Modeling and Estimation of Personalized Spine and Torso Biomechanics
Fecha
2023
Autores
Título de la revista
ISSN de la revista
Título del volumen
Editor
Universidad Rey Juan Carlos
Resumen
Adolescent idiopathic scoliosis is a complex spinal deformity with a considerable
prevalence that can lead to deterioration of life. Scoliosis problems of moderate
degree on adolescents are typically treated using orthotic brace structures that push
the spine; it is usually the only way to avoid or delay surgery.
The development of personalized biomechanical models of the torso opens the door
to computational solutions for the design of such braces. However, the development
of patient-specific biomechanical models faces two challenges: Fitting the geometry
of the torso skeleton to the patient’s anatomy and characterizing their personalized
stiffness response. Before handling these challenges, the design of such models faces
several unknowns, such as the correct identification of relevant mechanical elements,
or the required accuracy of model parameters.
In this thesis, we first design a methodology for the identification of the relevant
mechanical elements, with the purpose of creating personalized models suited for
patient-specific brace design and the definition of parameter estimation criteria.
Next, we present a method to fit personalized geometric models of the torso skeleton
that takes as input biplanar low-dose radiographs. The method relies on a biomecahnically
inspired regularizer for robust fitting, and minimizes the radiation exposure
compared to existing works. Finally, we describe a methodology to personalize
the stiffness response of a biomechanical model of the torso and the spine. In
high contrast to previous work, the proposed methodology uses controlled forcedeformation
data that mimic the conditions of spinal bracing for scoliosis, which
leads to personalized biomechanical models that are suitable for computational brace
design. The novel method relies on a prototype system that includes controlled
force-deformation measurements, a model of differentiable biomechanics of the
torso, which becomes the key building block for robust parameter estimation, and
an optimization procedure for parameter estimation which relies on differentiability
of the biomechanics and the image generation process.
Altogether, we present a method that deals with the full personalization of torso
and spine models under end-to-end representative adolescent idiopathic scoliosis
conditions. We demonstrate its applicability on a cohort of scoliosis patients and we
show quantitative validation and improvement over previous work.
Descripción
Tesis Doctoral leída en la Universidad Rey Juan Carlos de Madrid en 2023. Supervisor: Miguel A. Otaduy Tristan
Co-supervisor: Jesus Perez Rodriguez
Palabras clave
Citación
Colecciones
Excepto si se señala otra cosa, la licencia del ítem se describe como Attribution-NonCommercial-NoDerivatives 4.0 Internacional