Auto-segmentation of Hip Joints using MultiPlanar UNet with Transfer
learning
- URL: http://arxiv.org/abs/2208.08226v2
- Date: Thu, 18 Aug 2022 08:32:21 GMT
- Title: Auto-segmentation of Hip Joints using MultiPlanar UNet with Transfer
learning
- Authors: Peidi Xu, Faezeh Moshfeghifar, Torkan Gholamalizadeh, Michael Bachmann
Nielsen, Kenny Erleben, Sune Darkner
- Abstract summary: Deep-learning segmentation approaches with only few data have difficulties in accurately segmenting fine features.
We propose a strategy that uses transfer learning to reuse datasets with poor segmentation combined with an interactive learning step.
We demonstrate this robust yet conceptually simple approach applied with clinically validated results on publicly available computed tomography scans of hip joints.
- Score: 6.6246573227620384
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Accurate geometry representation is essential in developing finite element
models. Although generally good, deep-learning segmentation approaches with
only few data have difficulties in accurately segmenting fine features, e.g.,
gaps and thin structures. Subsequently, segmented geometries need
labor-intensive manual modifications to reach a quality where they can be used
for simulation purposes. We propose a strategy that uses transfer learning to
reuse datasets with poor segmentation combined with an interactive learning
step where fine-tuning of the data results in anatomically accurate
segmentations suitable for simulations. We use a modified MultiPlanar UNet that
is pre-trained using inferior hip joint segmentation combined with a dedicated
loss function to learn the gap regions and post-processing to correct tiny
inaccuracies on symmetric classes due to rotational invariance. We demonstrate
this robust yet conceptually simple approach applied with clinically validated
results on publicly available computed tomography scans of hip joints. Code and
resulting 3D models are available at:
https://github.com/MICCAI2022-155/AuToSeg}
Related papers
- Unsupervised correspondence with combined geometric learning and imaging
for radiotherapy applications [0.0]
The aim of this study was to develop a model to accurately identify corresponding points between organ segmentations of different patients for radiotherapy applications.
A model for simultaneous correspondence and estimation in 3D shapes was trained with head and neck organ segmentations from planning CT scans.
We then extended the original model to incorporate imaging information using two approaches.
arXiv Detail & Related papers (2023-09-25T16:29:18Z) - SwIPE: Efficient and Robust Medical Image Segmentation with Implicit Patch Embeddings [12.79344668998054]
We propose SwIPE (Segmentation with Implicit Patch Embeddings) to enable accurate local boundary delineation and global shape coherence.
We show that SwIPE significantly improves over recent implicit approaches and outperforms state-of-the-art discrete methods with over 10x fewer parameters.
arXiv Detail & Related papers (2023-07-23T20:55:11Z) - SegPrompt: Using Segmentation Map as a Better Prompt to Finetune Deep
Models for Kidney Stone Classification [62.403510793388705]
Deep learning has produced encouraging results for kidney stone classification using endoscope images.
The shortage of annotated training data poses a severe problem in improving the performance and generalization ability of the trained model.
We propose SegPrompt to alleviate the data shortage problems by exploiting segmentation maps from two aspects.
arXiv Detail & Related papers (2023-03-15T01:30:48Z) - Adapting the Mean Teacher for keypoint-based lung registration under
geometric domain shifts [75.51482952586773]
deep neural networks generally require plenty of labeled training data and are vulnerable to domain shifts between training and test data.
We present a novel approach to geometric domain adaptation for image registration, adapting a model from a labeled source to an unlabeled target domain.
Our method consistently improves on the baseline model by 50%/47% while even matching the accuracy of models trained on target data.
arXiv Detail & Related papers (2022-07-01T12:16:42Z) - Two-Stream Graph Convolutional Network for Intra-oral Scanner Image
Segmentation [133.02190910009384]
We propose a two-stream graph convolutional network (i.e., TSGCN) to handle inter-view confusion between different raw attributes.
Our TSGCN significantly outperforms state-of-the-art methods in 3D tooth (surface) segmentation.
arXiv Detail & Related papers (2022-04-19T10:41:09Z) - Learning of Inter-Label Geometric Relationships Using Self-Supervised
Learning: Application To Gleason Grade Segmentation [4.898744396854313]
We propose a method to synthesize for PCa histopathology images by learning the geometrical relationship between different disease labels.
We use a weakly supervised segmentation approach that uses Gleason score to segment the diseased regions.
The resulting segmentation map is used to train a Shape Restoration Network (ShaRe-Net) to predict missing mask segments.
arXiv Detail & Related papers (2021-10-01T13:47:07Z) - A persistent homology-based topological loss for CNN-based multi-class
segmentation of CMR [5.898114915426535]
Multi-class segmentation of cardiac magnetic resonance (CMR) images seeks a separation of data into anatomical components with known structure and configuration.
Most popular CNN-based methods are optimised using pixel wise loss functions, ignorant of the spatially extended features that characterise anatomy.
We extend these approaches to the task of multi-class segmentation by building an enriched topological description of all class labels and class label pairs.
arXiv Detail & Related papers (2021-07-27T09:21:38Z) - Automatic size and pose homogenization with spatial transformer network
to improve and accelerate pediatric segmentation [51.916106055115755]
We propose a new CNN architecture that is pose and scale invariant thanks to the use of Spatial Transformer Network (STN)
Our architecture is composed of three sequential modules that are estimated together during training.
We test the proposed method in kidney and renal tumor segmentation on abdominal pediatric CT scanners.
arXiv Detail & Related papers (2021-07-06T14:50:03Z) - TSGCNet: Discriminative Geometric Feature Learning with Two-Stream
GraphConvolutional Network for 3D Dental Model Segmentation [141.2690520327948]
We propose a two-stream graph convolutional network (TSGCNet) to learn multi-view information from different geometric attributes.
We evaluate our proposed TSGCNet on a real-patient dataset of dental models acquired by 3D intraoral scanners.
arXiv Detail & Related papers (2020-12-26T08:02:56Z) - SEG-MAT: 3D Shape Segmentation Using Medial Axis Transform [49.51977253452456]
We present an efficient method for 3D shape segmentation based on the medial axis transform (MAT) of the input shape.
Specifically, with the rich geometrical and structural information encoded in the MAT, we are able to identify the various types of junctions between different parts of a 3D shape.
Our method outperforms the state-of-the-art methods in terms of segmentation quality and is also one order of magnitude faster.
arXiv Detail & Related papers (2020-10-22T07:15:23Z) - Unsupervised Learning Consensus Model for Dynamic Texture Videos
Segmentation [12.462608802359936]
We present an effective unsupervised learning consensus model for the segmentation of dynamic texture (ULCM)
In the proposed model, the set of values of the requantized local binary patterns (LBP) histogram around the pixel to be classified are used as features.
Experiments conducted on the challenging SynthDB dataset show that ULCM is significantly faster, easier to code, simple and has limited parameters.
arXiv Detail & Related papers (2020-06-29T16:40:59Z)
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.