基于机器学习的慢性主观性耳鸣认知功能改变诊断:一项事件相关电位研究。

IF 2.6 2区 医学 Q1 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY Ear and Hearing Pub Date : 2025-01-20 DOI:10.1097/AUD.0000000000001623
Jihoo Kim, Kang Hyeon Lim, Euijin Kim, Seunghu Kim, Hong Jin Kim, Ye Hwan Lee, Sungkean Kim, June Choi
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引用次数: 0

摘要

目的:由于缺乏客观的诊断标准,耳鸣的诊断主要依赖于主观评价。然而,其神经病理特征可以用脑电图(EEG)客观量化。尽管已有研究,但耳鸣的病理生理机制尚不清楚。本研究的目的是通过比较耳鸣患者和健康对照(hc)的认知事件相关电位,更深入地了解耳鸣的神经机制。此外,我们利用机器学习技术探索了脑电图衍生特征作为耳鸣生物标志物的潜力。设计:48名参与者(24名耳鸣患者和24名hc患者)接受了全面的听力学评估和脑电图记录。我们采用听觉奇球范式提取中线电极的N2和P3分量,探讨耳鸣与认知功能的关系。此外,计算了N2-和p3相关区域的电流源密度。使用线性支持向量机分类器将耳鸣患者与hc患者区分开来。结果:耳鸣患者在AFz、Fz、Cz和Pz电极上P3峰幅度明显降低,而在Cz电极上N2峰潜伏期明显延迟。来源分析显示,耳鸣患者双侧梭状回、双侧楔、双侧颞回和双侧脑岛的N2活性明显降低。相关分析显示医院焦虑抑郁量表抑郁评分与左脑岛、右脑岛和左颞下回N2源活动显著相关。在传感器水平和源水平上,共使用18个特征来区分耳鸣和hc患者,其最佳分类性能显示验证准确率为85.42%,验证灵敏度为87.50%,验证特异性为83.33%。结论:本研究表明,耳鸣患者在认知相关的古怪范式中表现出显著的神经加工改变,包括P3波幅降低,N2潜伏期延迟,认知相关的古怪范式中特定脑区源活动减少。N2源活动与医院焦虑抑郁量表-抑郁评分之间的相关性提示耳鸣生理症状与其对耳鸣患者的神经影响之间存在潜在联系。这些发现强调了耳鸣中N2-和p3相关特征的潜在诊断意义,同时也强调了耳鸣中颞叶和枕叶之间的相互作用。此外,机器学习技术的应用在区分耳鸣患者和hc方面显示出可靠的结果,加强了N2和P3特征作为耳鸣生物标志物的可行性。
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Machine Learning-Based Diagnosis of Chronic Subjective Tinnitus With Altered Cognitive Function: An Event-Related Potential Study.

Objectives: Due to the absence of objective diagnostic criteria, tinnitus diagnosis primarily relies on subjective assessments. However, its neuropathological features can be objectively quantified using electroencephalography (EEG). Despite the existing research, the pathophysiology of tinnitus remains unclear. The objective of this study was to gain a deeper comprehension of the neural mechanisms underlying tinnitus through the comparison of cognitive event-related potentials in patients with tinnitus and healthy controls (HCs). Furthermore, we explored the potential of EEG-derived features as biomarkers for tinnitus using machine learning techniques.

Design: Forty-eight participants (24 patients with tinnitus and 24 HCs) underwent comprehensive audiological assessments and EEG recordings. We extracted N2 and P3 components of the midline electrodes using an auditory oddball paradigm, to explore the relationship between tinnitus and cognitive function. In addition, the current source density for N2- and P3-related regions of interest was computed. A linear support vector machine classifier was used to distinguish patients with tinnitus from HCs.

Results: The P3 peak amplitudes were significantly diminished in patients with tinnitus at the AFz, Fz, Cz, and Pz electrodes, whereas the N2 peak latencies were significantly delayed at Cz electrode. Source analysis revealed notably reduced N2 activities in bilateral fusiform gyrus, bilateral cuneus, bilateral temporal gyrus, and bilateral insula of patients with tinnitus. Correlation analysis revealed significant associations between the Hospital Anxiety and Depression Scale-Depression scores and N2 source activities at left insula, right insula, and left inferior temporal gyrus. The best classification performance showed a validation accuracy of 85.42%, validation sensitivity of 87.50%, and validation specificity of 83.33% in distinguishing between patients with tinnitus and HCs by using a total of 18 features in both sensor- and source-level.

Conclusions: This study demonstrated that patients with tinnitus exhibited significantly altered neural processing during the cognitive-related oddball paradigm, including lower P3 amplitudes, delayed N2 latency, and reduced source activities in specific brain regions in cognitive-related oddball paradigm. The correlations between N2 source activities and Hospital Anxiety and Depression Scale-Depression scores suggest a potential link between the physiological symptoms of tinnitus and their neural impact on patients with tinnitus. Such findings underscore the potential diagnostic relevance of N2- and P3-related features in tinnitus, while also highlighting the interplay between the temporal lobe and occipital lobe in tinnitus. Furthermore, the application of machine learning techniques has shown reliable results in distinguishing tinnitus patients from HCs, reinforcing the viability of N2 and P3 features as biomarkers for tinnitus.

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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.
期刊最新文献
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