Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs

State-of-the-art preoperative biomechanical analysis for the planning of spinal surgery not only requires the generation of three-dimensional patient-specific models but also the accurate biomechanical representation of vertebral joints. The benefits offered by computational models suitable for such...

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Main Authors: Sebastiano Caprara, Fabio Carrillo, Jess G. Snedeker, Mazda Farshad, Marco Senteler
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-01-01
Series:Frontiers in Bioengineering and Biotechnology
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fbioe.2021.636953/full
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spelling doaj-87466f58211f422992f1269f9bdef79f2021-01-28T07:33:53ZengFrontiers Media S.A.Frontiers in Bioengineering and Biotechnology2296-41852021-01-01910.3389/fbioe.2021.636953636953Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUsSebastiano Caprara0Sebastiano Caprara1Fabio Carrillo2Fabio Carrillo3Jess G. Snedeker4Jess G. Snedeker5Mazda Farshad6Marco Senteler7Marco Senteler8Department of Orthopedics, University Hospital Balgrist, University of Zurich, Zurich, SwitzerlandInstitute for Biomechanics, Swiss Federal Institute of Technology (ETH), Zurich, SwitzerlandInstitute for Biomechanics, Swiss Federal Institute of Technology (ETH), Zurich, SwitzerlandResearch in Orthopedic Computer Science, University Hospital Balgrist, Zurich, SwitzerlandDepartment of Orthopedics, University Hospital Balgrist, University of Zurich, Zurich, SwitzerlandInstitute for Biomechanics, Swiss Federal Institute of Technology (ETH), Zurich, SwitzerlandDepartment of Orthopedics, University Hospital Balgrist, University of Zurich, Zurich, SwitzerlandDepartment of Orthopedics, University Hospital Balgrist, University of Zurich, Zurich, SwitzerlandInstitute for Biomechanics, Swiss Federal Institute of Technology (ETH), Zurich, SwitzerlandState-of-the-art preoperative biomechanical analysis for the planning of spinal surgery not only requires the generation of three-dimensional patient-specific models but also the accurate biomechanical representation of vertebral joints. The benefits offered by computational models suitable for such purposes are still outweighed by the time and effort required for their generation, thus compromising their applicability in a clinical environment. In this work, we aim to ease the integration of computerized methods into patient-specific planning of spinal surgery. We present the first pipeline combining deep learning and finite element methods that allows a completely automated model generation of functional spine units (FSUs) of the lumbar spine for patient-specific FE simulations (FEBio). The pipeline consists of three steps: (a) multiclass segmentation of cropped 3D CT images containing lumbar vertebrae using the DenseVNet network, (b) automatic landmark-based mesh fitting of statistical shape models onto 3D semantic segmented meshes of the vertebral models, and (c) automatic generation of patient-specific FE models of lumbar segments for the simulation of flexion-extension, lateral bending, and axial rotation movements. The automatic segmentation of FSUs was evaluated against the gold standard (manual segmentation) using 10-fold cross-validation. The obtained Dice coefficient was 93.7% on average, with a mean surface distance of 0.88 mm and a mean Hausdorff distance of 11.16 mm (N = 150). Automatic generation of finite element models to simulate the range of motion (ROM) was successfully performed for five healthy and five pathological FSUs. The results of the simulations were evaluated against the literature and showed comparable ROMs in both healthy and pathological cases, including the alteration of ROM typically observed in severely degenerated FSUs. The major intent of this work is to automate the creation of anatomically accurate patient-specific models by a single pipeline allowing functional modeling of spinal motion in healthy and pathological FSUs. Our approach reduces manual efforts to a minimum and the execution of the entire pipeline including simulations takes approximately 2 h. The automation, time-efficiency and robustness level of the pipeline represents a first step toward its clinical integration.https://www.frontiersin.org/articles/10.3389/fbioe.2021.636953/fulldeep learningpatient-specific 3D modelFE analysissurgical planning and simulationspine-pathology
collection DOAJ
language English
format Article
sources DOAJ
author Sebastiano Caprara
Sebastiano Caprara
Fabio Carrillo
Fabio Carrillo
Jess G. Snedeker
Jess G. Snedeker
Mazda Farshad
Marco Senteler
Marco Senteler
spellingShingle Sebastiano Caprara
Sebastiano Caprara
Fabio Carrillo
Fabio Carrillo
Jess G. Snedeker
Jess G. Snedeker
Mazda Farshad
Marco Senteler
Marco Senteler
Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs
Frontiers in Bioengineering and Biotechnology
deep learning
patient-specific 3D model
FE analysis
surgical planning and simulation
spine-pathology
author_facet Sebastiano Caprara
Sebastiano Caprara
Fabio Carrillo
Fabio Carrillo
Jess G. Snedeker
Jess G. Snedeker
Mazda Farshad
Marco Senteler
Marco Senteler
author_sort Sebastiano Caprara
title Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs
title_short Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs
title_full Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs
title_fullStr Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs
title_full_unstemmed Automated Pipeline to Generate Anatomically Accurate Patient-Specific Biomechanical Models of Healthy and Pathological FSUs
title_sort automated pipeline to generate anatomically accurate patient-specific biomechanical models of healthy and pathological fsus
publisher Frontiers Media S.A.
series Frontiers in Bioengineering and Biotechnology
issn 2296-4185
publishDate 2021-01-01
description State-of-the-art preoperative biomechanical analysis for the planning of spinal surgery not only requires the generation of three-dimensional patient-specific models but also the accurate biomechanical representation of vertebral joints. The benefits offered by computational models suitable for such purposes are still outweighed by the time and effort required for their generation, thus compromising their applicability in a clinical environment. In this work, we aim to ease the integration of computerized methods into patient-specific planning of spinal surgery. We present the first pipeline combining deep learning and finite element methods that allows a completely automated model generation of functional spine units (FSUs) of the lumbar spine for patient-specific FE simulations (FEBio). The pipeline consists of three steps: (a) multiclass segmentation of cropped 3D CT images containing lumbar vertebrae using the DenseVNet network, (b) automatic landmark-based mesh fitting of statistical shape models onto 3D semantic segmented meshes of the vertebral models, and (c) automatic generation of patient-specific FE models of lumbar segments for the simulation of flexion-extension, lateral bending, and axial rotation movements. The automatic segmentation of FSUs was evaluated against the gold standard (manual segmentation) using 10-fold cross-validation. The obtained Dice coefficient was 93.7% on average, with a mean surface distance of 0.88 mm and a mean Hausdorff distance of 11.16 mm (N = 150). Automatic generation of finite element models to simulate the range of motion (ROM) was successfully performed for five healthy and five pathological FSUs. The results of the simulations were evaluated against the literature and showed comparable ROMs in both healthy and pathological cases, including the alteration of ROM typically observed in severely degenerated FSUs. The major intent of this work is to automate the creation of anatomically accurate patient-specific models by a single pipeline allowing functional modeling of spinal motion in healthy and pathological FSUs. Our approach reduces manual efforts to a minimum and the execution of the entire pipeline including simulations takes approximately 2 h. The automation, time-efficiency and robustness level of the pipeline represents a first step toward its clinical integration.
topic deep learning
patient-specific 3D model
FE analysis
surgical planning and simulation
spine-pathology
url https://www.frontiersin.org/articles/10.3389/fbioe.2021.636953/full
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