Literature DB >> 30805572

DeepSSM: A Deep Learning Framework for Statistical Shape Modeling from Raw Images.

Riddhish Bhalodia1,2, Shireen Y Elhabian1,2,3, Ladislav Kavan2, Ross T Whitaker1,2,3.   

Abstract

Statistical shape modeling is an important tool to characterize variation in anatomical morphology. Typical shapes of interest are measured using 3D imaging and a subsequent pipeline of registration, segmentation, and some extraction of shape features or projections onto some lower-dimensional shape space, which facilitates subsequent statistical analysis. Many methods for constructing compact shape representations have been proposed, but are often impractical due to the sequence of image preprocessing operations, which involve significant parameter tuning, manual delineation, and/or quality control by the users. We propose DeepSSM: a deep learning approach to extract a low-dimensional shape representation directly from 3D images, requiring virtually no parameter tuning or user assistance. DeepSSM uses a convolutional neural network (CNN) that simultaneously localizes the biological structure of interest, establishes correspondences, and projects these points onto a low-dimensional shape representation in the form of PCA loadings within a point distribution model. To overcome the challenge of the limited availability of training images with dense correspondences, we present a novel data augmentation procedure that uses existing correspondences on a relatively small set of processed images with shape statistics to create plausible training samples with known shape parameters. In this way, we leverage the limited CT/MRI scans (40-50) into thousands of images needed to train a deep neural net. After the training, the CNN automatically produces accurate low-dimensional shape representations for unseen images. We validate DeepSSM for three different applications pertaining to modeling pediatric cranial CT for characterization of metopic craniosynostosis, femur CT scans identifying morphologic deformities of the hip due to femoroacetabular impingement, and left atrium MRI scans for atrial fibrillation recurrence prediction.

Entities:  

Year:  2018        PMID: 30805572      PMCID: PMC6385885          DOI: 10.1007/978-3-030-04747-4_23

Source DB:  PubMed          Journal:  Shape Med Imaging (2018)


  5 in total

1.  Uncertain-DeepSSM: From Images to Probabilistic Shape Models.

Authors:  Jadie Adams; Riddhish Bhalodia; Shireen Elhabian
Journal:  Shape Med Imaging (2020)       Date:  2020-10-03

2.  Self-Supervised Discovery of Anatomical Shape Landmarks.

Authors:  Riddhish Bhalodia; Ladislav Kavan; Ross T Whitaker
Journal:  Med Image Comput Comput Assist Interv       Date:  2020-09-29

3.  Leveraging unsupervised image registration for discovery of landmark shape descriptor.

Authors:  Riddhish Bhalodia; Shireen Elhabian; Ladislav Kavan; Ross Whitaker
Journal:  Med Image Anal       Date:  2021-07-09       Impact factor: 13.828

4.  Training of Deep Learning Pipelines on Memory-Constrained GPUs via Segmented Fused-Tiled Execution.

Authors:  Yufan Xu; Gerald Sabin; Saurabh Raje; Aravind Sukumaran-Rajam; Atanas Rountev; P Sadayappan
Journal:  Compil Constr       Date:  2022-03-18

Review 5.  How machine learning is impacting research in atrial fibrillation: implications for risk prediction and future management.

Authors:  Ivan Olier; Sandra Ortega-Martorell; Mark Pieroni; Gregory Y H Lip
Journal:  Cardiovasc Res       Date:  2021-06-16       Impact factor: 10.787

  5 in total

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