sensors for health recording and physical activity monitoring · conceive, implement, and validate...
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Submitted on 19 Jul 2017
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Sensors for Health Recording and Physical ActivityMonitoring
Guy Carrault, Frédéric Guidec, Jacques Prioux, Di Ge, Juliette Boulanger
To cite this version:Guy Carrault, Frédéric Guidec, Jacques Prioux, Di Ge, Juliette Boulanger. Sensors for Health Record-ing and Physical Activity Monitoring. Journées d’Etude sur la TéléSANté, 6ème edition, May 2017,Bourges, France. 2017. �hal-01565010�
Conceive, implement, and validateexperimentally devices allowing biophysicaldata ofmobile subjects to be gathered andexploitedinacon:nuousflow.
- LTSI-INSERM1090 - CASA-IRISAUMR6074 - M2S-CACHANUR2 - LAUREPS-CRPCC,EA1285 - CIC1414
SHERPAM
LOREM IPSUM DES SIT AMET DEMONSTRATUS DOLOR ET MAGNIS IPSUM DES SIT AMET DEMONSTRATUS DOLOR ET MAGNIS
A
SensorsforHealthRecording andPhysicalAc6vityMonitoring
OBJECTIVES
GENERAL ARCHITECTURE OF THE PROJECT
MAIN RESULTS
Actualstatusofthegenericpla2orm
PreliminaryResults
Sherpamprojectdesignwithrespecttohumanfactors
Selec;onamongcommerciallyavailablebodysensorspla2orms
ACCEPTANCE ADOPTION ACCEPTABILITY
Planification Conception Prototyping Development Implantation Evaluation Deployment
SHERPAM Project planning for human factor analysis
IRISA
LTSI/M2S
1) Anopen,flexibleplaUormbasedonpluginsforbothsensorsandembeddedprocessingalgorithms
2) Measuresoftheenergyconsump:onofvarioustransmissiontechnologies
1) Developsignalprocessingtoolsto: Recognize and classify five ambulatory and sedentaryac:vi:es (cycling, walking, running, si\ng, car-riding)usingheartrateandaccelera:ondatafusion.
1) DesignstudiesforsomeHeartfailureandoldcyclotourismpa:entsincoordina:onwiththe«cyclotourismedebretagne»basedonSherpamplaUorm.
1) ContextofSherpamuseunderstanding 2) User’sprofilesandrequirements 3) Authen:ca:onofprimaryfunc:onsand
risksofsensors/gateway/mobileapp./websiteuse
4) Reviewwearablesensoracceptanceandusability
Globaldesignofthestudy
Smartphone
SignalProcessing–DataExtracAon Temporaldatamining
ConsideraAonofdynamics SpecificapplicaAonstohealthysubjectsand/orpaAents
uImprovementofHFpa:entsfollow-upinperspec:veaber
Sherpamproject
wPA/EEanalyzeinanhealthypopula:on(seniors):complianceto
recommenda:ons
APPLICATIONAREAS
vAssessingwalkingabilityinpa:entswithperipheral
arterialdisease
RecogniAon,quanAficaAonandesAmaAonofphysicalacAvityrelatedtophysicalacAvity
MonitoringofphysiologicalandkinemaAcdata,geo-posiAoning
Accelerometers
ECG
GPS
Magnetometers
Velocity,
AcceleraAon
HeartRate
LocaAon VenAlaAon,Breathing
Rate siPng,standing,walking,running,.
Light,moderate,highintensity DE=XXkcal.min-1
LAUREPS-CIC-IT
CIC/IT
2)Developanewexperimentalprotocolfordaily-lifeac:vi:esrecogni:onandenergyexpenditurees:ma:on:
FocusedapplicaAondomains: - Heartfailurepa:ent’smonitoring(HF). - Outdoorassessmentoffunc:onallimita:onsandcommunity-basedwalkingprograms
forrehabilita:oninpa:entswithperipheralarterydisease. - Physicalac:vityrecogni:onandenergyexpenditurees:ma:on,
Experimental Phase 1 ⇒ Developmathema:calmodelsforac:vityrecogni:onandenergyexpenditurees:ma:on
Experimental Phase 2 ⇒ TestthestrengthofdevelopedmodelsinPhase1onthebasisofsemi-standardizedac:vi:es.
⇒ Amelioratetherecogni:onmodelsifnecessary. Experimental Phase 3
⇒ TestthestrengthofdevelopedmodelsinPhase1andamelioratedinphase2ondaily-lifeac:vi:essitua:on.
3)ECG-Ven:la:onExtrac:on
Ven$la$onsignal
Fusionusingkalmanfilter
ECGsignal
Extrac$onEDR
respiratoryfrequency
ven$la$on
Energyexpendure
SensorsBAN,gateway, mobileapp.&website
RiskManagement: Dangers,abnormaluse
UsageSpecifica:on
Usability&Acceptance tes:ng
ContextUnderstanding
SherpamMedicalDevice
Usersprofiles& Needs
Ac:vitygoals &Tasks
Organiza:onal se\ngs
Riskfactors
IRISA-CASA 1) AnopenplaUormdedicatedto mobilemonitoring
builtaroundfourcriteria:• Versa:lity:toaccommodatetoalargevarietyof
off-the-shelfsensors • Extensibility:toaddnewsensorsandembedded
processingeasily • Confiden:ality : to ensure the privacy and the
non-disclosureofthedata • Dependability : to work everywhere by limi:ng
the energy consump:on (EC) and by provding aresiliencetonetworkdisrup:on
1) Apluginapproach forbothsensorsandembeddedalgorithms to personalize the plaUorm for eachpa:entandhis/hercondi:on
2) Evalua:on of EC of various transmissiontechnologies
Publications :
- Healthcom’16 : Toward an Open-Source Flexible System for Mobile Health Monitoring. - Mobihealth’16 : Toward an Open-
Source Flexible System for Mobile Health Monitoring.
Theseresultswerepresentedin: ECSS’16 Conference, Advances in Biomedical Engineering(ICABME’15) Interna;onal Conference and then published inIEEEConferenceproceedings.
IRISA-CASA Battery
uptime
1) AnopenplaUormdedicatedtomobilemonitoringbuiltaroundfourcriteria:
l Versa:lity:toaccommodatetoalargevarietyofoff-the-shelfsensors
l Extensibility:toaddnewsensorsandembeddedprocessingeasily
l Confiden:ality:toensuretheprivacyandthenon-disclosureofthedata
l Dependability:toworkeverywhereandatany:mebylimi:ngtheenergyconsump:onandbyprovdingaresiliencetonetworkdisrup:ons
2) Pluginapproachforbothsensorsandembeddedalgorithmstomakeuseofalistofsensorsandalistofprocessingandselectthebestsuitedsensors/algorithmsaccordingtothepa:entcondi:on
3) Evalua:onoftheenergyconsump:onofvarioustransmissiontechnologies
Continuous transmission
Periodic transmission
No transmission
Battery uptime
Continuous transmission
Periodic transmission
No transmission
Battery Uptime (hours)
Transmission mode
Radiodisabled
Wi-Fi(802.11n)
EDGE(2.75G)
HSPA+(3.5G)
LTE(4G)
288
209
123
218
103
57
12 13 7
46
103
200
86
Experiment conditions: - Smartphone Moto G 4G 2014 - No mobility - Data production rate: 25 kb/s
Continuous transmission
Periodic transmission
No transmission
Transmission mode
Battery uptime
Publications Biomedical Signal Processing and Control (Journal, 2016) - Mobihealth’16 - 6th EAI International Conference on Wireless Mobile Communication and Healthcare (November 2016) - Healthcom’16 - 18th International Conference on e-Health Networking, Applications and Services (September 2016) - ECSS’16Conference-AdvancesinBiomedicalEngineering(ICABME’15)Interna;onalConferenceandthenpublishedinIEEEConferenceproceedings.