| Literature DB >> 31359900 |
Nina Tubau Ribera1, Priscille de Dumast1, Marilia Yatabe1, Antonio Ruellas1, Marcos Ioshida1, Beatriz Paniagua2, Martin Styner3, João Roberto Gonçalves4, Jonas Bianchi1,4, Lucia Cevidanes1, Juan-Carlos Prieto3.
Abstract
We developed a deep learning neural network, the Shape Variation Analyzer (SVA), that allows disease staging of bony changes in temporomandibular joint (TMJ) osteoarthritis (OA). The sample was composed of 259 TMJ CBCT scans for the training set and 34 for the testing dataset. The 3D meshes had been previously classified in 6 groups by 2 expert clinicians. We improved the robustness of the training data using data augmentation, SMOTE, to alleviate over-fitting and to balance classes. We combined geometrical features and a shape descriptor, heat kernel signature, to describe every shape. The results were compared to nine different supervised machine learning algorithms. The deep learning neural network was the most accurate for classification of TMJ OA. In conclusion, SVA is a 3D Sheer extension that classifies pathology of the temporomandibular joint osteoarthritis cases based on 3D morphology.Entities:
Keywords: Classification; Deep Learning; Neural Network; Osteoarthritis; Temporomandibular Joint Disorders
Year: 2019 PMID: 31359900 PMCID: PMC6663087 DOI: 10.1117/12.2506018
Source DB: PubMed Journal: Proc SPIE Int Soc Opt Eng ISSN: 0277-786X