Prediction of Auditory Performance in Cochlear Implants Using Machine Learning Methods: A Systematic Review.

IF 1.8 Q1 AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY
Beyza Demirtaş Yılmaz
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引用次数: 0

Abstract

Background/Objectives: Cochlear implantation is an advantageous procedure for individuals with severe to profound hearing loss in many aspects related to auditory performance, social communication and quality of life. As machine learning applications have been used in the field of Otorhinolaryngology and Audiology in recent years, signal processing, speech perception and personalised optimisation of cochlear implantation are discussed. Methods: A comprehensive literature review was conducted in accordance with the PRISMA guidelines. PubMed, Scopus, Web of Science, Google Scholar and IEEE databases were searched for studies published between 2010 and 2025. We analyzed 59 articles that met the inclusion criteria. Rayyan AI software was used to classify the studies so that the risk of bias was reduced. Study design, machine learning algorithms, and audiological measurements were evaluated in the data analysis. Results: Machine learning applications were classified as preoperative evaluation, speech perception, and speech understanding in noise and other studies. The success rates of the articles are presented together with the number of articles changing over the years. It was observed that Random Forest, Decision Trees (96%), Bayesian Linear Regression (96.2%) and Extreme machine learning (99%) algorithms reached high accuracy rates. Conclusions: In cochlear implantation applications in the field of audiology, it has been observed that studies have been carried out with a variable number of people and data sets in different subfields. In machine learning applications, it is seen that a high amount of data, data diversity and long training times contribute to achieving high performance. However, more research is needed on deep learning applications in complex problems such as comprehension in noise that require time series processing. Funding and other resources: This study was not funded by any institution or organization. No registration was performed for this study.

使用机器学习方法预测人工耳蜗的听觉表现:系统综述。
背景/目的:人工耳蜗植入术对重度至重度听力损失患者在听力表现、社会交往和生活质量等诸多方面具有优势。随着近年来机器学习在耳鼻喉科和听力学领域的应用,本文讨论了人工耳蜗植入的信号处理、语音感知和个性化优化。方法:根据PRISMA指南进行全面的文献回顾。PubMed, Scopus, Web of Science, b谷歌Scholar和IEEE数据库检索了2010年至2025年间发表的研究。我们分析了59篇符合纳入标准的文章。使用Rayyan人工智能软件对研究进行分类,以降低偏倚的风险。在数据分析中评估研究设计、机器学习算法和听力学测量。结果:机器学习的应用分为术前评估、语音感知和语音理解在噪声等方面的研究。文章的成功率与文章数量随年份的变化一起呈现。随机森林、决策树(96%)、贝叶斯线性回归(96.2%)和极限机器学习(99%)算法达到了较高的准确率。结论:在听力学领域的人工耳蜗植入应用中,我们观察到在不同的子领域进行了不同数量的人和数据集的研究。在机器学习应用中,可以看到大量数据、数据多样性和较长的训练时间有助于实现高性能。然而,深度学习在复杂问题(如需要时间序列处理的噪声理解)中的应用还需要更多的研究。经费和其他资源:本研究没有得到任何机构或组织的资助。本研究未进行登记。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Audiology Research
Audiology Research AUDIOLOGY & SPEECH-LANGUAGE PATHOLOGY-
CiteScore
2.30
自引率
23.50%
发文量
56
审稿时长
11 weeks
期刊介绍: The mission of Audiology Research is to publish contemporary, ethical, clinically relevant scientific researches related to the basic science and clinical aspects of the auditory and vestibular system and diseases of the ear that can be used by clinicians, scientists and specialists to improve understanding and treatment of patients with audiological and neurotological disorders.
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