利用LR-MLP-RF-GMM分类器从音频信号中检测COVID-19

P. Kumawat, Utkarsh, Aditya Chikhale, Ramesh Kumar Bhukya
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引用次数: 0

摘要

新冠肺炎疫情带来了超越国家、宗教、种族、经济界限的全球性挑战。检测COVID-19患者的病情仍然是一项具有挑战性的任务,因为缺乏足够的医疗用品,训练有素的人员,进行逆转录聚合酶链反应(RT-PCR)检测昂贵,长时间的过程违反了社交距离。在这个方向上,我们使用了基于Coswara数据集咳嗽记录的微生物学证实的COVID-19数据集。Coswara数据集也是开放挑战数据集之一,供研究人员调查从COVID-19感染和非COVID-19个体收集的Coswara数据集的录音,用于区分阳性和阴性检测。这些COVID-19录音是通过提供的众包网站从多个国家收集的。在这里,我们的工作主要集中在咳嗽声的录音。数据集是开放获取的。我们开发了一种声学生物签名特征提取器,用于筛选咳嗽录音中的潜在问题,并针对特定患者的状态提供个性化建议,实时监测其合适的状态。在我们的工作中,咳嗽录音被转换成Mel频率倒谱系数(MFCCs),并通过基于高斯混合模型(GMM)的模式识别,基于二元预筛选诊断的决策制定。当对感染和非感染患者进行验证时,使用Coswara数据集进行两类分类。GMM用于开发基于生物标志物的检测模型,基于Coswara数据集并与现有分类器进行比较,实现了COVID-19和非COVID-19患者的准确率为73.22%。
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COVID-19 Detection From Audio Signals Using LR-MLP-RF-GMM Classifiers
The COVID-19 pandemic bestows global challenges surpassing boundaries of country, religion race, and economy. Testing of COVID-19 patients conditions are remains a challenging task due to the lack of adequate medical supplies, well-trained personnel and conducting reverse transcription polymerase chain reaction (RT-PCR) testing is expensive, long-drown-out process violates social distancing. In this direction, we used microbiologically confirmed COVID-19 dataset based on cough recordings from Coswara dataset. The Coswara dataset is also one of the open challenge dataset for researchers to investigate sound recordings of the Coswara dataset, collected from COVID-19 infected and non-COVID-19 individuals, for classification between Positive and Negative detection. These COVID-19 recordings were collected from multiple countries, through the provided crowd-sourcing website. Here, our work mainly focuses on cough sound based recordings. The dataset is released open access. We developed an acoustic biosignature feature extractors to screen for potential problems from cough recordings, and provide personalized advice to a particular patient's state to monitor his suitable condition in real-time. In our work, cough sound recordings are converted into Mel Frequency Cepstral Coefficients (MFCCs) and passed through a Gaussian Mixture Model (GMM) based pattern recognition, decision making based on a binary pre-screening diagnostic. When validated with infected and non-infected patients, for a two-class classification, using a Coswara dataset. The GMM is applied for developing a model for detection of biomarker based detection and achieves COVID-19 and non-COVID-19 patients accuracy of 73.22% based on the Coswara dataset and also compared with existing classifiers.
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