Screening tool for faster stroke detection
Friday, 21 June, 2024
There were an estimated 39,500 stroke events in Australia 鈥 more than 100 every day, in 2020. Stroke was recorded as the principal diagnosis in around 67,900 hospitalisations in the country in 2020鈥21, with the condition being the underlying cause of 8500 deaths (4.9% of all deaths and 20% of cardiovascular disease deaths) in 2021, according to from the .
Strokes occur when the blood supply to part of the brain is interrupted or reduced, which prevents brain tissue from getting oxygen and nutrients. A few minutes of delay can result in permanent damage to the brain cells.
With an aim to improve detection and outcomes, a team of biomedical engineers at have developed a smartphone face-screening tool that could help paramedics accurately identify stroke in seconds. The research was led by PhD scholar Guilherme Camargo de Oliveira, from RMIT and S茫o Paulo State University, under the supervision of team leader Professor Dinesh Kumar.
鈥淓arly detection of stroke is critical, as prompt treatment can significantly enhance recovery outcomes, reduce the risk of long-term disability and save lives,鈥 said Kumar, from RMIT鈥檚 School of Engineering.
鈥淲e have developed a simple smartphone tool that paramedics can use to instantly determine whether a patient is post-stroke and then inform the hospital before the ambulance leaves the patient鈥檚 house.鈥
Faster detection
The smartphone tool, which is said to have an accuracy rating of 82% for detecting stroke, would not replace comprehensive clinical diagnostic tests for stroke, but could help identify people needing treatment much sooner.
鈥淥ur face-screening tool has a success rate for detecting stroke that compares favourably to paramedics,鈥 Kumar said.
Symptoms of stroke include confusion, partial or complete loss of movement control, speech impairments and diminished facial expressions.
鈥淪tudies indicate that nearly 13% of strokes are missed in emergency departments and at community hospitals, while 65% of patients without a documented neurological examination experience undiagnosed stroke,鈥 Kumar said.
鈥淢any times, the signs are very subtle. On top of that, if first responders are working with people who are not their race or gender 鈥 most notably women and people of colour 鈥 it is more likely that the signs will be missed.
鈥淭his rate can be even higher in smaller regional centres. Given that many strokes occur at home and initial care is often provided by first responders in non-ideal conditions, there is an urgent need for real-time, user-friendly diagnostic tools.鈥
How the technology works
The novel AI-driven technology uses the power of facial expression recognition to detect stroke by analysing facial symmetry and specific muscle movements, known as action units.
The Facial Action Coding System (FACS), initially developed in the 1970s, categorises facial movements by the contraction or relaxation of facial muscles, providing a detailed framework for analysing facial expressions.
鈥淥ne of the key parameters that affects people with stroke is that their facial muscles typically become unilateral, so one side of the face behaves differently from the other side of the face,鈥 de Oliveira said.
鈥淲e鈥檝e got the AI tools and the image processing tools that can detect whether there is any change in the asymmetry of the smile聽鈥 that is the key to detection in our case.鈥
Video recordings of facial expression examinations of 14 people with post-stroke and 11 healthy controls were used in this study.
A potential collaboration
The team plan to develop the smartphone tool into an app in collaboration with healthcare providers so that it will be able to detect other neurological conditions that affect facial expressions.
鈥淲e want to be as sensitive and specific as possible. We are now working towards an AI tool with additional data and where we are going to be considering other diseases as well,鈥 Kumar said.
鈥淐ollaboration with healthcare providers will be crucial to integrate this app into existing emergency response protocols, providing paramedics with an effective means of early stroke detection.鈥
The study 鈥楩acial expressions to identify post-stroke: A pilot study鈥 has been published in .
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