Machine learning approaches to mental stress detection: a review

Purpose of Review: Machine Learning has shown exponential growth in ingesting a huge amount of data and give accurate outcomes equivalent to the human level. It provides a glance at the future where complex data, analysis and analytical model together help innumerable people suffering from health issues. This paper reviews the current application of ML in the health sector, their limitation, predictive analysis, and areas that are hard-to-diagnose and need advance research.New Findings: We have reviewed 30 papers on mental stress detection using ML that used Social networking sites, student’s record, Questioner technique, clinical dataset, real-time data, Bio-signal technology, wireless device and suicidal tendency. Collectively, these studies show high accuracy and potential of ML algorithms in mental health, and which ML algorithm yields the best result. Summary: With the advancement of ML, it has unfolded many areas like traditional clinical trials which are not sufficient to collect all the information about a person. Currently, define under DSM-V stage to detect these illnesses at the preliminary stage, diagnosing and treating before any mishap. It has re-defined the mental health practicing reducing cost and time, making it easier and convenient for patients to reach better health care whenever they need it.

[1]  Hafiz Farooq Ahmad,et al.  Predicting Depression Levels Using Social Media Posts , 2017, 2017 IEEE 13th International Symposium on Autonomous Decentralized System (ISADS).

[2]  Javad Frounchi,et al.  Machine learning-based signal processing using physiological signals for stress detection , 2015, 2015 22nd Iranian Conference on Biomedical Engineering (ICBME).

[3]  Amit P. Sheth,et al.  Mental Health Analysis Via Social Media Data , 2018, 2018 IEEE International Conference on Healthcare Informatics (ICHI).

[4]  James R. Glass,et al.  Detecting Depression with Audio/Text Sequence Modeling of Interviews , 2018, INTERSPEECH.

[5]  Svetha Venkatesh,et al.  Affective and Content Analysis of Online Depression Communities , 2014, IEEE Transactions on Affective Computing.

[6]  Aamir Saeed Malik,et al.  Machine Learning Framework for the Detection of Mental Stress at Multiple Levels , 2017, IEEE Access.

[7]  Hugo David Calderon-Vilca,et al.  Simulation of suicide tendency by using machine learning , 2017, 2017 36th International Conference of the Chilean Computer Science Society (SCCC).

[8]  Stevie Chancellor,et al.  Methods in predictive techniques for mental health status on social media: a critical review , 2020, npj Digital Medicine.

[9]  Mandar Deshpande,et al.  Depression detection using emotion artificial intelligence , 2017, 2017 International Conference on Intelligent Sustainable Systems (ICISS).

[10]  P. Lichtenstein,et al.  Predicting mental health problems in adolescence using machine learning techniques , 2020, PloS one.

[11]  Melissa N. Stolar,et al.  Detection of Adolescent Depression from Speech Using Optimised Spectral Roll-Off Parameters , 2018, Biomedical Journal of Scientific & Technical Research.

[12]  Mariya Khan,et al.  Design and Implementation of Intelligent Human Stress Monitoring System , 2014 .

[13]  Ravinder Ahuja,et al.  Mental Stress Detection in University Students using Machine Learning Algorithms , 2019, Procedia Computer Science.

[14]  Laura J. Bierut,et al.  A content analysis of depression-related tweets , 2016, Comput. Hum. Behav..