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1.
Sci Rep ; 14(1): 16423, 2024 07 16.
Artigo em Inglês | MEDLINE | ID: mdl-39014120

RESUMO

This study aimed to predict dental freeway space by examining the clinical history, habits, occlusal parameters, mandibular hard tissue movement, soft tissue motion, muscle activity, and temporomandibular joint function of 66 participants. Data collection involved video-based facial landmark tracking, mandibular electrognathography, surface electromyography of mandibular range of motion, freeway space, chewing tasks, phonetic expressions, joint vibration analysis, and 3D jaw scans of occlusion. This resulted in a dataset of 121 predictor features, with freeway space as the target variable. Six models were trained on synthetic data ranging from 500 to 25,000 observations, with 65 original observations reserved for testing: Linear Regression, Random Forest, CatBoost Regressor, XGBoost Regressor, Multilayer Perceptron Neural Network (MPNN), and TabNet. Explainable AI indicated that key predictors of freeway space included phonetics, resting temporalis muscle activity, mandibular muscle activity during clenching, body weight, mandibular hard tissue lateral displacements, and dental arch parameters. CatBoost excelled with a test error of 0.65 mm using 5000 synthetic data points, while a refined MPNN achieved the best performance with 25,000 synthetic data points and 121 unique predictors, yielding an absolute error of 0.43 mm on the 65 original observations.


Assuntos
Oclusão Dentária , Eletromiografia , Mandíbula , Articulação Temporomandibular , Humanos , Feminino , Masculino , Mandíbula/fisiologia , Mandíbula/diagnóstico por imagem , Adulto , Articulação Temporomandibular/fisiologia , Articulação Temporomandibular/diagnóstico por imagem , Movimento/fisiologia , Amplitude de Movimento Articular/fisiologia , Adulto Jovem , Mastigação/fisiologia , Redes Neurais de Computação
2.
J Oral Rehabil ; 51(9): 1770-1777, 2024 Sep.
Artigo em Inglês | MEDLINE | ID: mdl-38840513

RESUMO

BACKGROUND: A quantitative approach to predict expected muscle activity and mandibular movement from non-invasive hard tissue assessments remains unexplored. OBJECTIVES: This study investigated the predictive potential of normalised muscle activity during various jaw movements combined with temporomandibular joint (TMJ) vibration analyses to predict expected maximum lateral deviation during mouth opening. METHOD: Sixty-six participants underwent electrognathography (EGN), surface electromyography (EMG) and joint vibration analyses (JVA). They performed maximum mouth opening, lateral excursion and anterior protrusion as jaw movement activities in a single session. Multiple predictive models were trained from synthetic observations generated from the 66 human observations. Muscle function intensity and activity duration were normalised and a decision support system with branching logic was developed to predict lateral deviation. Performance of the models in predicting temporalis, masseter and digastric muscle activity from hard tissue data was evaluated through root mean squared error (RMSE) and mean absolute error. RESULTS: Temporalis muscle intensity ranged from 0.135 ± 0.056, masseter from 0.111 ± 0.053 and digastric from 0.120 ± 0.051. Muscle activity duration varied with temporalis at 112.23 ± 126.81 ms, masseter at 101.02 ± 121.34 ms and digastric at 168.13 ± 222.82 ms. XGBoost predicted muscle intensity and activity duration and scored an RMSE of 0.03-0.05. Jaw deviations were successfully predicted with a MAE of 0.9 mm. CONCLUSION: Applying deep learning to EGN, EMG and JVA data can establish a quantifiable relationship between muscles and hard tissue movement within the TMJ complex and can predict jaw deviations.


Assuntos
Eletromiografia , Músculos da Mastigação , Amplitude de Movimento Articular , Articulação Temporomandibular , Humanos , Articulação Temporomandibular/fisiologia , Feminino , Masculino , Adulto , Músculos da Mastigação/fisiologia , Amplitude de Movimento Articular/fisiologia , Adulto Jovem , Movimento/fisiologia , Vibração
3.
Med Biol Eng Comput ; 62(6): 1763-1779, 2024 Jun.
Artigo em Inglês | MEDLINE | ID: mdl-38376739

RESUMO

Challenges arise in accessing archived signal outputs due to proprietary software limitations. There is a notable lack of exploration in open-source mandibular EMG signal conversion for continuous access and analysis, hindering tasks such as pattern recognition and predictive modelling for temporomandibular joint complex function. To Develop a workflow to extract normalised signal parameters from images of mandibular muscle EMG and identify optimal clustering methods for quantifying signal intensity and activity durations. A workflow utilising OpenCV, variational encoders and Neurokit2 generated and augmented 866 unique EMG signals from jaw movement exercises. k-means, GMM and DBSCAN were employed for normalisation and cluster-centric signal processing. The workflow was validated with data collected from 66 participants, measuring temporalis, masseter and digastric muscles. DBSCAN (0.35 to 0.54) and GMM (0.09 to 0.24) exhibited lower silhouette scores for mouth opening, anterior protrusion and lateral excursions, while K-means performed best (0.10 to 0.11) for temporalis and masseter muscles during chewing activities. The current study successfully developed a deep learning workflow capable of extracting normalised signal data from EMG images and generating quantifiable parameters for muscle activity duration and general functional intensity.


Assuntos
Aprendizado Profundo , Eletromiografia , Mandíbula , Processamento de Sinais Assistido por Computador , Humanos , Eletromiografia/métodos , Mandíbula/fisiologia , Adulto , Masculino , Feminino , Adulto Jovem , Músculo Masseter/fisiologia , Mastigação/fisiologia , Articulação Temporomandibular/fisiologia
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