Assessing the Clinical and Functional Status of COPD Patients Using Speech Analysis During and After Exacerbation.

IF 2.7 3区 医学 Q2 RESPIRATORY SYSTEM
Wolfgang Mayr, Andreas Triantafyllopoulos, Anton Batliner, Björn W Schuller, Thomas M Berghaus
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引用次数: 0

Abstract

Background: Chronic obstructive pulmonary disease (COPD) affects breathing, speech production, and coughing. We evaluated a machine learning analysis of speech for classifying the disease severity of COPD.

Methods: In this single centre study, non-consecutive COPD patients were prospectively recruited for comparing their speech characteristics during and after an acute COPD exacerbation. We extracted a set of spectral, prosodic, and temporal variability features, which were used as input to a support vector machine (SVM). Our baseline for predicting patient state was an SVM model using self-reported BORG and COPD Assessment Test (CAT) scores.

Results: In 50 COPD patients (52% males, 22% GOLD II, 44% GOLD III, 32% GOLD IV, all patients group E), speech analysis was superior in distinguishing during and after exacerbation status compared to BORG and CAT scores alone by achieving 84% accuracy in prediction. CAT scores correlated with reading rhythm, and BORG scales with stability in articulation. Pulmonary function testing (PFT) correlated with speech pause rate and speech rhythm variability.

Conclusion: Speech analysis may be a viable technology for classifying COPD status, opening up new opportunities for remote disease monitoring.

使用言语分析评估COPD患者加重期间和加重后的临床和功能状态。
背景:慢性阻塞性肺疾病(COPD)影响呼吸、言语产生和咳嗽。我们评估了语音的机器学习分析,用于对COPD的疾病严重程度进行分类。方法:在这项单中心研究中,前瞻性地招募非连续COPD患者,比较他们在急性COPD加重期间和之后的言语特征。我们提取了一组光谱、韵律和时间变化特征,这些特征被用作支持向量机(SVM)的输入。我们预测患者状态的基线是使用自我报告的BORG和COPD评估测试(CAT)分数的SVM模型。结果:在50例COPD患者中(52%男性,22% GOLD II, 44% GOLD III, 32% GOLD IV,所有患者均为E组),语音分析在区分加重期间和加重后状态方面优于单独的BORG和CAT评分,预测准确率达到84%。CAT评分与阅读节奏相关,BORG评分与发音稳定性相关。肺功能测试(PFT)与言语暂停率和言语节奏变异性相关。结论:语音分析可能是一种可行的COPD状态分类技术,为远程疾病监测开辟了新的机会。
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来源期刊
CiteScore
4.80
自引率
10.70%
发文量
372
审稿时长
16 weeks
期刊介绍: An international, peer-reviewed journal of therapeutics and pharmacology focusing on concise rapid reporting of clinical studies and reviews in COPD. Special focus will be given to the pathophysiological processes underlying the disease, intervention programs, patient focused education, and self management protocols. This journal is directed at specialists and healthcare professionals
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