One of the most severe dangers for the elderly is falls. One unwanted fall may cause broken bones, a prolonged healing process, or even loss of independence. What is even more alarming is that a large ...
Elderly people are exposed to everyday risks that may interfere with their safety and autonomy. Falls, dizziness, or abrupt ...
When every second counts, fall-detection technology can be the difference between a close call and a crisis. Today’s top-rated medical alert systems with fall detection blend smart sensors, intuitive ...
MyNotifi®, an automatic fall-detection wearable device, is a new system from MedHab that connects to a user’s smartphone and can send alerts. The system is a discrete device worn on the wrist and can ...
Falls are the number one cause of injury among adults 65 and older. But the truth is, your risk doesn't suddenly appear the day you turn 65. It increases gradually over time, especially if you're ...
The MarketWatch News Department was not involved in the creation of this content. Wearable Fall Detector Market Set to Reach USD 3.7 Billion by 2035, Driven by Aging Population and AI-Enabled ...
A new study pinpointed seven factors that influence older adults and their families to use fall detection technology, according to a report published Tuesday in BMC Geriatrics. The team conducted ...
San Diego-based GreatCall, a seller of aging in place technologies purchased by Best Buy last year, is launching an updated version of its retail personal emergency response system. Called the Lively ...
A 13-year-old won $25,000 for his AI fall-detecting device. He used the money to develop a free app.
You're currently following this author! Want to unfollow? Unsubscribe via the link in your email. Follow Jessica Orwig Every time Jessica publishes a story, you’ll get an alert straight to your inbox!
Most of us wish our parents would live as long as humanly possible, but some challenges arise if our wishes come true. While every individual is different, advanced aging usually brings about mobility ...
In a study published in the journal Information Systems Research, Texas Tech University's Shuo Yu and his collaborators developed a generative machine learning model to detect instability before a ...
Some results have been hidden because they may be inaccessible to you
Show inaccessible results