| Literature DB >> 34938711 |
Syed Thouheed Ahmed1, Dollar Konjengbam Singh2, Syed Muzamil Basha3, Emad Abouel Nasr4, Ali K Kamrani5, Mohamed K Aboudaif4.
Abstract
COVID-19 (SARS-CoV-2) was declared as a global pandemic by the World Health Organization (WHO) in February 2020. This led to previously unforeseen measures that aimed to curb its spread, such as the lockdown of cities, districts, and international travel. Various researchers and institutions have focused on multidimensional opportunities and solutions in encountering the COVID-19 pandemic. This study focuses on mental health and sentiment validations caused by the global lockdowns across the countries, resulting in a mental disability among individuals. This paper discusses a technique for identifying the mental state of an individual by sentiment analysis of feelings such as anxiety, depression, and loneliness caused by isolation and pauses to the normal chains of operations in daily life. The research uses a Neural Network (NN) to resolve and extract patterns and validate threshold trained datasets for decision making. This technique was used to validate 2,173 global speech samples, and the resulting accuracy of mental state and sentiments are identified with 93.5% accuracy in classifying the behavioral patterns of patients suffering from COVID-19 and pandemic-influenced depression.Entities:
Keywords: COVID-19; mental depression; neural network; sentiment extraction; speech signal processing
Mesh:
Year: 2021 PMID: 34938711 PMCID: PMC8685216 DOI: 10.3389/fpubh.2021.781827
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Architectural diagram of the proposed technique toward decision making in speech signals.
Figure 2Comparative model for validating speech signals in distress detection.
Figure 3ROI on floating speech samples of multi-users.
Figure 4Cluster representation of extracted patterns.
Figure 5Performance computation of proposed technique on independent parameters.
Figure 6Outcome evaluation of proposed technique.
Decision support and evaluation parameters.
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| COVID−19 (positive) | Average | 3.211 | 0.327 | 97.23 |
| Post COVID−19 (positive) | High | 1.432 | 0.129 | 94.92 |
| Loneliness | High | 1.328 | 0.091 | 96.91 |
| Anxiety | Average | 2.114 | 0.181 | 92.17 |
| Depression | High | 0.994 | 0.021 | 97.28 |
| Normal (Non-COVID19) | Low | 5.251 | 0.448 | 95.39 |
Performance matrix for speech signal in mental distress validation.
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| 5–9 | Unclassified | 92.43 | 89.23 | 89.3 | 90 |
| 10–15 | Unclassified | 95.72 | 93.22 | 93.08 | 95 |
| 16–25 | Classified | 97.12 | 97.48 | 98.1 | 98.48 |
| 26–35 | Classified | 97.78 | 97.53 | 98.9 | 98.97 |
| 36–55 | Classified | 98.3 | 97.12 | 99.12 | 99.23 |
| 56–60 | Classified | 95.33 | 91.23 | 97.12 | 94.19 |
| 61–75 | Unclassified | 96.12 | 89.23 | 91.07 | 88.32 |
| 76–100 | Unclassified | 92.31 | 88.7 | 87.2 | 81.2 |
Signal processing and analysis appendix.
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