News

Estimating clinical blood test results with smartwatch data

Collaborators

Clinicians and researchers have long been inspired by the potential of consumer-grade wearable sensors, such as smartwatches and smart clothing, to transform clinical care. However, to date, such technology has not resulted in many viable clinical applications – the recent ability to detect atrial fibrillation with smartwatches being a notable exception. Łukasz Kidziński, a research associate in bioengineering, and colleagues at Stanford University have now developed machine learning models that also correlate smartwatch data with clinical lab tests, such as those that measure the amount of red blood cells.

Their studies elucidate factors that can improve the accuracy of such predictions, such as the use of personalized models versus population-level models. These findings open the door for new clinical uses for smartwatch data.

Michael Snyder, Professor and Chair of Genetics and also a faculty affiliate of the Wu Tsai Human Performance Alliance at Stanford, is the senior author.

Read the full press release.

Latest News

Announcing 2025 funding opportunities for doctoral students and postdoctoral fellows

November 18, 2024

Announcing 2025 funding opportunities for doctoral students and postdoctoral fellows

New Postdoctoral Fellowship for Female Athlete Research

November 18, 2024

New Postdoctoral Fellowship for Female Athlete Research

Discovery of ketosis-related pathway could lead to new approach for obesity treatments

November 12, 2024

Discovery of ketosis-related pathway could lead to new approach for obesity treatments

Get Engaged

We invite faculty, students, staff, alumni, friends, and external organizations to participate in the Wu Tsai Human Performance Alliance at Stanford.