Mobile Health Sensors, Analytic Methods, and Applications /
This volume provides a comprehensive introduction to mHealth technology and is accessible to technology-oriented researchers and practitioners with backgrounds in computer science, engineering, statistics, and applied mathematics. The contributing authors include leading researchers and practitioner...
Corporate Author: | |
---|---|
Other Authors: | , , |
Format: | Electronic eBook |
Language: | English |
Published: |
Cham :
Springer International Publishing : Imprint: Springer,
2017.
|
Subjects: | |
Online Access: | Full Text via HEAL-Link |
Table of Contents:
- Introduction to Section 1: mHealth Applications and Tools
- StudentLife: Using Smartphone to Assess Mental Health and Academic Performance of College Students
- Circadian Computing: Sensing, Modeling, and Maintaining Biological Rhythms
- Design Lessons from a Micro-Randomized Pilot Study in Mobile Health
- The Use of Asset-Based Community Development in a Research Project Aimed at Developing mHealth Technologies for Older Adults
- Designing Mobile Health Technologies for Self-Monitoring: The Bit Counter as a Case Study
- mDebugger: Assessing and Diagnosing the Fidelity and Yield of Mobile Sensor Data
- Introduction to Section II: Sensors to mHealth Markers
- Challenges and Opportunities in Automated Detection of Eating Activity
- Detecting Eating and Smoking Behavior Using Smartwatches
- Wearable Motion Sensing Devices and Algorithms for Precise Healthcare Diagnostics and Guidance
- Paralinguistic Analysis of Children's Speech in Natural Environments
- Pulmonary Monitoring Using Smartphones
- Wearable Sensing of Left Ventricular Function
- A new direction for Biosensing: RF sensors for monitoring cardio-pulmonary function
- Wearable Optical Sensors
- Introduction to Section III: Markers to mHealth Predictors
- Exploratory Visual Analytics of Mobile Health Data: Sensemaking Challenges and Opportunities
- Learning Continuous-Time Hidden Markov Models for Event Data
- Time-series Feature Learning with Applications to Healthcare Domain
- From Markers to Interventions: The Case of Just-in-Time Stress Intervention
- Introduction to Section IV: Predictors to mHealth Interventions
- Modeling Opportunities in mHealth Cyber-Physical Systems
- Control Systems Engineering for Optimizing Behavioral mHealth Interventions
- From Ads to Interventions: Contextual Bandits in Mobile Health
- Towards Health Recommendation Systems: An Approach for Providing Automated Personalized Health Feedback from Mobile Data.