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Diagnostic Accuracy of AI-Driven Wearable Sensors for Early Detection of Bruxism
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Background: Bruxism, characterized by repetitive jaw-muscle activity involving clenching or grinding, often goes undetected until significant dental or muscular complications arise. Conventional diagnostic approaches—including clinical examination and patient self-reports—frequently miss early or nocturnal episodes. With the emergence of artificial intelligence (AI) and wearable biosensors, continuous and objective monitoring may enhance early detection. Objective: To assess the diagnostic accuracy of AI-integrated wearable jaw-movement sensors compared with standardized clinical examination for early bruxism detection. Methods: A cross-sectional study of 120 adults aged 18–50 years was conducted in Lahore over four months. Participants underwent simultaneous bruxism evaluation using AI-driven wearable jaw-movement sensors and clinical assessment based on international diagnostic criteria. The supervised AI algorithm analyzed sensor-recorded jaw-movement patterns to distinguish bruxism events from normal motion. Diagnostic accuracy parameters including sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and ROC-AUC were computed using SPSS version 26. Results: The AI-enabled wearable device demonstrated a sensitivity of 96.6%, specificity of 89.3%, overall accuracy of 93.1%, PPV of 91.7%, and NPV of 95.2%. ROC analysis indicated excellent performance (AUC = 0.95). A strong correlation (r = 0.86, p < 0.001) was found between AI-detected and clinically diagnosed bruxism cases. Conclusion: AI-driven wearable jaw-movement sensors exhibit high diagnostic precision and strong agreement with clinical evaluation, supporting their utility as reliable, noninvasive tools for early bruxism detection and personalized dental care.
Link Medical Institute
Title: Diagnostic Accuracy of AI-Driven Wearable Sensors for Early Detection of Bruxism
Description:
Background: Bruxism, characterized by repetitive jaw-muscle activity involving clenching or grinding, often goes undetected until significant dental or muscular complications arise.
Conventional diagnostic approaches—including clinical examination and patient self-reports—frequently miss early or nocturnal episodes.
With the emergence of artificial intelligence (AI) and wearable biosensors, continuous and objective monitoring may enhance early detection.
Objective: To assess the diagnostic accuracy of AI-integrated wearable jaw-movement sensors compared with standardized clinical examination for early bruxism detection.
Methods: A cross-sectional study of 120 adults aged 18–50 years was conducted in Lahore over four months.
Participants underwent simultaneous bruxism evaluation using AI-driven wearable jaw-movement sensors and clinical assessment based on international diagnostic criteria.
The supervised AI algorithm analyzed sensor-recorded jaw-movement patterns to distinguish bruxism events from normal motion.
Diagnostic accuracy parameters including sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and ROC-AUC were computed using SPSS version 26.
Results: The AI-enabled wearable device demonstrated a sensitivity of 96.
6%, specificity of 89.
3%, overall accuracy of 93.
1%, PPV of 91.
7%, and NPV of 95.
2%.
ROC analysis indicated excellent performance (AUC = 0.
95).
A strong correlation (r = 0.
86, p < 0.
001) was found between AI-detected and clinically diagnosed bruxism cases.
Conclusion: AI-driven wearable jaw-movement sensors exhibit high diagnostic precision and strong agreement with clinical evaluation, supporting their utility as reliable, noninvasive tools for early bruxism detection and personalized dental care.
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