Benchmarking off-the-shelf statistical shape modeling tools in clinical
applications
- URL: http://arxiv.org/abs/2009.02878v1
- Date: Mon, 7 Sep 2020 03:51:35 GMT
- Title: Benchmarking off-the-shelf statistical shape modeling tools in clinical
applications
- Authors: Anupama Goparaju, Alexandre Bone, Nan Hu, Heath B. Henninger, Andrew
E. Anderson, Stanley Durrleman, Matthijs Jacxsens, Alan Morris, Ibolya Csecs,
Nassir Marrouche, Shireen Y. Elhabian
- Abstract summary: We systematically assess the outcome of widely used, state-of-the-art SSM tools.
We propose validation frameworks for anatomical landmark/measurement inference and lesion screening.
ShapeWorks and Deformetrica shape models are found to capture clinically relevant population-level variability.
- Score: 53.47202621511081
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Statistical shape modeling (SSM) is widely used in biology and medicine as a
new generation of morphometric approaches for the quantitative analysis of
anatomical shapes. Technological advancements of in vivo imaging have led to
the development of open-source computational tools that automate the modeling
of anatomical shapes and their population-level variability. However, little
work has been done on the evaluation and validation of such tools in clinical
applications that rely on morphometric quantifications (e.g., implant design
and lesion screening). Here, we systematically assess the outcome of widely
used, state-of-the-art SSM tools, namely ShapeWorks, Deformetrica, and
SPHARM-PDM. We use both quantitative and qualitative metrics to evaluate shape
models from different tools. We propose validation frameworks for anatomical
landmark/measurement inference and lesion screening. We also present a lesion
screening method to objectively characterize subtle abnormal shape changes with
respect to learned population-level statistics of controls. Results demonstrate
that SSM tools display different levels of consistencies, where ShapeWorks and
Deformetrica models are more consistent compared to models from SPHARM-PDM due
to the groupwise approach of estimating surface correspondences. Furthermore,
ShapeWorks and Deformetrica shape models are found to capture clinically
relevant population-level variability compared to SPHARM-PDM models.
Related papers
- Mesh2SSM: From Surface Meshes to Statistical Shape Models of Anatomy [0.0]
We propose Mesh2SSM, a new approach that leverages unsupervised, permutation-invariant representation learning to estimate how to deform a template point cloud to subject-specific meshes.
Mesh2SSM can also learn a population-specific template, reducing any bias due to template selection.
arXiv Detail & Related papers (2023-05-13T00:03:59Z) - S3M: Scalable Statistical Shape Modeling through Unsupervised
Correspondences [91.48841778012782]
We propose an unsupervised method to simultaneously learn local and global shape structures across population anatomies.
Our pipeline significantly improves unsupervised correspondence estimation for SSMs compared to baseline methods.
Our method is robust enough to learn from noisy neural network predictions, potentially enabling scaling SSMs to larger patient populations.
arXiv Detail & Related papers (2023-04-15T09:39:52Z) - BOSS: Bones, Organs and Skin Shape Model [10.50175010474078]
We propose a deformable human shape and pose model that combines skin, internal organs, and bones, learned from CT images.
By modeling the statistical variations in a pose-normalized space using probabilistic PCA, our approach offers a holistic representation of the body.
arXiv Detail & Related papers (2023-03-08T22:31:24Z) - Spatiotemporal Cardiac Statistical Shape Modeling: A Data-Driven
Approach [0.0]
Particle-based shape modeling (PSM) is a data-driven approach that captures population-level shape variations.
This paper proposes a data-driven approach inspired by the PSM method to learn population-level temporal shape changes directly from shape data.
arXiv Detail & Related papers (2022-09-06T18:00:45Z) - Mixed Effects Neural ODE: A Variational Approximation for Analyzing the
Dynamics of Panel Data [50.23363975709122]
We propose a probabilistic model called ME-NODE to incorporate (fixed + random) mixed effects for analyzing panel data.
We show that our model can be derived using smooth approximations of SDEs provided by the Wong-Zakai theorem.
We then derive Evidence Based Lower Bounds for ME-NODE, and develop (efficient) training algorithms.
arXiv Detail & Related papers (2022-02-18T22:41:51Z) - Anatomically Parameterized Statistical Shape Model: Explaining
Morphometry through Statistical Learning [0.0]
This study demonstrates the use of anatomical representation for creating anatomically parameterized SSM.
The proposed models could help analyze differences in relevant bone morphometry between populations, and be integrated in patient-specific pre-surgery planning or in-surgery assessment.
arXiv Detail & Related papers (2022-02-17T10:56:22Z) - Dynamic multi feature-class Gaussian process models [0.0]
This study presents a statistical modelling method for automatic learning of shape, pose and intensity features in medical images.
A DMFC-GPM is a Gaussian process (GP)-based model with a shared latent space that encodes linear and non-linear variation.
The model performance results suggest that this new modelling paradigm is robust, accurate, accessible, and has potential applications.
arXiv Detail & Related papers (2021-12-08T15:12:47Z) - A multi-stage machine learning model on diagnosis of esophageal
manometry [50.591267188664666]
The framework includes deep-learning models at the swallow-level stage and feature-based machine learning models at the study-level stage.
This is the first artificial-intelligence-style model to automatically predict CC diagnosis of HRM study from raw multi-swallow data.
arXiv Detail & Related papers (2021-06-25T20:09:23Z) - Adversarial Sample Enhanced Domain Adaptation: A Case Study on
Predictive Modeling with Electronic Health Records [57.75125067744978]
We propose a data augmentation method to facilitate domain adaptation.
adversarially generated samples are used during domain adaptation.
Results confirm the effectiveness of our method and the generality on different tasks.
arXiv Detail & Related papers (2021-01-13T03:20:20Z) - Domain Shift in Computer Vision models for MRI data analysis: An
Overview [64.69150970967524]
Machine learning and computer vision methods are showing good performance in medical imagery analysis.
Yet only a few applications are now in clinical use.
Poor transferability of themodels to data from different sources or acquisition domains is one of the reasons for that.
arXiv Detail & Related papers (2020-10-14T16:34:21Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.