New research to be presented at this year’s Annual Meeting of The European Association for the Study of Diabetes (EASD), Madrid (9-13 Sept), highlights the potential of using voice analysis to detect undiagnosed type 2 diabetes (T2D) cases.
The study used on average 25 seconds of people’s voices along with basic health data including age, sex, body mass index (BMI), and hypertension status, to develop an AI model that can distinguish whether an individual has T2D or not, with 66% accuracy in women and 71% accuracy in men.
“Most current methods of screening for type 2 diabetes require a lot of time and are invasive, lab-based, and costly,” explained lead author Abir Elbeji from the Luxembourg Institute of Health, Luxembourg. “Combining AI with voice technology has the potential to make testing more accessible by removing these obstacles. This study is the first step towards using voice analysis as a first-line, highly scalable type 2 diabetes screening strategy.”
Around half of adults with diabetes (around 240 million worldwide) are unaware that they have the condition because the symptoms can be general or non-existent—around 90% of these have T2D [1]. But early detection and treatment can help prevent serious complications. Reducing undiagnosed T2D cases worldwide is an urgent public health challenge.
The study set out to develop and assess the performance of a voice-based AI algorithm to detect whether adults have T2D.
Researchers asked 607 adults from the Colive Voice study (diagnosed with and without T2D) to provide a voice recording of themselves reading a few sentences of a provided, directly from their smartphone or laptop.
Both females and males with T2D were older (average age females 49.5 vs 40.0 years and males 47.6 vs 41.6 years) and were more likely to be living with obesity (average BMI females 35.8 vs 28.0 kg/m² and males 32.8 vs 26.6 kg/m²) than those without T2D.
From a total of 607 recordings, the AI algorithm analysed various vocal features, such as changes in pitches, intensity, and tone, to identify differences between individuals with and without diabetes.
This was done using two advanced techniques: one that captured up to 6,000 detailed vocal characteristics, and a more sophisticated deep-learning approach that focused on a refined set of 1,024 key features.
The performance of the best models was grouped by several diabetes risk factors including age, BMI, and hypertension, and compared to the reliable American Diabetes Association (ADA) tool for T2D risk assessment [2].
The voice-based algorithms showed good overall predictive capacity, correctly identifying 71% of male and 66% of female T2D cases. The model performed even better in females aged 60 years or older and in individuals with hypertension.
Additionally, there was 93% agreement with the questionnaire-based ADA risk score, demonstrating equivalent performances between voice analysis and a widely accepted screening tool.
“While our findings are promising, further research and validation are necessary before the approach has the potential to become a first-line diabetes screening strategy and help reduce the number of people with undiagnosed type 2 diabetes. Our next steps are to specifically target early-stage type 2 diabetes cases and pre-diabetes,” said co-author Dr Guy Fagherazzi from the Luxembourg Institute of Health, Luxembourg.
Article Publication Date
9-Sep-2024
COI Statement
The authors declare no conflicts of interest.