AI system for optimization of mental health care
This technology is a web-based AI system which uses real-time speaker diarization, transcription, and natural language processing (NLP) to optimize and support mental health care services.
Unmet Need: Diagnostic and patient monitoring assistance for mental health care providers
Current methods for the diagnosis and monitoring of psychiatric illness like psychotherapy, are limited by healthcare practitioners availability and provider/patient relationship. Treatment plans and outcomes are also determined using self-reported measures and therapists’ notes, which may vary between individuals and incorporate bias. There is a need for an efficient AI mental health care support that is not limited by extensive pre-training and preliminary voice registration requirements.
The Technology: An AI-based natural language processing (NLP) toolkit for optimizing psychotherapy
This technology is a cluster of machine-learning-based frameworks used to process and analyze verbal input from psychotherapy sessions and provide recommendations to mental health care providers. This web-based system can perform speaker diarization and transcription in real-time without pre-training, monitor patient health, and provide real-time feedback and treatment strategies for healthcare providers. It also offers an AI-assisted organizational system to log and brainstorm information, and a visual interactive dashboard for psychotherapy session, making it a valuable tool for mental health support.
Applications:
- Psychiatric support platform for diagnosis, monitoring, prevention
- Research and education tool for mental health practitioners
- Improved voice command, teleconferencing, and transcription systems
- Support platform for schools and customer service systems
Advantages:
- No pre-training required and real-time registration
- Provides feedback to providers
- Web-based
- Unbiased
Lead Inventor:
Patent Information:
Patent Pending (US 20230320642)
Related Publications:
Tech Ventures Reference:
IR CU22109, CU22237, CU22238, CU22239, CU22270, CU23008, CU23291
Licensing Contact: Greg Maskel
