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White matter hyperintensity and stroke lesion segmentation and differentiation using convolutional neural networks

机译:利用卷积神经网络对白质高信号和中风病灶进行分割和区分

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摘要

White matter hyperintensities (WMH) are a feature of sporadic small vessel disease also frequently observed in magnetic resonance images (MRI) of healthy elderly subjects. The accurate assessment of WMH burden is of crucial importance for epidemiological studies to determine association between WMHs, cognitive and clinical data; their causes, and the effects of new treatments in randomized trials. The manual delineation of WMHs is a very tedious, costly and time consuming process, that needs to be carried out by an expert annotator (e.g. a trained image analyst or radiologist). The problem of WMH delineation is further complicated by the fact that other pathological features (i.e. stroke lesions) often also appear as hyperintense regions. Recently, several automated methods aiming to tackle the challenges of WMH segmentation have been proposed. Most of these methods have been specifically developed to segment WMH in MRI but cannot differentiate between WMHs and strokes. Other methods, capable of distinguishing between different pathologies in brain MRI, are not designed with simultaneous WMH and stroke segmentation in mind. Therefore, a task specific, reliable, fully automated method that can segment and differentiate between these two pathological manifestations on MRI has not yet been fully identified. In this work we propose to use a convolutional neural network (CNN) that is able to segment hyperintensities and differentiate between WMHs and stroke lesions. Specifically, we aim to distinguish between WMH pathologies from those caused by stroke lesions due to either cortical, large or small subcortical infarcts. The proposed fully convolutional CNN architecture, called uResNet, that comprised an analysis path, that gradually learns low and high level features, followed by a synthesis path, that gradually combines and up-samples the low and high level features into a class likelihood semantic segmentation. Quantitatively, the proposed CNN architecture is shown to outperform other well established and state-of-the-art algorithms in terms of overlap with manual expert annotations. Clinically, the extracted WMH volumes were found to correlate better with the Fazekas visual rating score than competing methods or the expert-annotated volumes. Additionally, a comparison of the associations found between clinical risk-factors and the WMH volumes generated by the proposed method, was found to be in line with the associations found with the expert-annotated volumes.
机译:白质高信号(WMH)是偶发性小血管疾病的特征,在健康的老年受试者的磁共振图像(MRI)中也经常观察到。对WMH负担的准确评估对于流行病学研究确定WMH,认知和临床数据之间的关联至关重要。它们的原因以及随机试验中新疗法的效果。 WMH的手动描述是一个非常繁琐,昂贵且耗时的过程,需要由专业注释者(例如,受过训练的图像分析员或放射科医生)执行。 WMH划定的问题由于其他病理特征(即中风病灶)通常也表现为高强度区域而变得更加复杂。最近,已经提出了几种旨在解决WMH分割挑战的自动化方法。这些方法中的大多数已经专门开发用于在MRI中分割WMH,但无法区分WMH和中风。其他在脑部MRI能够区分不同病理的方法中,并未同时考虑WMH和中风分割的设计。因此,尚未完全确定一种可以在MRI上区分和区分这两种病理表现的任务特定,可靠,全自动的方法。在这项工作中,我们建议使用卷积神经网络(CNN),该网络能够分割高强度并区分WMH和中风病灶。具体而言,我们旨在区分WMH病理学与由皮质,大或小皮质下梗死所致的中风病变所引起的病理。拟议的完全卷积CNN体系结构称为uResNet,该结构包括一条分析路径,该路径逐渐学习低层和高层特征,然后是一条综合路径,该路径逐渐将低层和高层特征合并并上采样为一类似然语义分段。从数量上看,在与手动专家注释的重叠方面,建议的CNN架构表现出优于其他完善的和最新的算法。在临床上,发现提取的WMH量与Fazekas视觉评分相比,与竞争方法或专家注释的量具有更好的相关性。此外,发现临床风险因素与通过所提出的方法生成的WMH量之间的关联性比较与专家注释的量之间的关联性一致。

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