City
Epaper

Wearable sensor to predict worsening heart failure

By IANS | Updated: February 25, 2020 18:30 IST

A new wearable sensor that works in conjunction with artificial intelligence (AI) technology could help doctors remotely detect critical changes in heart failure patients days before a health crisis occurs, says a study.

Open in App

New York, Feb 25 A new wearable sensor that works in conjunction with artificial intelligence (AI) technology could help doctors remotely detect critical changes in heart failure patients days before a health crisis occurs, says a study.

The researchers said the system could eventually help avert up to one in three heart failure readmissions in the weeks following initial discharge from the hospital and help patients sustain a better quality of life.

"This study shows that we can accurately predict the likelihood of hospitalisation for heart failure deterioration well before doctors and patients know that something is wrong," says the study's lead author Josef Stehlik from University of Utah in the US.

"Being able to readily detect changes in the heart sufficiently early will allow physic to initiate prompt interventions that could prevent rehospitalisation and stave off worsening heart failure," Stehlik added.

According to the researchers, even if patients survive, they have poor functional capacity, poor exercise tolerance and low quality of life after hospitalisations.

"This patch, this new diagnostic tool, could potentially help us prevent hospitalizations and decline in patient status," Stehlik said.

For the findings, published in the journal Circulation: Heart Failure, the researchers followed 100 heart failure patients, average age 68, who were diagnosed and treated at four veterans administration (VA) hospitals in Utah, Texas, California, and Florida.

After discharge, participants wore an adhesive sensor patch on their chests 24 hours a day for up to three months.

The sensor monitored continuous electrocardiogram (ECG) and motion of each subject.

This information was transmitted from the sensor via Bluetooth to a smartphone and then passed on to an analytics platform, developed by PhysIQ, on a secure server, which derived heart rate, heart rhythm, respiratory rate, walking, sleep, body posture and other normal activities.

Using artificial intelligence, the analytics established a normal baseline for each patient. When the data deviated from normal, the platform generated an indication that the patient's heart failure was getting worse.

Overall, the system accurately predicted the impending need for hospitalization more than 80 per cent of the time.

On average, this prediction occurred 10.4 days before a readmission took place (median 6.5 days), the study said.

( With inputs from IANS )

Open in App

Related Stories

EntertainmentKangana Ranaut stuns in regal bridal look as she returns to ramp for 'Raabta by Rahul'

InternationalRussia launches massive strikes on Ukraine's gas sites

International"Resumption of direct flights will further facilitate cross-border travel, exchanges and cooperation," says Chinese Embassy spokesperson Yu Jing

InternationalHamas' agreement to peace plan not about Gaza but "long sought peace" in Middle East, says Trump

InternationalRajya Sabha Deputy Chairman meets South Africa's National Assembly Speaker

स्वास्थ्य Realted Stories

HealthVenugopal calls on Kharge, wishes him speedy recovery

HealthHow Fenugreek Seeds Can Help You Lose Weight and Improve Overall Health

HealthOver 18 lakh health camps screened 10 crore citizens under Swasth Nari Sashakt Parivar Abhiyaan: Govt

HealthWest coast Sindhis genetically distinct from Pakistani Sindhis: Study

HealthTake medicines only after registered doctor advises: Rajasthan health official