Study Finds Wearable Data May Help Predict Patient Engagement in Remote COPD Rehabilitation; Mayo Clinic

Sleep data captured with a wearable device could help clinicians better tailor care by identifying patients with chronic obstructive pulmonary disease (COPD).
Comparison of healthy lung versus COPD lung
COPD is a long-term lung disease that makes it hard to breathe after airways become inflamed and narrowed and mucus builds up. Wikimedia Commons
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Summary

COPD is a long-term lung disease that makes sleeping more difficult. Researchers found that baseline sleep data captured with a wearable device helps clinicians to provide better care to patients with COPD. Patients would first participate in a 12-week home pulmonary rehabilitation program to calculate their Sleep Health Score to identify their need for additional support to participate in pulmonary rehabilitation.

Sleep data captured with a wearable device could help clinicians better tailor care by identifying patients with chronic obstructive pulmonary disease (COPD) who may need additional support to participate in pulmonary rehabilitation, according to new research published in Mayo Clinic Proceedings: Digital Health.

COPD is a long-term lung disease that makes it hard to breathe after airways become inflamed and narrowed and mucus builds up. COPD can also make sleeping more difficult, affecting a patient's energy levels and overall health. These factors can influence participation in pulmonary rehabilitation, which includes a combination of exercise, education and support.

Researchers set out to understand whether a patient's sleep quality could help predict their level of participation in remote rehabilitation activities.

As a scientist and engineer, I wanted to explore how wearable data could improve the drop-out rates of remote pulmonary rehabilitation programs. By better understanding a patient's day-to-day life, we can make more personalized and potentially more effective care plan recommendations.

Dr. Stephanie Zawada, Ph.D., M.S., Mayo Clinic research associate, first author of the study, Kern Center for the Science of Health Care Delivery

In the study, researchers found that using baseline sleep data from a wrist activity monitor, combined with machine learning and traditional clinical indicators, improved the prediction of how consistently patients would participate in a 12-week home pulmonary rehabilitation program.

The team made those calculations after collecting sleep measures for one week to generate a Composite Sleep Health Score before the home-based pulmonary rehabilitation began. At the end of the 12-week program, analysis showed that including the health score improved prediction of patient engagement over the study period.

This information can help clinicians better tailor rehabilitation programs and identify patients who may benefit from additional support. It also may inform the design of future remote-care programs.

"Adding wearable data provides a more comprehensive view of a patient's daily pattern,"

Emma Fortune Ngufor, Ph.D., Mayo Clinic researcher, Kern Center

She noted that sleep data is one of several inputs that can help inform care decisions, alongside clinical assessments and patient-reported information.

Researchers note that additional investigation is needed to validate and refine the model in broader patient populations before broader clinical application.

For a complete list of authors, disclosures and funding, review the study.

(Newswise/SR)

Comparison of healthy lung versus COPD lung
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