Examination of Training Data Expansion for Detection of Abnormal Respiration and Patients

M. Yamashita
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Abstract

Abnormal sounds, termed adventitious sounds, include the lung sound of an individual with pulmonary disease. In this study, we aim to automatically detect abnormal sounds from auscultatory sounds. First, stochastic models are employed to express the acoustic features of normal lung sounds from healthy individuals and abnormal lung sounds from patients. Using this, normal and abnormal lung sounds are classified. However, a low classification rate was obtained because the amount of training data for the stochastic models was small. Although large volumes of training data are necessary for constructing stochastic models with high accuracy, collecting various types of abnormal respiration from a large number of patients is challenging. Therefore, to overcome this limitation, we propose the method to expand the training data for the models. Adding the acoustic features of adventitious sounds to normal respiration and using them as abnormal respiration for training data, significantly increased the classification rate. The results indicate the effectiveness of the proposed method.
检测呼吸异常和患者的训练数据扩展的检验
异常音,称为非定音,包括肺部疾病患者的肺音。在本研究中,我们的目标是从听诊音中自动检测异常音。首先,采用随机模型来表达健康人正常肺音和患者异常肺音的声学特征。据此,对正常和异常肺音进行分类。然而,由于随机模型的训练数据量较小,分类率较低。尽管构建高精度的随机模型需要大量的训练数据,但从大量患者中收集各种类型的异常呼吸是具有挑战性的。因此,为了克服这一限制,我们提出了扩展模型训练数据的方法。将非定音的声学特征加入到正常呼吸中,作为异常呼吸作为训练数据,显著提高了分类率。结果表明了该方法的有效性。
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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