View publication

This paper was accepted at the workshop "Learning from Time Series for Health" at NeurIPS 2022.

Heart rate (HR) dynamics in response to workout intensity and duration measure key aspects of an individual’s fitness and cardiorespiratory health. Models of exercise physiology have been used to characterize cardiorespiratory fitness in well-controlled laboratory settings, but face additional challenges when applied to wearables in noisy, real-world settings. Here, we introduce a hybrid machine learning model that combines a physiological model of HR and demand during exercise with neural network embeddings in order to learn user-specific fitness parameters. We apply this model at scale to a large set of workout data collected with wearables. We show this model can accurately predict HR response to exercise demand in new workouts. We further show that the learned embeddings correlate with traditional metrics that reflect cardiorespiratory fitness.

Related readings and updates.

Model-Driven Heart Rate Estimation and Heart Murmur Detection Based on Phonocardiogram

This paper has been accepted at IEEE International Workshop on Machine Learning for Signal Process (MLSP) 2024. Acoustic signals are crucial for health monitoring, particularly heart sounds which provide essential data like heart rate and detect cardiac anomalies such as murmurs. This study utilizes a publicly available phonocardiogram (PCG) dataset to estimate heart rate using model-driven methods and extends the best-performing model to a…
See paper details

Personalizing Health and Fitness with Hybrid Modeling

Recent research has explored clinical monitoring, cardiovascular events, and even clinical lab values from wearables data. As adoption increases, wearables data may become crucial in public health applications like disease monitoring and the design of epidemiological studies.

See highlight details