Innovating Works

WIISEL

Financiado
Wireless Insole for Independent and Safe Elderly Living The main goal of WIISEL is to develop a flexible research tool to collect and analyze gait data from real users and correlate parameters related with the risk of falls from the elderly population.<br/>The global objective of the p... The main goal of WIISEL is to develop a flexible research tool to collect and analyze gait data from real users and correlate parameters related with the risk of falls from the elderly population.<br/>The global objective of the project is to provide a tool to continuous and remotely monitor gait and fall risk in the elderly and collect information on long term gait data for researchers in this field. This tool will consist of a combination of a flexible software platform together with wearable insole device collecting data related with gait. Risk of falls will be calculated as a new Fall Risk Index based on multiple gait parameters and gait pattern recognition. WIISEL will allow quantifying activity, assessing the quality of gait under real life conditions and will enable researchers to evaluate and monitor fall risk in elderly patients, in the home and community environment, mostly reflecting everyday life behavior. The system can be used as a research or rehabilitation tool and enable the recording of fall events to better recognize and correlate fall-associated gait patterns and increased fall risk.<br/>The main output expected from the project is a flexible research tool that will impact in the scientific community with the following elements:1. A constant monitoring system for elderly people through a wearable and unobtrusive sensing insole connected to a data analysis system. The WIISEL system will continuously capture spatial–temporal data (eg, stride time, single support time, and swing time, double support time, cadence, nº steps per day, step length, stride length, gait speed, heel acceleration, postural sway, limits of stability, minimum foot clearance, maximum pressure values on heel and toe) related to human gait and balance.2. Intelligent algorithms which will utilize data analysis including pattern recognition to quantify fall risk and provide useful information on fall risk assessment. With these results the project will contribute with a self learning analysis framework as a basis for further research in optimizing fall risk prediction and identifying fall risk factors.3. A Fall Risk Index based on multiple gait parameters (eg stride time, gait speed, step length and double support time and their variability) and gait pattern recognition to assess and quantify the risk of fall of elderly population4. Real-life and long term human gait data useful for the scientific community to enrich existing databases.5. A fall detection algorithm to feed gait pattern recognition.<br/>Moreover, the WIISEL system as a flexible tool may lay the ground for a commercial pathway as a continuous and remotely monitoring platform. ver más
31/03/2015
4M€
Duración del proyecto: 40 meses Fecha Inicio: 2011-11-01
Fecha Fin: 2015-03-31

Línea de financiación: concedida

El organismo FP7 notifico la concesión del proyecto el día 2015-03-31
FP7 No se conoce la línea exacta de financiación, pero conocemos el organismo encargado de la revisión del proyecto.
Presupuesto El presupuesto total del proyecto asciende a 4M€
Líder del proyecto
FUNDACIO EURECAT No se ha especificado una descripción o un objeto social para esta compañía.