Synergistic integration of Multi-View Brain Networks and advanced machine learning techniques for auditory disorders diagnostics

Q1 Computer Science Brain Informatics Pub Date : 2024-01-14 DOI:10.1186/s40708-023-00214-7
Muhammad Atta Othman Ahmed, Yasser Abdel Satar, Eed M. Darwish, Elnomery A. Zanaty
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Abstract

In the field of audiology, achieving accurate discrimination of auditory impairments remains a formidable challenge. Conditions such as deafness and tinnitus exert a substantial impact on patients’ overall quality of life, emphasizing the urgent need for precise and efficient classification methods. This study introduces an innovative approach, utilizing Multi-View Brain Network data acquired from three distinct cohorts: 51 deaf patients, 54 with tinnitus, and 42 normal controls. Electroencephalogram (EEG) recording data were meticulously collected, focusing on 70 electrodes attached to an end-to-end key with 10 regions of interest (ROI). This data is synergistically integrated with machine learning algorithms. To tackle the inherently high-dimensional nature of brain connectivity data, principal component analysis (PCA) is employed for feature reduction, enhancing interpretability. The proposed approach undergoes evaluation using ensemble learning techniques, including Random Forest, Extra Trees, Gradient Boosting, and CatBoost. The performance of the proposed models is scrutinized across a comprehensive set of metrics, encompassing cross-validation accuracy (CVA), precision, recall, F1-score, Kappa, and Matthews correlation coefficient (MCC). The proposed models demonstrate statistical significance and effectively diagnose auditory disorders, contributing to early detection and personalized treatment, thereby enhancing patient outcomes and quality of life. Notably, they exhibit reliability and robustness, characterized by high Kappa and MCC values. This research represents a significant advancement in the intersection of audiology, neuroimaging, and machine learning, with transformative implications for clinical practice and care.
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多视图大脑网络与先进机器学习技术的协同整合,用于听觉障碍诊断
在听力学领域,实现对听觉障碍的准确分辨仍然是一项艰巨的挑战。耳聋和耳鸣等疾病会对患者的整体生活质量产生重大影响,因此迫切需要精确高效的分类方法。这项研究引入了一种创新方法,利用从三个不同组群获取的多视图脑网络数据:51名耳聋患者、54名耳鸣患者和42名正常对照者。脑电图(EEG)记录数据经过精心收集,集中在 70 个电极上,这些电极连接到带有 10 个感兴趣区(ROI)的端到端密钥上。这些数据与机器学习算法进行了协同整合。为了解决大脑连接数据固有的高维特性,采用了主成分分析(PCA)来减少特征,从而提高了可解释性。提议的方法采用了集合学习技术进行评估,包括随机森林、额外树、梯度提升和 CatBoost。对所提模型的性能进行了全面的审查,包括交叉验证准确度(CVA)、精确度、召回率、F1-分数、Kappa 和马修斯相关系数(MCC)。所提出的模型具有统计意义,能有效诊断听觉障碍,有助于早期检测和个性化治疗,从而提高患者的治疗效果和生活质量。值得注意的是,这些模型表现出可靠性和稳健性,具有较高的 Kappa 值和 MCC 值。这项研究是听力学、神经影像学和机器学习交叉领域的重大进展,对临床实践和护理具有变革性意义。
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来源期刊
Brain Informatics
Brain Informatics Computer Science-Computer Science Applications
CiteScore
9.50
自引率
0.00%
发文量
27
审稿时长
13 weeks
期刊介绍: Brain Informatics is an international, peer-reviewed, interdisciplinary open-access journal published under the brand SpringerOpen, which provides a unique platform for researchers and practitioners to disseminate original research on computational and informatics technologies related to brain. This journal addresses the computational, cognitive, physiological, biological, physical, ecological and social perspectives of brain informatics. It also welcomes emerging information technologies and advanced neuro-imaging technologies, such as big data analytics and interactive knowledge discovery related to various large-scale brain studies and their applications. This journal will publish high-quality original research papers, brief reports and critical reviews in all theoretical, technological, clinical and interdisciplinary studies that make up the field of brain informatics and its applications in brain-machine intelligence, brain-inspired intelligent systems, mental health and brain disorders, etc. The scope of papers includes the following five tracks: Track 1: Cognitive and Computational Foundations of Brain Science Track 2: Human Information Processing Systems Track 3: Brain Big Data Analytics, Curation and Management Track 4: Informatics Paradigms for Brain and Mental Health Research Track 5: Brain-Machine Intelligence and Brain-Inspired Computing
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