Turn on more accessible mode
Turn off more accessible mode
Sign In
Ask UTP
|
Sign In
Main Menu
Main Menu
APPLY NOW
Students
Alumni
Professionals
Sustainability
Giving to UTP
Media
Search
Students
Student Development & Experience
Mobility
Financial Aid
UCareer
Success Stories
Current Students
Prospective Students
Research
Technology Research Excellence (TREx)
Technology Exploitation & Delivery (TED)
Research Institutes
Center of Excellence
Admission
Foundation
Undergraduate
Postgraduate
Academic
Faculties
Centre for Foundation Studies
Faculty of Engineering
Faculty of Science and Information Technology
Centre for Graduate Studies
Centre for Academic Excellence (CAdEX)
Information Resource Centre
Massive Open Online Courses
Erasmus + International Credit Mobility
Micro-credentials @ UlearnPlus
The University
About Us
Leadership
Publications
Governance
Giving to UTP
USR
Partner Institutions
Directories
Staff
Visit UTP
Students
Student Development & Experience
Mobility
Financial Aid
UCareer
Success Stories
Current Students
Prospective Students
Research
Technology Research Excellence (TREx)
Technology Exploitation & Delivery (TED)
Research Institutes
Center of Excellence
Admission
Foundation
Undergraduate
Postgraduate
Academic
Faculties
Centre for Foundation Studies
Faculty of Engineering
Faculty of Science and Information Technology
Centre for Graduate Studies
Centre for Academic Excellence (CAdEX)
Information Resource Centre
Massive Open Online Courses
Erasmus + International Credit Mobility
Micro-credentials @ UlearnPlus
The University
About Us
Leadership
Publications
Governance
Giving to UTP
USR
Partner Institutions
Directories
Staff
Visit UTP
APPLY NOW
Students
Alumni
Professionals
Sustainability
Giving to UTP
Media
UTP Ignite
Home
Technology
Project Leader:
Prof. Dr. Tang Tong Boon
Team Members:
Dr Rumaisa Abu Hasan
Dr Syed Saad Azhar Ali
Department:
Electrical & Electronic Engineering
Expertise:
Neurotechnology, fNIRS, EEG, health analytics
Resilience Assessment System for Mind (RASMi) using EEG Neuromarker
TECHNOLOGY READINESS LEVEL: 5
BRIEF TECHNOLOGY
RASMi is a data-driven solution that uses the brain signals recorded using the electroencephalography (EEG) to assess resilience levels. The EEG boasts the benefit of being cost efficient, user-friendly and applicable in various healthcare and work settings.
PROBLEM STATEMENT & CURRENT ISSUES
Answering questionnaires can be a tedious and bias procedure due to multiple forms and the concern of social stigma to mental illness.
Questionnaires are unable to measure the adaptation process of resilience in real time.
USEFULNESS & APPLICATION
IMPACT OF THE PRODUCT
Single modality EEG, data driven for resting and task condition
Cost saving - maximum 2.5% of fMRI setup, ranging USD 500-50,000
Portability, cost effective, clinical and non clinical users as target market
Reusable and EEG typical lifetime of 10 years
MARKET POTENTIAL
INDUSTRY COLLABORATION
National Child Development Research Centre (NCDRC)
School of Medical Sciences, Universiti Sains Malaysia
NEU Dimension
INTELECTUAL PROPERTY (IP)
Patent : PI2024003425
Information For
Prospective Students
Alumni
Financial Aid
Professionals
Admission
Foundation
Undergraduate
Postgraduate
Research
Research Institutes
Centre of Excellence
Related Links
Facts & Figures
Directories
Media
Governance
Resource
Academic Calendar
Career @ UTP
Visit UTP
Enquiry
Gateway
ULibrary
PETRONAS SWITCH
Whistleblowing
UTPNexus
Apply Now
Professionals
Giving to UTP
Contact
Careers