COUGH AUDIO SENTIMENT ANALYTICS FOR SOFTWARE AS A MEDICAL DEVICE APPLICATIONS

S. Damani, Arshia K. Sethi, Bhavana Baraskar, K. Gopalakrishnan, Joshika Agarwal, H. Albitar, V. Ahluwalia, S. Donlinger, V. Iyer, S. P. Arunachalam
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Abstract

Chronic cough is not only one of the leading causes of seeking healthcare all over the world but also a huge emotional drain on the affected patient population. In this study, we used 24-hour cough recordings to analyze the intervening conversations for sentiment analyses to better diagnose, guide, and manage treatment in such patients. We surveyed a cough clinic and selected four subjects with active cough complaints using relevant ICD-10 codes. Subjects were given and instructed to wear a device to record cough for 24 hours and the recordings were collected at weeks 0, 4, 8, and 12 of the treatment. The collected data was preprocessed to eliminate sections with no data (sleep, silence) and the number of coughs was counted. Google search API calls were used to transcribe the audio files and NLTK’s VADER analyzer was used to classify sentiments on a scale of 0 to 1. Finally, average scores were calculated and plotted over a graph to interpret any trends. 12 weeks of cough treatment had varied results on the four subjects. We categorized the exhibited sentiments into negative, neutral, positive, and compound and noted that they also showed no general trends. Among these, the compound sentiment displayed the most erratic patterns, and the obtained results could not generate a steady trend. Further studies are required with a large cohort to collect data over a longer duration to accurately analyze the sentiments associated with chronic cough.
咳嗽音频情感分析软件作为一种医疗器械应用
慢性咳嗽不仅是世界各地寻求医疗保健的主要原因之一,而且也是受影响患者群体的巨大情感消耗。在这项研究中,我们使用24小时的咳嗽录音来分析干预对话,以进行情绪分析,从而更好地诊断、指导和管理这类患者的治疗。我们调查了一家咳嗽诊所,并使用相关ICD-10代码选择了4名主动咳嗽主诉的受试者。受试者被要求佩戴一个记录咳嗽24小时的设备,并在治疗的第0、4、8和12周收集记录。对采集到的数据进行预处理,剔除无数据的部分(睡眠、沉默),统计咳嗽次数。谷歌搜索API调用被用来转录音频文件,NLTK的VADER分析器被用来按0到1的等级对情绪进行分类。最后,计算平均分数并绘制在图表上,以解释任何趋势。12周的咳嗽治疗对四名受试者有不同的结果。我们将表现出的情绪分为消极、中性、积极和复合,并注意到它们也没有显示出总体趋势。其中,复合情绪表现出最不稳定的模式,所获得的结果不能产生稳定的趋势。需要进行进一步的研究,在更长的时间内收集数据,以准确分析与慢性咳嗽相关的情绪。
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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