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Clinical informatics: mining of pathological data by acoustic analysis

机译:临床信息学:声学分析挖掘病理数据

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Data mining has a great potential in different areas of health informatics. Data mining in health industry can minimize the health cost as well as reduces the risk of life by informing a person at initial stage. An automatic classification system capable of mining pathological data may contribute in health informatics significantly. In this paper, an automatic system to differentiate between pathological and normal data is developed. The developed system mines the pathological data on the basis of an acoustic analysis. The purpose of the acoustic analysis is to estimate the auditory spectrum of a voice sample by using the principle of the human auditory system called as critical bandwidths. The estimated auditory spectrum simulates the behavior of a human ear and acts like an expert clinician who can identify a pathological voice by hearing. The pathological data used for this study is recorded from the people who are suffering from more than 100 different types of voice disorders. Voice of a disordered patient feels noisy, harsh, strain, breathy and unpleasant to ears. During the training phase of the proposed system, it takes labeled normal and pathological data to generate acoustic models by using the Gaussian mixture model. While in deployment phase, an unknown and unlabeled voice sample is given to the system to determine its type, i.e. normal or pathological. The best obtained accuracy of the system is 99.50%.
机译:数据挖掘在卫生信息学的不同领域具有巨大潜力。卫生行业的数据挖掘可以最大限度地减少健康成本,并通过在初始阶段通知一个人来降低生活的风险。一种能够采矿病理数据的自动分类系统可能会显着造成卫生信息学。在本文中,开发了一种自动系统来区分病理和正常数据。开发系统基于声学分析地挖掘病理数据。声学分析的目的是通过使用称为关键带宽的人类听觉系统的原理来估计语音样本的听觉频谱。估计的听觉频谱模拟了人耳的行为,并像专家诊所一样,可以通过听证识别出现病理声音。本研究中使用的病理数据是从患有超过100种不同类型语音障碍的人中记录。无序患者的声音感到嘈杂,严厉,压力,呼吸和令人不快的耳朵。在所提出的系统的训练阶段,它需要标记的正常和病理数据来通过使用高斯混合模型产生声学模型。虽然在部署阶段,给出了一个未知和未标记的语音样本,以确定其类型,即正常或病理。最佳的系统精度为99.50%。

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