Non-invasive technology is rapidly expanding opportunities for remote patient monitoring to improve outcomes. Cardiovascular researchers are joining the effort with two approaches that tap into juvenile humor and may reduce re-hospitalization rates for heart failure.
Home monitoring is challenging because of patient adherence, and especially low in the heart failure population. As a result, these patients are frequently hospitalized, and about a quarter of them are readmitted within the first 30 days, which leads to greater frustration for them and their families.
Wearable Sensors for HF: Valentina Kutyifa, associate professor of Cardiology, and Spencer Rosero, interim chief of Cardiology, are studying wearable sensors to monitor patients after hospitalization to capture vital signs and whether there are indicators of one-year outcomes.
Using Spire Health Tags for continuous monitoring, they will assess heart failure patients' respiration, heart rate, activity, sleep patterns and stress levels. Participants will enroll at hospital discharge and use the wearable sensors to provide the essential data.
The two-inch, felt-covered sensors attach to underwear for essentially around-the-clock data collection, according to Kutyifa. Once attached to undergarments, the sensors can be laundered and used for as long as a year.
The 30-day study will analyze the various indicators and compare data with patient outcomes. The goal is to establish feasibility of this new approach and to explore potential physiological markers that could predict risk of readmission.
FIT Seat: Working in partnership with Rochester Institute of Technology, cardiovascular researchers led by Wojciech Zareba, professor of Cardiology, will study the use of the Fully-Integrated Toilet Seat, or FIT Seat, in monitoring heart function in this challenging population. The work is funded by a new $2.9 million grant from the National Institutes of Technology.
The high-tech toilet seat was developed in 2014 by Rochester Institute of Technology engineers David Borkholder and Nicholas Conn, and Karl Schwarz, professor of Cardiology and director of the Echocardiography Laboratory. The FIT Seat has built-in sensors and uses machine learning and artificial intelligence to measure and transmit blood pressure, weight and heart rate and other key indicators to physicians. The data points will also be unique to each patient involved in the study.
The sensor algorithm in the FIT Seat is "smart" in that it can be trained to recognize patterns and characteristics that will be distinct to each person, even taking into account the communal nature of the toilet seat in an individual's home.
"There are a number of factors that can be evaluated in these patients. It is like having a patient on bedside monitoring in an intensive care unit," Zareba said. "At home, people don't usually have these monitoring tools and even if it is not continuous, it will be used by patients several times per day, and each time, it will record data and send it to be processed."
Zareba is working with Schwarz, Leway Chen, professor of Cardiology and medical director of the Advanced Heart Failure Program, and Robert Strawderman, chair and Distinguished Professor of Biostatistics and Computational Biology, to launch a study of 160 patients with heart failure in spring 2021.