Neuroimaging Insights: Structural Changes and Classification in Ménière's Disease.

IF 2.6 2区 医学 Q1 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY Ear and Hearing Pub Date : 2024-09-01 Epub Date: 2024-05-24 DOI:10.1097/AUD.0000000000001519
Jing Li, Qing Cheng, Yangming Leng, Hui Ma, Fan Yang, Bo Liu, Wenliang Fan
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Abstract

Objectives: This study aimed to comprehensively investigate the neuroanatomical alterations associated with idiopathic Ménière's disease (MD) using voxel-based morphometry and surface-based morphometry techniques. The primary objective was to explore nuanced changes in gray matter volume, cortical thickness, fractal dimension, gyrification index, and sulcal depth in MD patients compared with healthy controls (HC). Additionally, we sought to develop a machine learning classification model utilizing these neuroimaging features to effectively discriminate between MD patients and HC.

Design: A total of 55 patients diagnosed with unilateral MD and 70 HC were enrolled in this study. Voxel-based morphometry and surface-based morphometry were employed to analyze neuroimaging data and identify structural differences between the two groups. The selected neuroimaging features were used to build a machine learning classification model for distinguishing MD patients from HC.

Results: Our analysis revealed significant reductions in gray matter volume in MD patients, particularly in frontal and cingulate gyri. Distinctive patterns of alterations in cortical thickness were observed in brain regions associated with emotional processing and sensory integration. Notably, the machine learning classification model achieved an impressive accuracy of 84% in distinguishing MD patients from HC. The model's precision and recall for MD and HC demonstrated robust performance, resulting in balanced F1-scores. Receiver operating characteristic curve analysis further confirmed the discriminative power of the model, supported by an area under the curve value of 0.92.

Conclusions: This comprehensive investigation sheds light on the intricate neuroanatomical alterations in MD. The observed gray matter volume reductions and distinct cortical thickness patterns emphasize the disease's impact on neural structure. The high accuracy of our machine learning classification model underscores its diagnostic potential, providing a promising avenue for identifying MD patients. These findings contribute to our understanding of MD's neural underpinnings and offer insights for further research exploring the functional implications of structural changes.

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神经影像学见解:梅尼埃病的结构变化和分类。
研究目的本研究旨在利用体素形态计量学和表面形态计量学技术全面研究与特发性梅尼埃病(MD)相关的神经解剖学改变。主要目的是探索与健康对照组(HC)相比,特发性梅尼埃病(MD)患者的灰质体积、皮质厚度、分形维度、回旋指数和沟深度的细微变化。此外,我们还试图利用这些神经影像学特征开发一种机器学习分类模型,以有效区分 MD 患者和 HC:设计:本研究共招募了 55 名确诊为单侧 MD 的患者和 70 名 HC。采用基于体素的形态计量学和基于表面的形态计量学分析神经影像学数据,并确定两组患者的结构差异。选定的神经影像学特征被用于建立一个机器学习分类模型,以区分 MD 患者和 HC 患者:我们的分析表明,MD 患者的灰质体积明显减少,尤其是额叶和扣带回。在与情绪处理和感觉整合相关的脑区,我们观察到了皮质厚度的独特变化模式。值得注意的是,机器学习分类模型在区分 MD 患者和 HC 患者方面取得了 84% 的惊人准确率。该模型对 MD 和 HC 的精确度和召回率表现强劲,F1 分数均衡。接收者操作特征曲线分析进一步证实了该模型的分辨能力,其曲线下面积值为 0.92:这项全面的研究揭示了多发性硬化症复杂的神经解剖学改变。观察到的灰质体积减少和不同的皮质厚度模式强调了该疾病对神经结构的影响。我们的机器学习分类模型的高准确性突显了其诊断潜力,为识别多发性硬化症患者提供了一个前景广阔的途径。这些发现有助于我们了解 MD 的神经基础,并为进一步研究探索结构变化的功能影响提供了启示。
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来源期刊
Ear and Hearing
Ear and Hearing 医学-耳鼻喉科学
CiteScore
5.90
自引率
10.80%
发文量
207
审稿时长
6-12 weeks
期刊介绍: From the basic science of hearing and balance disorders to auditory electrophysiology to amplification and the psychological factors of hearing loss, Ear and Hearing covers all aspects of auditory and vestibular disorders. This multidisciplinary journal consolidates the various factors that contribute to identification, remediation, and audiologic and vestibular rehabilitation. It is the one journal that serves the diverse interest of all members of this professional community -- otologists, audiologists, educators, and to those involved in the design, manufacture, and distribution of amplification systems. The original articles published in the journal focus on assessment, diagnosis, and management of auditory and vestibular disorders.
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