Precision health using wearables

We welcome you to join us in-person and on Zoom for our September eWEAR Seminar.

Date: Monday, September 30, 2024

Time: 12:30 pm to 1:30 pm PDT

Location: Stanford University (Y2E2 Building, Room 299 parking details below) & on Zoom

Lunch will be provided at 12:00pm for in-person attendees & a chance to talk with the speakers after the seminar.

Registration: Please click here to register

Speakers*:

Andrew Brooks
12:30 pm to 1:00 pm
“Wearables Infection Prediction: Optimizing Algorithms with Fitbit/Google & PAC12 Sports Conference”

Zeinab Esmaeilpour, Ph.D.
1:00 pm to 1:30 pm
“Detection of common respiratory infections, including COVID-19, using consumer wearable devices”  

Andrew Brooks, Ph.D.

Postdoctoral Researcher, Stanford University

Bio
Postdoctoral Researcher & NIH Fellow – Snyder Lab – Stanford Genetics. Andrew completed his doctorate in Human Genetics at Vanderbilt University focusing on host-microbiome assembly across species by establishing the framework of phylosymbiosis and across ethnicities as a mediation target for health disparities. Over five years in the Snyder lab has cultivated expertise in study design, high throughput wet-lab and computational processing, advanced analytical methods for multiomics and wearables, mentoring / teaching Stanford Grant Writing Academy courses, and is a project leader for four multiomic human-subjects studies: 

  1. Fitbit/Google & Pac12 Wearables Collaboration – Project Lead: https://snyderlabs.stanford.edu/pac12/
  2. Phase I (N=6,171) & Phase II (N=5,608) COVID-19 Wearables – Co-Lead: https://innovations.stanford.edu/wearables/
  3. Multiomic Antarctica Expedition – Project Lead: https://snyderlabs.stanford.edu/antarctica/
  4. iPOP – Microbiome Lead: https://med.stanford.edu/snyderlab/ipop.html

Abstract

The COVID-19 pandemic led us to develop algorithms for infection prediction and a real-time alerting system (Phase I: N=6,171; Nature Biomedical Engineering PMC9020268) & (Phase II: N=5,608; Nature Medicine PMID34845389), but these studies were limited in diversity, regular testing schema, and surveyed lifestyle predictors. In a 2021-2023 collaboration with Fitbit/Google and the PAC12 Sports Conference we provided Fitbit smartwatches and collected wearable data and surveys from 761 student athletes for up to two years. This seminar will examine existing algorithms as well as novel anomaly detection and machine learning approaches on 121 COVID-19 infections and 458 other illnesses, while controlling for effects of ~70k periods of exercise, ~2k weeks of significant travel, ~7k weeks annotated with 10 symptoms, ~74k nightly sleep profiles with HRV, as well as sports activity and living situation.

 

Zeinab Esmaeilpour, Ph.D.

Research Scientist, Google

Bio
Zeinab is an algorithm research scientist with a focus on using consumer technologies to empower people to manage and improve their health. At Google, Zeinab works on algorithm developments and clinical studies using wearables for illness detection and monitoring. 

Zeinab obtained her Ph.D. in Biomedical Engineering from City University of New York. She has spent much of her career in the intersection of health, biological signal processing and machine learning.

Abstract
Wearable devices can provide insight on health and well-being using longitudinal physiological signals. We report on the prospective performance of a consumer wearable physiology-based respiratory infection detection algorithm. The system used resting heart rate, respiratory rate and heart rate variability measures during the sleeping period to predict the presence of COVID-19 or other respiratory infections. In a cohort of 559 participants from January 6th to July 20th 2022, 31 instances of COVID-19 infection were confirmed by polymerase chain reaction (PCR) testing, 14 instances of COVID-19 confirmed by home test and in total 80 instances of respiratory virus (COVID-19 or other respiratory viruses confirmed with PCR or home test) were observed. For the 31 confirmed cases of COVID-19 infection, 28 received a positive alert within 8 days prior to the PCR test. For the larger set of confirmed respiratory infections (i.e., COVID-19 or other respiratory infections using PCR or home test), 63 received a positive alert within the 8 day window. Across all the cases, the estimated false positive rate on a prediction per day basis was 2% and positive predictive value ranged from 4% to 10% on this specific population with an observed incidence rate of 198 cases per week per 100k. Detailed examination of questionnaires filled out after receiving an alert revealed physical or emotional stress events such as intense exercise, poor sleep, stress or excessive alcohol consumption could result in a false positive. Thus, the real-time alerting system provides advance warning on respiratory viral infections as well as other physical or emotional stress events that could lead to physiological signal changes. This study shows the potential of wearables with embedded alerting systems to provide information on wellness measures. Link to paper

*Updated speaker on 9/27 from Ziv Lautman to Andrew Brooks


Parking Details

Seminar Location: Y2E2 Building, Room 299 (473 Via Ortega, Stanford, CA 94305, Y2E2 Building)

Garage/Lot Options (click here for more)
Via Ortega Garage: 498 Via Ortega, Stanford, CA 94305 (Map from garage to seminar location enter Y2E2 building by Coupa Cafe)

Rates (click here for more)
Per hour = $4.46
Day pass = $35.68 

The following three options are available to pay for parking

  1. Download the app and set up a Park Mobile account. It is recommended to do this before coming to campus. 
  2. Use ParkMobile’s Zone parking option: no app download or account needed. You can check out as a guest without setting up an account.
    1. Simply navigate to app.parkmobile.io/zone/start or text PARK to 77223
    2. Enter the zone number, and
    3. Follow the prompts. 
  3. Pay-By-Phone if you don’t have a smartphone or prefer an automated voice system, call ParkMobile at 877.727.5718 to start your parking session.

Safety Protocol:  Stanford University Covid-19 Policies. Stanford strongly recommends masking in crowded outdoor settings and when ill with respiratory symptoms.