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A Novel Method for Classifying Body Mass Index on the Basis of Speech Signals for Future Clinical Applications: A Pilot Study

机译:一种基于语音信号对体重指数进行分类的新方法,供未来临床应用:一项先导研究

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摘要

Obesity is a serious public health problem because of the risk factors for diseases and psychological problems. The focus of this study is to diagnose the patient BMI (body mass index) status without weight and height measurements for the use in future clinical applications. In this paper, we first propose a method for classifying the normal and the overweight using only speech signals. Also, we perform a statistical analysis of the features from speech signals. Based on 1830 subjects, the accuracy and AUC (area under the ROC curve) of age- and gender-specific classifications ranged from 60.4 to 73.8% and from 0.628 to 0.738, respectively. We identified several features that were significantly different between normal and overweight subjects (P < 0.05). Also, we found compact and discriminatory feature subsets for building models for diagnosing normal or overweight individuals through wrapper-based feature subset selection. Our results showed that predicting BMI status is possible using a combination of speech features, even though significant features are rare and weak in age- and gender-specific groups and that the classification accuracy with feature selection was higher than that without feature selection. Our method has the potential to be used in future clinical applications such as automatic BMI diagnosis in telemedicine or remote healthcare.
机译:由于疾病和心理问题的危险因素,肥胖是一个严重的公共卫生问题。这项研究的重点是在不进行体重和身高测量的情况下诊断患者的BMI(体重指数)状态,以用于将来的临床应用。在本文中,我们首先提出一种仅使用语音信号对正常体重和超重进行分类的方法。此外,我们对语音信号的特征进行统计分析。基于1830名受试者,按年龄和性别分类的准确性和AUC(ROC曲线下面积)分别为60.4至73.8%和0.628至0.738。我们确定了正常和超重受试者之间显着不同的几个特征(P <0.05)。此外,我们发现了用于构建模型的紧凑型和区分性特征子集,这些模型通过基于包装器的特征子集选择来诊断正常或超重个体。我们的结果表明,即使在特定年龄和性别的人群中,显着特征很少见且较弱,使用语音特征的组合也可以预测BMI状态,并且选择特征时的分类准确性要高于没有选择特征时的分类准确性。我们的方法有可能用于未来的临床应用中,例如远程医疗或远程医疗中的BMI自动诊断。

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