Weariness and Vigilance Data Mining Using Mobile Platform Assessment

This work deals with the user interface assessment of weariness and vigilance diagnosis. The goal of this work was to Establish the algorithm for assessment and statistical evaluation of mental performance effected, would vigilance. Individual tests are performed in graphic form and focus on memory and reaction time. Test results are stored in a structured database. The system compares the results in five age categories. It is one of the few instruments that are capable of analyzing objectively lack of sleep or sleep disorders occurrence. The application is designed for all ages, although older generation may be a problem with computer operation. The Measured medical information are statistically processed and compared with normal values selected group of people. The program was completed and tested on 92 people in collaboration with University Hospital Ostrava and were created classification groups.

[1]  Lukas Pastorek,et al.  Nightmares in narcolepsy: underinvestigated symptom? , 2014, Sleep medicine.

[2]  Marek Penhaker,et al.  Devices for position detection , 2011 .

[3]  Vilém Novák,et al.  Computer Based Psychometric Testing and Well Being Software for Sleep Deprivation Analysis , 2013, Advanced Methods for Computational Collective Intelligence.

[4]  Jaroslav Majernik,et al.  Education of Clinical Disciplines in Pre and Post-Graduate Study Oriented on Increasing of Newest Infectious Diseases Knowledge , 2012 .

[5]  Murray W. Johns,et al.  A new perspective on sleepiness , 2010 .

[6]  Ngoc Thanh Nguyen,et al.  A combined negative selection algorithm-particle swarm optimization for an email spam detection system , 2015, Eng. Appl. Artif. Intell..

[7]  Ondrej Krejcar,et al.  Mobile Widget Technology as a Solution for Smart User Interaction , 2013, AMBI-SYS.

[8]  C. Kushida,et al.  Multiple sleep latency test and maintenance of wakefulness test. , 2008, Chest.

[9]  Imran Ghani,et al.  Retracted: E-Learning Recommender Systems Based on Goal-Based Hybrid Filtering , 2015 .

[10]  M. Penhaker,et al.  The HomeCare and Circadian rhythm , 2008, 2008 International Conference on Information Technology and Applications in Biomedicine.

[11]  Peter Brida,et al.  On the Accuracy of Weighted Proximity Based Localization in Wireless Sensor Networks , 2007, PWC.

[12]  Peter Brida,et al.  Indoor Positioning System Designed for User Adaptive Systems , 2011, ACIIDS Posters.

[13]  Ondrej Krejcar,et al.  Modern smart device-based concept of sensoric networks , 2013, EURASIP J. Wirel. Commun. Netw..

[14]  Jaroslav Majernik,et al.  Web-based delivery of medical education contents used to facilitate learning of infectology subjects , 2014, The 10th International Conference on Digital Technologies 2014.

[15]  S. Nevsimalova,et al.  The Diagnosis and Treatment of Pediatric Narcolepsy , 2014, Current Neurology and Neuroscience Reports.