GreenSense
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GreenSense enables tracking and analysis of physical movement and balance to predict and prevent falls especially for people with neurodegenerative conditions such as Parkinson鈥檚 and Dementia. The concept helps reduce risks of injuries and associated costs of treatment / recovery, that have adverse impacts on the quality of life, especially for older adults.
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GreenSense addresses the growing need for continuous health monitoring, especially of older vulnerable people with neurodegenerative diseases such as Parkinsons and Dementia. Today's solutions are complicated and clinic based, which misses key signals of cognitive decline over time. Such gaps in continuous assessments could miss vital indicators of physical risks arising from decline in balance that result in falls / accidents. Treatment and recovery from such falls are not only expensive for both the healthcare system and care providers, but they also tend to negatively impact the quality of life for such individuals in society.
The "GreenSense" project focuses on soft, wearable pressure and temperature sensors that monitor users' physical activities and health in real-time. These easy-to-wear sensors are designed to be integrated into a wide range of forms - insoles, patches, mats, fabrics, etc. allowing for discreet and comfortable use. The goal of the project is to enable faster interventions to prevent injuries. This also reduces the burden and costs on caregivers, helping both family members and professional care providers to optimize care through real-time health data insights.
Crisis of Falls Among Older Adults
Falls are a growing challenge
Every third person over 65 experiences a fall each year. These incidents lead to injuries, loss of confidence, and billions in healthcare costs worldwide. For those living with conditions like Parkinson鈥檚 or Dementia, the risk is even higher.
Traditional monitoring comes too late
Today, fall-risk assessments happen only a few times a year in clinical settings 鈥 providing a snapshot and not the full picture. Subtle signs of balance decline often go unnoticed until a serious fall occurs.
We need continuous, real-world insight
As care moves closer to home, physiotherapists, caregivers, and families need smarter tools to track balance and mobility in daily life 鈥 not just during clinic visits.
Why GreenSense?
GreenSense aims to combine clinical-grade accuracy with everyday usability for real-world tracking of gait and balance. Our sensors are developed to be reliable, predictive and sustainable.
Evidence-based: Close collaboration between academic and health partners.
Non-Intrusive: Designed for comfort and daily use.
Sustainable materials: Built with biodegradable sensor technology.
Scalable Analytics: Cloud platform with analytical insights and not just metrics, that are adaptable for clinics, home care, or large studies.
With GreenSense, prevention becomes proactive. People stay active, confident, and independent 鈥 and caregivers gain the insights they need to act before accidents happen.
Concept Development with flexible, biodegradable GreenSense sensors
Supporting research
- Heikkinen, Mari & Ba艧ar谋r, Fevzihan & Miikki, Kim & Al Haj, Yazan & Mohan, Mithila & Vapaavuori, Jaana. (2024). A Low鈥怌ost and Do鈥怚t鈥怸ourself Pressure Sensor Enable Human Motion Detection and Human鈥揗achine Interface Applications. Advanced Sensor Research. 3. 10.1002/adsr.202300162.
- Ba艧ar谋r, Fevzihan & Al Haj, Yazan & Zou, Fangxin & De, Swarnalok & Nguyen, An & Frey, Alexander & Haider, Ijlal & Sariola, Veikko & Vapaavuori, Jaana. (2024). Edible and Biodegradable Wearable Capacitive Pressure Sensors: A Paradigm Shift toward Sustainable Electronics with Bio鈥怋ased Materials. Advanced Functional Materials. 34. 10.1002/adfm.202403268.
- Blumen, H.M., Jayakody, O. and Verghese, J., 2023. Gait in cerebral small vessel disease, pre-dementia, and dementia: A systematic review.鈥疘nternational Journal of Stroke,鈥18(1), pp.53-61.
- Beauchet, O., Annweiler, C., Callisaya, M.L., De Cock, A.M., Helbostad, J.L., Kressig, R.W., Srikanth, V., Steinmetz, J.P., Blumen, H.M., Verghese, J. and Allali, G., 2016. Poor gait performance and prediction of dementia: results from a meta-analysis. Journal of the American Medical Directors Association, 17(6), pp.482-490.
- Modarresi, S., Divine, A., Grahn, J.A., Overend, T.J. and Hunter, S.W., 2019. Gait parameters and characteristics associated with increased risk of falls in people with dementia: a systematic review.鈥疘nternational psychogeriatrics,鈥31(9), pp.1287-1303.
- Schwenk, M., Hauer, K., Zieschang, T., Englert, S., Mohler, J. and Najafi, B., 2014. Sensor-derived physical activity parameters can predict future falls in people with dementia.鈥疓erontology,鈥60(6), pp.483-492.
We are looking for potential collaborators and and partners for pilots
- Elderly care providers and home-care organizations
- Physiotherapy centers and rehabilitation clinics
- Research institutions and universities
- Investors and commercialization partners
Our Team
Fevzihan Bararir
Stephan Sigg
Richard Jerome
Birgitta Tetri
Jaana Vapaavuori
Teemu Santonen
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