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首页> 外文期刊>NeuroImage: Clinical >Combined analysis of sMRI and fMRI imaging data provides accurate disease markers for hearing impairment
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Combined analysis of sMRI and fMRI imaging data provides accurate disease markers for hearing impairment

机译:sMRI和fMRI成像数据的组合分析为听力障碍提供了准确的疾病标记

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In this research, we developed a robust two-layer classifier that can accurately classify normal hearing (NH) from hearing impaired (HI) infants with congenital sensori-neural hearing loss (SNHL) based on their Magnetic Resonance (MR) images. Unlike traditional methods that examine the intensity of each single voxel, we extracted high-level features to characterize the structural MR images (sMRI) and functional MR images (fMRI). The Scale Invariant Feature Transform (SIFT) algorithm was employed to detect and describe the local features in sMRI. For fMRI, we constructed contrast maps and detected the most activated/de-activated regions in each individual. Based on those salient regions occurring across individuals, the bag-of-words strategy was introduced to vectorize the contrast maps. We then used a two-layer model to integrate these two types of features together. With the leave-one-out cross-validation approach, this integrated model achieved an AUC score of 0.90. Additionally, our algorithm highlighted several important brain regions that differentiated between NH and HI children. Some of these regions, e.g. planum temporale and angular gyrus, were well known auditory and visual language association regions. Others, e.g. the anterior cingulate cortex (ACC), were not necessarily expected to play a role in differentiating HI from NH children and provided a new understanding of brain function and of the disorder itself. These important brain regions provided clues about neuroimaging markers that may be relevant to the future use of functional neuroimaging to guide predictions about speech and language outcomes in HI infants who receive a cochlear implant. This type of prognostic information could be extremely useful and is currently not available to clinicians by any other means. Highlights ? We probe brain structural and functional changes in hearing impaired (HI) infants. ? We build a robust two-layer classifier that integrates sMRI and fMRI data. ? This integrated model accurately separates HI from normal infants (AUC 0.9). ? Our method detects important brain regions different between HI and normal infants. ? Our method can include diverse types of data and be applied to other diseases.
机译:在这项研究中,我们开发了一种强大的两层分类器,该分类器可以根据磁共振(MR)图像对患有先天性感觉神经听力损失(SNHL)的听力障碍(HI)婴儿进行正常听力(NH)的准确分类。与检查每个单个体素强度的传统方法不同,我们提取了高级特征来表征结构MR图像(sMRI)和功能性MR图像(fMRI)。尺度不变特征变换(SIFT)算法用于检测和描述sMRI中的局部特征。对于功能磁共振成像,我们构建了对比图,并检测了每个个体中激活/停用最频繁的区域。基于个体中出现的那些显着区域,引入了词袋策略来对对比度图进行矢量化处理。然后,我们使用两层模型将这两种类型的功能集成在一起。使用留一法交叉验证方法,此集成模型的AUC得分为0.90。此外,我们的算法突出显示了区分NH和HI儿童的几个重要的大脑区域。其中一些地区,例如颞颞叶和角回是众所周知的听觉和视觉语言的关联区域。其他,例如前扣带回皮层(ACC)不一定会在区分HI和NH儿童方面发挥作用,并提供了对脑功能和疾病本身的新认识。这些重要的大脑区域提供了有关神经影像标记的线索,这些线索可能与功能神经影像的未来使用有关,以指导接受人工耳蜗的HI婴儿有关言语和语言结局的预测。这种类型的预后信息可能非常有用,并且目前尚无法通过其他任何方式提供给临床医生。强调 ?我们探讨了听力障碍(HI)婴儿的大脑结构和功能变化。 ?我们构建了一个强大的两层分类器,该分类器整合了sMRI和fMRI数据。 ?该集成模型可将HI与正常婴儿准确区分开(AUC 0.9)。 ?我们的方法可以检测到重症婴儿和正常婴儿之间重要的大脑区域。 ?我们的方法可以包括各种类型的数据,并可以应用于其他疾病。

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