System and methods utilizing artificial intelligence algorithms to analyze wearable activity tracker data
Assignee
Aetna Inc.
Inventors
Naiqian Zhi, Benjamin Wanamaker, Rajiv Bhan, Sumeet Kumar
Abstract
A system and method are disclosed for monitoring health conditions based on data collected by a wearable device such as an activity tracker or a smart watch. Deep learning algorithms are configured to process an input vector that includes monitored parameter data collected by the wearable device as well as embedding data obtained from health records corresponding to a user account registered to the wearable device. In some embodiments, the input vector can also include social determinants data and/or demographic data. The output of the deep learning algorithms provides classifiers that represent probabilities that the user of the wearable device has an underlying health condition. If any underlying health condition is detected, then the user can be notified directly, via the wearable device or an associated application or technology, or indirectly, via a primary care provider associated with the user.
CPC Classifications
Filing Date
2020-06-29
Application No.
16916004
Claims
20