Abstract

BackgroundThis paper presents a novel approach for Generative Anatomy Modeling Language (GAML). This approach automatically detects the geometric partitions in 3D anatomy that in turn speeds up integrated non-linear optimization model in GAML for 3D anatomy modeling with constraints (e.g. joints). This integrated non-linear optimization model requires the exponential execution time. However, our approach effectively computes the solution for non-linear optimization model and reduces computation time from exponential to linear time. This is achieved by grouping the 3D geometric constraints into communities.MethodsVarious community detection algorithms (k-means clustering, Clauset Newman Moore, and Density-Based Spatial Clustering of Applications with Noise) were used to find communities and partition the non-linear optimization problem into sub-problems. GAML was used to create a case study for 3D shoulder model to benchmark our approach with up to 5000 constraints.ResultsOur results show that the computation time was reduced from exponential time to linear time and the error rate between the partitioned and non-partitioned approach decreases with the increasing number of constraints. For the largest constraint set (5000 constraints), speed up was over 2689-fold whereas error was computed as low as 2.2%.ConclusionThis study presents a novel approach to group anatomical constraints in 3D human shoulder model using community detection algorithms. A case study for 3D modeling for shoulder models developed for arthroscopic rotator cuff simulation was presented. Our results significantly reduced the computation time in conjunction with a decrease in error using constrained optimization by linear approximation, non-linear optimization solver.

Highlights

  • This paper presents a novel approach for Generative Anatomy Modeling Language (GAML)

  • This paper introduces a novel approach to speed up the exponential computation time in our optimization model for geometry constraint solving

  • Regarding the execution time for partitioned communities, Density-based spatial clustering of applications with noise (DBSCAN)-10 clustering execution time was higher in all constraint sets except for 2000 and 2500

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Summary

Introduction

This paper presents a novel approach for Generative Anatomy Modeling Language (GAML) This approach automatically detects the geometric partitions in 3D anatomy that in turn speeds up integrated nonlinear optimization model in GAML for 3D anatomy modeling with constraints (e.g. joints). Our approach effectively computes the solution for non-linear optimization model and reduces computation time from exponential to linear time This is achieved by grouping the 3D geometric constraints into communities. Our goal of developing GAML was to minimize numerous iterations in the process for designing and modeling of 3D anatomically correct medical models. This modeling process necessitates involvement of expert physicians even for rudimentary geometry modifications. We proposed GAML (1) to avoid the lengthy consultation to expert opinion for basic anatomical verifications, (2) to eliminate manual work to speed up the design process, and (3) to increase the collaborative efforts between designers, engineers, and physicians

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