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首页> 外文期刊>Folia phoniatrica et logopaedica: official organ of the International Association of Logopedics and Phoniatrics (IALP) >Demographic and Symptomatic Features of Voice Disorders and Their Potential Application in Classification Using Machine Learning Algorithms
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Demographic and Symptomatic Features of Voice Disorders and Their Potential Application in Classification Using Machine Learning Algorithms

机译:语音障碍的人口统计学和症状特征及其在使用机器学习算法分类中的潜在应用

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Background: Studies have used questionnaires of dysphonic symptoms to screen voice disorders. This study investigated whether the differential presentation of demographic and symptomatic features can be applied to computerized classification. Methods: We recruited 100 patients with glottic neoplasm, 508 with phonotraumatic lesions, and 153 with unilateral vocal palsy. Statistical analyses revealed significantly different distributions of demographic and symptomatic variables. Machine learning algorithms, including decision tree, linear discriminant analysis, K-nearest neighbors, support vector machine, and artificial neural network, were applied to classify voice disorders. Results: The results showed that demographic features were more effective for detecting neoplastic and phonotraumatic lesions, whereas symptoms were useful for detecting vocal palsy. When combining demographic and symptomatic variables, the artificial neural network achieved the highest accuracy of 83 ± 1.58%, whereas the accuracy achieved by other algorithms ranged from 74 to 82.6%. Decision tree analyses revealed that sex, age, smoking status, sudden onset of dysphonia, and 10-item voice handicap index scores were significant characteristics for classification. Conclusion: This study demonstrated a significant difference in demographic and symptomatic features between glottic neoplasm, phonotraumatic lesions, and vocal palsy. These features may facilitate automatic classification of voice disorders through machine learning algorithms.
机译:背景:研究已经使用困扰症状的问卷对语音障碍进行筛查。本研究调查了人口统计学和症状特征的差异呈现是否可以应用于计算机化分类。方法:我们招募了100名毛孔肿瘤,508名患者,带有语音病变,153例与单侧声带麻痹。统计分析显示出明显不同的人口统计和症状变量分布。应用机器学习算法,包括决策树,线性判别分析,k最近邻居,支持向量机和人工神经网络,用于分类语音障碍。结果:结果表明,人口统计学特征对于检测肿瘤和语音病变更有效,而症状对于检测声带有用。当结合人口统计和症状变量时,人工神经网络达到了83±1.58%的最高精度,而其他算法所实现的精度范围为74至82.6%。决策树分析显示,性别,年龄,吸烟状态,障碍症突然发作,10件语音差别指数评分是分类的重要特征。结论:本研究表明,浊音肿瘤,语音病变和声带和声带之间的人口统计和症状特征有显着差异。这些特征可以通过机器学习算法促进语音障碍的自动分类。

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