Workshop: Machine Learning for Mobile Health
Joe Futoma, Walter Dempsey, Katherine Heller, Yi-An Ma, Nicholas Foti, Marianne Njifon, Kelly Zhang, Hera Shi
Sat, Dec 12th, 2020 @ 15:00 – 22:30 GMT
Abstract: Mobile health (mHealth) technologies have transformed the mode and quality of clinical research. Wearable sensors and mobile phones provide real-time data streams that support automated clinical decision making, allowing researchers and clinicians to provide ecological and in-the-moment support to individuals in need. Mobile health technologies are used across various health fields. Their inclusion in clinical care has aimed to improve HIV medication adherence, to increase activity, supplement counseling/pharmacotherapy in treatment for substance use, reinforce abstinence in addictions, and to support recovery from alcohol dependence. The development of mobile health technologies, however, has progressed at a faster pace than the science and methodology to evaluate their validity and efficacy.
Current mHealth technologies are limited in their ability to understand how adverse health behaviors develop, how to predict them, and how to encourage healthy behaviors. In order for mHealth to progress and have expanded impact, the field needs to facilitate collaboration among machine learning researchers, statisticians, mobile sensing researchers, human-computer interaction researchers, and clinicians. Techniques from multiple fields can be brought to bear on the substantive problems facing this interdisciplinary discipline: experimental design, causal inference, multi-modal complex data analytics, representation learning, reinforcement learning, deep learning, transfer learning, data visualization, and clinical integration.
This workshop will assemble researchers from the key areas in this interdisciplinary space necessary to better address the challenges currently facing the widespread use of mobile health technologies.
Current mHealth technologies are limited in their ability to understand how adverse health behaviors develop, how to predict them, and how to encourage healthy behaviors. In order for mHealth to progress and have expanded impact, the field needs to facilitate collaboration among machine learning researchers, statisticians, mobile sensing researchers, human-computer interaction researchers, and clinicians. Techniques from multiple fields can be brought to bear on the substantive problems facing this interdisciplinary discipline: experimental design, causal inference, multi-modal complex data analytics, representation learning, reinforcement learning, deep learning, transfer learning, data visualization, and clinical integration.
This workshop will assemble researchers from the key areas in this interdisciplinary space necessary to better address the challenges currently facing the widespread use of mobile health technologies.
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Schedule
15:00 – 15:10 GMT
Intro
15:10 – 15:30 GMT
Invited Talk: Matthew Nock
Matthew Nock
15:30 – 15:50 GMT
Invited Talk: Lee Hartsell
Lee Hartsell
15:50 – 16:10 GMT
Invited Talk: Ally Salim Jr
Ally Salim Jr
16:15 – 16:25 GMT
Towards Personal Hand Hygiene Detection in Free-living Using Wearable Devices
Qu Tang
16:25 – 16:35 GMT
Using Wearables for Influenza-Like Illness Detection: The importance of design
Bret Nestor
16:35 – 16:45 GMT
Representing and Denoising Wearable ECG Recordings
Jeffrey Chan
16:45 – 17:15 GMT
Discussion for Invited Speakers: Matthew Nock, Lee Hartsell, Ally Salim Jr
17:15 – 18:00 GMT
Poster Session in Gather Town
18:00 – 19:00 GMT
Lunch / Networking Break
19:00 – 19:20 GMT
Invited Talk: Susan Murphy
Susan Murphy
19:20 – 19:40 GMT
Invited Talk: Tanzeem Choudhury
Tanzeem Choudhury
19:40 – 20:00 GMT
Invited Talk: Tim Althoff
Tim Althoff
20:00 – 20:15 GMT
Break
20:15 – 20:25 GMT
A generative, predictive model for menstrual cycle lengths that accounts for potential self-tracking artifacts in mobile health data
Kathy Li
20:25 – 20:35 GMT
Using Convolutional Variational Autoencoders to Predict Post-Trauma Health Outcomes from Actigraphy Data
Ayse Selin Cakmak
20:35 – 20:45 GMT
Fast Physical Activity Suggestions: Efficient Hyperparameter Learning in Mobile Health
Marianne Menictas
20:45 – 21:15 GMT
Discussion with Invited Speakers: Susan Murphy, Tanzeem Choudhury, Tim Althoff
21:15 – 22:15 GMT
Poster Session in Gather Town
22:15 – 22:30 GMT