Explainable deep learning and biomechanical modeling for TMJ disorder morphological risk factors.

Journal: JCI insight
Published Date:

Abstract

Clarifying multifactorial musculoskeletal disorder etiologies supports risk analysis, development of targeted prevention, and treatment modalities. Deep learning enables comprehensive risk factor identification through systematic analyses of disease data sets but does not provide sufficient context for mechanistic understanding, limiting clinical applicability for etiological investigations. Conversely, multiscale biomechanical modeling can evaluate mechanistic etiology within the relevant biomechanical and physiological context. We propose a hybrid approach combining 3D explainable deep learning and multiscale biomechanical modeling; we applied this approach to investigate temporomandibular joint (TMJ) disorder etiology by systematically identifying risk factors and elucidating mechanistic relationships between risk factors and TMJ biomechanics and mechanobiology. Our 3D convolutional neural network recognized TMJ disorder patients through participant-specific morphological features in condylar, ramus, and chin. Driven by deep learning model outputs, biomechanical modeling revealed that small mandibular size and flat condylar shape were associated with increased TMJ disorder risk through increased joint force, decreased tissue nutrient availability and cell ATP production, and increased TMJ disc strain energy density. Combining explainable deep learning and multiscale biomechanical modeling addresses the "mechanism unknown" limitation undermining translational confidence in clinical applications of deep learning and increases methodological accessibility for smaller clinical data sets by providing the crucial biomechanical context.

Authors

  • Shuchun Sun
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Pei Xu
    State Key Laboratory of Biocontrol, School of Life Sciences, Sun Yat-Sen University, Guangzhou, 510275, China.
  • Nathan Buchweitz
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Cherice N Hill
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Farhad Ahmadi
    Razi Drug Research Center, Iran University of Medical Sciences, Tehran, Iran.
  • Marshall B Wilson
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Angela Mei
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Xin She
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Benedikt Sagl
    Center for Clinical Research, University Clinic of Dentistry, Medical University of Vienna, Vienna, Austria.
  • Elizabeth H Slate
    Department of Statistics, Florida State University, Tallahassee, Florida, USA.
  • Janice S Lee
  • Yongren Wu
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.
  • Hai Yao
    Clemson-MUSC Joint Bioengineering Program, Department of Bioengineering and.