The tool in
question is a neural network, a series of connected algorithms that mimic the
way a human brain works, capable of assessing whether someone has Parkinson’s
from their nocturnal breathing — i.e., breathing patterns that occur while
sleeping. The neural network, which was trained by MIT PhD student Yuzhe Yang and postdoc Yuan Yuan, is also able to discern the severity of someone’s Parkinson’s disease
and track the progression of their disease over time.
Yang is first author on a new paper describing the work, published in Nature
Medicine. Katabi, who is also an affiliate of
the MIT Computer Science and Artificial Intelligence Laboratory and director of
the Center for Wireless Networks and Mobile Computing, is the senior author. They are joined by Yuan and 12
colleagues from Rutgers University, the University of Rochester Medical Center,
the Mayo Clinic, Massachusetts General Hospital, and the Boston University
College of Health and Rehabilition.
Over the years, researchers have
investigated the potential of detecting Parkinson’s using cerebrospinal fluid
and neuroimaging, but such methods are invasive, costly, and require access to
specialized medical centers, making them unsuitable for frequent testing that
could otherwise provide early diagnosis or continuous tracking of disease
progression.
The MIT researchers demonstrated that
the artificial intelligence assessment of Parkinson’s can be done every night
at home while the person is asleep and without touching their body. To do so,
the team developed a device with the appearance of a home Wi-Fi router, but
instead of providing internet access, the device emits radio signals, analyzes
their reflections off the surrounding environment, and extracts the subject’s
breathing patterns without any bodily contact. The breathing signal is then fed
to the neural network to assess Parkinson’s in a passive manner, and there is
zero effort needed from the patient and caregiver.
“A relationship between Parkinson’s and
breathing was noted as early as 1817, in the work of Dr. James Parkinson. This
motivated us to consider the potential of detecting the disease from one’s
breathing without looking at movements,” Katabi says. “Some medical studies
have shown that respiratory symptoms manifest years before motor symptoms,
meaning that breathing attributes could be promising for risk assessment prior
to Parkinson’s diagnosis.”
The fastest-growing neurological disease
in the world, Parkinson’s is the second-most common neurological disorder,
after Alzheimer’s disease. In the United States alone, it afflicts over 1
million people and has an annual economic burden of $51.9 billion. The research
team’s algorithm was tested on 7,687 individuals, including 757 Parkinson’s patients.
Katabi notes that the study has
important implications for Parkinson’s drug development and clinical care. “In
terms of drug development, the results can enable clinical trials with a
significantly shorter duration and fewer participants, ultimately accelerating
the development of new therapies. In terms of clinical care, the approach can
help in the assessment of Parkinson’s patients in traditionally underserved
communities, including those who live in rural areas and those with difficulty
leaving home due to limited mobility or cognitive impairment,” she says.
“We’ve had no therapeutic breakthroughs
this century, suggesting that our current approaches to evaluating new
treatments is suboptimal,” says Ray Dorsey, a professor of neurology at the University of Rochester and
Parkinson’s specialist who co-authored the paper. Dorsey adds that the study is
likely one of the largest sleep studies ever conducted on Parkinson’s. “We have
very limited information about manifestations of the disease in their natural
environment and [Katabi’s] device allows you to get objective, real-world
assessments of how people are doing at home. The analogy I like to draw [of
current Parkinson’s assessments] is a street lamp at night, and what we see
from the street lamp is a very small segment … [Katabi’s] entirely contactless
sensor helps us illuminate the darkness.”
Source & image: https://news.mit.edu/2022/artificial-intelligence-can-detect-parkinsons-from-breathing-patterns-0822
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