Literature DB >> 31340134

Minimally Invasive Approach for Diagnosing TMJ Osteoarthritis.

B Shoukri1, J C Prieto2, A Ruellas1, M Yatabe1, J Sugai3, M Styner2, H Zhu4, C Huang4, B Paniagua5, S Aronovich6, L Ashman6, E Benavides3, P de Dumast1, N T Ribera1, C Mirabel1, L Michoud1, Z Allohaibi1, M Ioshida1, L Bittencourt1, L Fattori1, L R Gomes1, L Cevidanes1.   

Abstract

This study's objectives were to test correlations among groups of biomarkers that are associated with condylar morphology and to apply artificial intelligence to test shape analysis features in a neural network (NN) to stage condylar morphology in temporomandibular joint osteoarthritis (TMJOA). Seventeen TMJOA patients (39.9 ± 11.7 y) experiencing signs and symptoms of the disease for less than 10 y and 17 age- and sex-matched control subjects (39.4 ± 15.2 y) completed a questionnaire, had a temporomandibular joint clinical exam, had blood and saliva samples drawn, and had high-resolution cone beam computed tomography scans taken. Serum and salivary levels of 17 inflammatory biomarkers were quantified using protein microarrays. A NN was trained with 259 other condyles to detect and classify the stage of TMJOA and then compared to repeated clinical experts' classifications. Levels of the salivary biomarkers MMP-3, VE-cadherin, 6Ckine, and PAI-1 were correlated to each other in TMJOA patients and were significantly correlated with condylar morphological variability on the posterior surface of the condyle. In serum, VE-cadherin and VEGF were correlated with one another and with significant morphological variability on the anterior surface of the condyle, while MMP-3 and CXCL16 presented statistically significant associations with variability on the anterior surface, lateral pole, and superior-posterior surface of the condyle. The range of mouth opening variables were the clinical markers with the most significant associations with morphological variability at the medial and lateral condylar poles. The repeated clinician consensus classification had 97.8% agreement on degree of degeneration within 1 group difference. Predictive analytics of the NN's staging of TMJOA compared to the repeated clinicians' consensus revealed 73.5% and 91.2% accuracy. This study demonstrated significant correlations among variations in protein expression levels, clinical symptoms, and condylar surface morphology. The results suggest that 3-dimensional variability in TMJOA condylar morphology can be comprehensively phenotyped by the NN.

Entities:  

Keywords:  artificial intelligence; bioinformatics; biomarkers; digital imaging/radiology; joint disease; temporomandibular disorders (TMDs)

Mesh:

Substances:

Year:  2019        PMID: 31340134      PMCID: PMC6704428          DOI: 10.1177/0022034519865187

Source DB:  PubMed          Journal:  J Dent Res        ISSN: 0022-0345            Impact factor:   6.116


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