Amazing stuff! Absolutely stunning, if confirmed!
"Researchers involved in a recent study trained an artificial intelligence (AI) model to diagnose type 2 diabetes in patients after six to 10 seconds of listening to their voice.
Canadian medical researchers trained the machine-learning AI to recognise 14 vocal differences in the voice of someone with type 2 diabetes compared to someone without diabetes."
"Abstract
Objective
To investigate the potential of voice analysis as a prescreening or monitoring tool for type 2 diabetes mellitus (T2DM) by examining the differences in voice recordings between nondiabetic and T2DM individuals.
Patients and Methods
Total 267 participants diagnosed as nondiabetic (79 women and 113 men) or T2DM (18 women and 57 men) on the basis of American Diabetes Association guidelines were recruited in India between August 30, 2021 and June 30, 2022. Using a smartphone application, participants recorded a fixed phrase up to 6 times daily for 2 weeks, resulting in 18,465 recordings. Fourteen acoustic features were extracted from each recording to analyze differences between nondiabetic and T2DM individuals and create a prediction methodology for T2DM status.
Results
Significant differences were found between voice recordings of nondiabetic and T2DM men and women, both in the entire dataset and in an age-matched and body mass index (BMI [calculated as the weight in kilograms divided by the height in meters squared])-matched sample. The highest predictive accuracy was achieved by pitch (P<.0001), pitch SD (P<.0001), and relative average pertubation jitter (P=.02) for women, and intensity (P<.0001) and 11-point amplitude perturbation quotient shimmer (apq11, P<0.0001) for men. Incorporating these features with age and BMI, the optimal prediction models achieved accuracies of 0.75±0.22 for women and 0.70±0.10 for men through 5-fold cross-validation in the age-matched and BMI-matched sample.
Conclusion
Overall, vocal changes occur in individuals with T2DM compared with those without T2DM. Voice analysis shows potential as a prescreening or monitoring tool for T2DM, particularly when combined with other risk factors associated with the condition."
Acoustic Analysis and Prediction of Type 2 Diabetes Mellitus Using Smartphone-Recorded Voice Segments (open access)
Credits: Last Week in AI
Figure 2Results from optimal model. (A) ROC curve for cross-validation of the matched dataset for women (B) Confusion matrix for the test set for women (C) ROC curve for cross-validation of the matched dataset for men (D) Confusion matrix for the test set for men. N is the number of participants. T2DM, type 2 diabetes mellitus; ROC, receiver operator curve; AUC, area under the ROC.
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