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DWI-Based Neural Fingerprinting Technology: A Preliminary Study on Stroke Analysis

机译:基于DWI的神经指纹技术:笔划分析的初步研究

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摘要

Stroke is a common neural disorder in neurology clinics. Magnetic resonance imaging (MRI) has become an important tool to assess the neural physiological changes under stroke, such as diffusion weighted imaging (DWI) and diffusion tensor imaging (DTI). Quantitative analysis of MRI images would help medical doctors to localize the stroke area in the diagnosis in terms of structural information and physiological characterization. However, current quantitative approaches can only provide localization of the disorder rather than measure physiological variation of subtypes of ischemic stroke. In the current study, we hypothesize that each kind of neural disorder would have its unique physiological characteristics, which could be reflected by DWI images on different gradients. Based on this hypothesis, a DWI-based neural fingerprinting technology was proposed to classify subtypes of ischemic stroke. The neural fingerprint was constructed by the signal intensity of the region of interest (ROI) on the DWI images under different gradients. The fingerprint derived from the manually drawn ROI could classify the subtypes with accuracy 100%. However, the classification accuracy was worse when using semiautomatic and automatic method in ROI segmentation. The preliminary results showed promising potential of DWI-based neural fingerprinting technology in stroke subtype classification. Further studies will be carried out for enhancing the fingerprinting accuracy and its application in other clinical practices.
机译:中风是神经病学诊所中常见的神经疾病。磁共振成像(MRI)已成为评估中风后神经生理变化的重要工具,例如弥散加权成像(DWI)和弥散张量成像(DTI)。 MRI图像的定量分析将有助于医生根据结构信息和生理特征在诊断中定位卒中区域。但是,当前的定量方法只能提供疾病的局部性,而不能测量缺血性卒中亚型的生理变化。在当前的研究中,我们假设每种神经疾病都有其独特的生理特征,这可以通过不同梯度的DWI图像反映出来。基于这一假设,提出了一种基于DWI的神经指纹技术对缺血性中风的亚型进行分类。通过不同梯度下DWI图像上感兴趣区域(ROI)的信号强度构造神经指纹。从手动绘制的ROI得出的指纹可以对子类型进行分类,准确度为100%。但是,在ROI细分中使用半自动和自动方法时,分类准确性较差。初步结果表明,基于DWI的神经指纹技术在中风亚型分类中具有广阔的应用前景。将进行进一步的研究以提高指纹识别的准确性及其在其他临床实践中的应用。

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