Remote Monitoring of Human’s Activities and Health

Slides:



Advertisements
Similar presentations
Wireless Sensor Networks Studies and experiences at ISMB Torino, Italy Edoardo Calia Human Factors and the Digital Home Workshop ETSI, Sophia.
Advertisements

ASNA Architecture and Services of Network Applications Research overview and opportunities L. Ferreira Pires.
On-body health data aggregation using mobile phones by Lama Nachman, Jonathan Huang, Raymond Kong, Rahul Shah,Junaith Shahabdeen.
Multi-agents based wireless sensor telemedicine network for E-Health monitoring of HIV Aids Patients. By: Muturi Moses Kuria, SCI, University of Nairobi,
Wireless Sensor Network. A wireless sensor network (WSN) is a wireless network consisting of spatially distributed autonomous devices using sensors to.
CS 441: Charles Durran Kelly.  What are Wireless Sensor Networks?  WSN Challenges  What is a Smartphone Sensor Network?  Why use such a network? 
DATA SECURITY AND PRIVACY IN WIRELESS BODY AREA NETWORKS MING LI AND WENJING LOU, WORCESTER POLYTECHNIC INSTITUTE KUI REN, ILLINOIS INSTITUTE OF TECHNOLOGY.
Home Health Care and Assisted Living John Stankovic, Sang Son, Kamin Whitehouse A.Wood, Z. He, Y. Wu, T. Hnat, S. Lin, V. Srinivasan AlarmNet is a wireless.
The New Era of Connected Aging: A Framework for Understanding Technologies that Support Older Adults in Aging in Place Author: Center for Technology and.
Smart Products and Connected Health The Personal Metrics Movement Fredric Raab Sr. Systems Engineer UCSD Center for Wireless and Population Health Systems.
Personalized Medicine Research at the University of Rochester Henry Kautz Department of Computer Science.
Learning Micro-Behaviors In Support of Cognitive Assistance AlarmNet is a wireless sensor network (WSN) system for smart health-care that opens up new.
Component 4: Introduction to Information and Computer Science Unit 10: Future of Computing Lecture 2 This material was developed by Oregon Health & Science.
COSC7388: Advanced Topics in Distributed Computing -- Mobile Computing in Smart Health and Well beings Rong Zheng Associate
Home Health Care and Assisted Living Professor John A. Stankovic Department of Computer Science University of Virginia.
IntroOH-1 CSE 5810 Wireless Body Sensor Networks (WBSN) in Healthcare Aljoharah A. Algwaiz Computer Science & Engineering Department The University of.
1 Distributed Big Data & Analytics University of Cincinnati –Bioinformatics Project/Research Title: NIH BD2K-LINCS Perturbation Data Coordination and Integration.
Tanenbaum & Van Steen, Distributed Systems: Principles and Paradigms, 2e, (c) 2007 Prentice-Hall, Inc. All rights reserved DISTRIBUTED.
Some Thoughts on Sensor Network Research Krishna Kant Program Director National Science Foundation CNS/CSR Program.
COLUMBIA UNIVERSITY Department of Electrical Engineering The Fu Foundation School of Engineering and Applied Science IN THE CITY OF NEW YORK Networking.
Component 4: Introduction to Information and Computer Science Unit 10b: Future of Computing.
Integrating Digital and Mobile Health: From Next Generation Sensors to Cloud Analytics Speakers: Yohan Lee, PhD; Ernest Sohn DISCLAIMER: The views and.
Raising Personal Inclination and Usability of ICT supported Health Roman Trobec 1, Viktor Avbelj 1 and Uroš Stanič 2 1 Jožef Stefan Institute, Jamova 39,
WvU-Secure Group 10 - Wireless Sensor Network Security System Steven Andryzcik, Daniel Gilmore, Dane Hamilton, and Garrett Michael.
1 Location and Activity Tracking with the Cloud Taj Morton, Alex Weeks, Samuel House, Patrick Chiang, and Chris Scaffidi School of Electrical Engineering.
Simulation of Sensor Clustering in WBAN Networks
Internet of Things. IoT Novel paradigm – Rapidly gaining ground in the wireless scenario Basic idea – Pervasive presence around us a variety of things.
Internet of Things in Industries
Amagees Tech Corp value added services Data Management and Infrastructure.
Telemedicine Unit 5, Lesson 6 Explanation Presentation
788.11J Presentation Wearable Wireless Body Area Networks (WWBAN) Presented by Jingjing He.
Revolutionizing Point of Care with Remote Healthcare Solutions Lance Myers, PhD.
Announce-1 CSE 5810Announcements  Informatics is:  Management and Processing of Data  From Multiple Sources/Contexts  Involves Classification (Ontologies),
Wireless Sensor Network: A Promising Approach for Distributed Sensing Tasks.
Introduction to Mobile-Cloud Computing. What is Mobile Cloud Computing? an infrastructure where both the data storage and processing happen outside of.
Assisted Cognition Systems Henry Kautz Department of Computer Science.
IntroOH-1 CSE 5810 Remote Health Care Monitoring by Wearable Sensors and Mobile Devices Kanchan Jha Computer Science & Engineering Department The University.
Authors: Christos Stergiou Andreas P. Plageras Kostas E. Psannis
Personal Home Healthcare System for the Cardiac Patient of Smart City Using Fuzzy Logic Shijia Liu.
Survey on architecture of Mobile Web Services
@Japan Smart City Trip February 24-28, 2017
Cost Effective Mobile Base Health Monitoring System Under Cloud Environment. To interpret health from their mobiles under cloud environment and creating.
Objectives Overview Explain why computer literacy is vital to success in today’s world Define the term, computer, and describe the relationship between.
Networking & Communications Prof. Javad Ghaderi
Testbed for Medical Cyber-Physical Systems
MetaOS Concept MetaOS developed by Ambient Computing to coordinate the function of smart, networked devices Smart networked devices include processing.
World-Leading Research with Real-World Impact!
Data Quality: Practice, Technologies and Implications
Algorithms for Big Data Delivery over the Internet of Things
Test Automation for IoT solutions A Paradigm shift
WEARABLE BIOSENSOR SYSTEM USING ZIGBEE TECHNOLOGY
Basic Introduction to Computers
The Internet of Things (IoT) and Analytics
Internet of Things (IoT)
Telemedicine Unit 5, Lesson 6 Explanation Presentation 5.6.1
Wireless Body Area Network (WBAN)
Mobile Commerce and Ubiquitous Computing
Hjalmar Delaude, Jamente Cooper, Sivakumar Pillai, Istvan Barabasi
Submission Title: TG6 Closing Report for the Session in January 2009
Announcements Research Topic – finalize by 9/22 – topics so far
Internet of Things Stay Relevant in Digital Era
Telemedicine Unit 5, Lesson 6 Explanation Presentation 5.6.1
Telemedicine Unit 5, Lesson 6 Explanation Presentation 5.6.1
Instructor: Mort Anvari
Telemedicine Unit 5, Lesson 6 Explanation Presentation 5.6.1
Telemedicine Unit 5, Lesson 6 Explanation Presentation 5.6.1
Welcome to The World of Internet of Things
cHiPSet – CS8 Final Report
DPUK Sensing Platform Matt Machin mHealth Applications Manager
Smart Fog: Fog Computing Framework for Telehealth Big Data Analytics in Wearable Internet of Things Debanjan Borthakur.
Presentation transcript:

Remote Monitoring of Human’s Activities and Health cHiPSet – CS6 Report Sabri Pllana On behalf of CS6 members March 28 – 29, 2019, Vilnius (LT) 1 1

Introduction Comarch e-CareBand, https://youtu.be/xRdpODAhTrU

CS6 Outcome in Two Book* Chapters (I) Ultra Wide Band Body Area Networks: Design and integration with Computational Clouds Joanna Kołodziej, Daniel Grzonka, Adrian Widłak, Paweł Kisielewicz (II) Medical Data Processing and Analysis for Remote Health and Activities Monitoring Salvatore Vitabile, Michal Marks, Dragan Stojanovic, Sabri Pllana, Jose M. Molina, Mateusz Krzyszton, Andrzej Sikora, Andrzej Jarynowski, Farhoud Hosseinpour, Agnieszka Jakobik, Aleksandra Stojnev Ilic, Ana Respicio, Dorin Moldovan, Cristina Pop, and Ioan Salomie (*) High-Performance Modelling and Simulation for Big Data Applications: Selected Results of the COST Action IC1406 cHiPSet. Kolodziej, Joanna, Gonzalez-Velez, Horacio (Eds.), Springer 2019, https://www.springer.com/us/book/9783030162719

(I) Ultra Wide Band Body Area Networks Wireless Body Area Network (WBAN) small network scale long battery life short range communications security awareness Ultra Wide Band Body Area Networks (UWB-BANs) WBAN devices affect insignificantly human tissues The chapter addresses models, applications and research challenges state-of-the art in the cloud-based support security issues An example of Wireless BAN Cloud-based support to WBANs

(II) Medical Data Processing and Analysis Health monitoring systems processing of data retrieved from smart phones, smart watches, smart bracelets, various sensors and wearable devices The chapter addresses data collection, fusion, ownership and privacy issues models, technologies and solutions for medical data processing and analysis big medical data analytics for remote health monitoring research challenges and opportunities in medical data analytics examples of case studies and practical solutions General architecture of a system for remote monitoring of people health and activities

Monitoring Patients With Chronic Heart Diseases Example 1: Monitoring Patients With Chronic Heart Diseases Contact person: Joanna Kolodziej Research domain: mobility and e-health sensors located on human body or clothes monitoring patients with chronic heart diseases experiment with 100 taxi drivers in Cracow store data in COMARCH e-Care Center Data JHBD (JSON Header Binary Data) format used for ECG data Software OpenStack, C++, Java COMARCH Personal Medical Assistant COMARCH e-Care Remote Medical Care Centre

A smartphone and Polar H7 heart rate sensor Example 2: Smartphone Ad Hoc Network for e-Health Contact person: Michal Marks Distributed monitoring of human health health monitoring during a trip each trip participant has a smartphone and health sensors monitor heart rate, body temperature,.. trip participants are connected via Bluetooth tourist guide is connected with trip participants, travel agency and rescue teams SmartGroup@Net (SGN) mobile application enables direct communication via Bluetooth Low Energy (BLE) without using a cellular network BLE: ~150m range, 1Mbps data rate A smartphone and Polar H7 heart rate sensor SGN application

ML-based Monitoring of Patients with Dementia Example 3: ML-based Monitoring of Patients with Dementia Contact person: Ioan Salomie Monitor activities of patients with dementia use Raspberry Pi devices for monitoring activities (sleeping, feeding, mobility,..) machine learning (random forest, k-means) implemented using Spark detect anomalies in the pattern of daily activities identify polypharmacy side-effects: health decline symptoms caused by the side effects of prescribed medications use random forest for detecting the deviations of the daily life activities use k-means for correlating deviations with the side-effects of drug-drug interactions A system for analyzing daily activities of patients with dementia using ML algorithms Detecting the side-effects of polypharmacy base on daily activities of patients with dementia

Horacio GONZALEZ-VELEZ (IE) Thank You For Your Attention CS6 Contact Person Sabri PLLANA (SE) sabri.pllana@lnu.se CHIPSET Chair Joanna KOLODZIEJ (PL) jokolodziej@pk.edu.pl CHIPSET Vice Chair Horacio GONZALEZ-VELEZ (IE) horacio@ncirl.ie Science Officer Ralph STUEBNER (COST) ralph.stuebner@cost.eu Web Presence http://www.cost.eu/COST_Actions/ict/IC1406 http://chipset-cost.eu/