的分割,预测和见解。批判性评估

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Over the last 15years, basic thresholding techniques in combination with standard statistical correlation-based data analysis tools have been widely used to investigate different aspects of evolution of acute or subacute to late stage ischemic stroke in both human and animal data. Yet, a wave of biology-dependent and imaging-dependent issues is still untackled pointing towards the key question: “how does an ischemic stroke evolve?” Paving the way for potential answers to this question, both magnetic resonance (MRI) and CT (computed tomography) images have been used to visualize the lesion extent, either with or without spatial distinction between dead and salvageable tissue. Combining diffusion and perfusion imaging modalities may provide the possibility of predicting further tissue recovery or eventual necrosis. Going beyond these basic thresholding techniques, in this critical appraisal, we explore different semi-automatic or fully automatic 2D/3D medical image analysis methods and mathematical models applied to human, animal (rats/rodents) and/or synthetic ischemic stroke to tackle one of the following three problems: (1) segmentation of infarcted and/or salvageable (also called penumbral) tissue, (2) prediction of final ischemic tissue fate (death or recovery) and (3) dynamic simulation of the lesion core and/or penumbra evolution. To highlight the key features in the reviewed segmentation and prediction methods, we propose a common categorization pattern. We also emphasize some key aspects of the methods such as the imaging modalities required to build and test the presented approach, the number of patients/animals or synthetic samples, the use of external user interaction and the methods of assessment (clinical or imaging-based). Furthermore, we investigate how any key difficulties, posed by the evolution of stroke such as swelling or reperfusion, were detected (or not) by each method. In the absence of any imaging-based macroscopic dynamic model applied to ischemic stroke, we have insights into relevant microscopic dynamic models simulating the evolution of brain ischemia in the hope to further promising and challenging 4D imaging-based dynamic models. By depicting the major pitfalls and the advanced aspects of the different reviewed methods, we present an overall critique of their performances and concluded our discussion by suggesting some recommendations for future research work focusing on one or more of the three addressed problems. Highlights ? Survey of segmentation, prediction and ischemic stroke dynamic evolution modeling ? Common biology/imaging-dependent issues encountered in ischemic stroke lesions ? No image-based macroscopic dynamic model simulating the evolution of acute stroke ? Further recommendations for future medical image-analysis methods applied to stroke.
机译:在过去的15年中,基本的阈值处理技术与基于标准统计相关性的数据分析工具相结合,已广泛用于研究人类和动物数据中急性或亚急性至晚期缺血性卒中演变的不同方面。然而,仍未解开一波依赖生物学和影像学的问题,指向一个关键问题:“缺血性中风如何发展?”不论有无死角组织和可抢救组织之间的空间区别,磁共振(MRI)和CT(计算机断层扫描)图像均已被用于可视化病变范围,为潜在的问题铺平了道路。结合扩散和灌注成像方式可以提供预测进一步组织恢复或最终坏死的可能性。在这些关键的评估中,我们超越了这些基本的阈值处理技术,探索了适用于人,动物(大鼠/啮齿动物)和/或合成缺血性卒中的不同半自动或全自动2D / 3D医学图像分析方法和数学模型以下三个问题:(1)梗塞和/或可挽救的(也称为半影的)组织的分割;(2)最终缺血组织命运(死亡或恢复)的预测;(3)病变核心和/或动态模拟半影演化。为了突出显示已审查的细分和预测方法中的关键特征,我们提出了一种常见的分类模式。我们还强调了该方法的一些关键方面,例如构建和测试该方法所需的成像方式,患者/动物或合成样本的数量,外部用户交互的使用以及评估方法(基于临床或基于成像的方法) )。此外,我们研究了每种方法如何检测(或不检测)由中风演变引起的任何关键困难,例如肿胀或再灌注。在没有将任何基于影像的宏观动态模型应用于缺血性卒中的情况下,我们对模拟脑缺血演变的相关微观动态模型有深刻见解,以期进一步开发有前途且富有挑战性的基于4D影像的动态模型。通过描述不同审查方法的主要缺陷和高级方面,我们对它们的性能进行了全面的评论,并通过提出一些针对未来研究工作的建议来结束我们的讨论,这些建议着重于三个已解决的问题中的一个或多个。强调 ?分割,预测和缺血性卒中动态演变模型的调查缺血性中风病变中常见的生物学/影像依赖问题?没有基于图像的宏观动态模型来模拟急性中风的演变?进一步推荐用于卒中的未来医学图像分析方法。

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