Exploration of Despair Eccentricities Based on Scale Metrics with Feature Sampling Using a Deep Learning Algorithm.

Journal: Diagnostics (Basel, Switzerland)

Volume: 12

Issue: 11

Year of Publication: 

Affiliated Institutions:  Department of Information Systems, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah , Saudi Arabia. Department of Artificial Intelligence, G.H Raisoni College of Engineering, Nagpur , India. Department of Electronics and Communication Engineering, Panimalar Engineering College, Chennai , India. Department of Computer Science, Cardiff Metropolitan University, Cardiff CF YB, UK. Department of Computer Science, Kebri Dehar University, Kebri Dehar , Ethiopia. School of Computer Engineering, KIIT Deemed to Be University, Bhubaneswar , India.

Abstract summary 

The majority of people in the modern biosphere struggle with depression as a result of the coronavirus pandemic's impact, which has adversely impacted mental health without warning. Even though the majority of individuals are still protected, it is crucial to check for post-corona virus symptoms if someone is feeling a little lethargic. In order to identify the post-coronavirus symptoms and attacks that are present in the human body, the recommended approach is included. When a harmful virus spreads inside a human body, the post-diagnosis symptoms are considerably more dangerous, and if they are not recognised at an early stage, the risks will be increased. Additionally, if the post-symptoms are severe and go untreated, it might harm one's mental health. In order to prevent someone from succumbing to depression, the technology of audio prediction is employed to recognise all the symptoms and potentially dangerous signs. Different choral characters are used to combine machine-learning algorithms to determine each person's mental state. Design considerations are made for a separate device that detects audio attribute outputs in order to evaluate the effectiveness of the suggested technique; compared to the previous method, the performance metric is substantially better by roughly 67%.

Authors & Co-authors:  Hasanin Tawfiq T Kshirsagar Pravin R PR Manoharan Hariprasath H Sengar Sandeep Singh SS Selvarajan Shitharth S Satapathy Suresh Chandra SC

Study Outcome 

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Statistics
Citations :  Garcia-Ceja E., Riegler M., Nordgreen T., Jakobsen P., Oedegaard K.J., Tørresen J. Mental health monitoring with multi-modal sensing and machine learning: A survey. Pervasive Mob. Comput. 2018;51:1–26.
Authors :  6
Identifiers
Doi : 2844
SSN : 2075-4418
Study Population
Male,Female
Mesh Terms
Other Terms
audio features;deep learning;depression prediction;mental imbalance
Study Design
Cross Sectional Study
Study Approach
Country of Study
Publication Country
Switzerland