Literature DB >> 31129303

PSACNN: Pulse sequence adaptive fast whole brain segmentation.

Amod Jog1, Andrew Hoopes2, Douglas N Greve3, Koen Van Leemput4, Bruce Fischl5.   

Abstract

With the advent of convolutional neural networks (CNN), supervised learning methods are increasingly being used for whole brain segmentation. However, a large, manually annotated training dataset of labeled brain images required to train such supervised methods is frequently difficult to obtain or create. In addition, existing training datasets are generally acquired with a homogeneous magnetic resonance imaging (MRI) acquisition protocol. CNNs trained on such datasets are unable to generalize on test data with different acquisition protocols. Modern neuroimaging studies and clinical trials are necessarily multi-center initiatives with a wide variety of acquisition protocols. Despite stringent protocol harmonization practices, it is very difficult to standardize the gamut of MRI imaging parameters across scanners, field strengths, receive coils etc., that affect image contrast. In this paper we propose a CNN-based segmentation algorithm that, in addition to being highly accurate and fast, is also resilient to variation in the input acquisition. Our approach relies on building approximate forward models of pulse sequences that produce a typical test image. For a given pulse sequence, we use its forward model to generate plausible, synthetic training examples that appear as if they were acquired in a scanner with that pulse sequence. Sampling over a wide variety of pulse sequences results in a wide variety of augmented training examples that help build an image contrast invariant model. Our method trains a single CNN that can segment input MRI images with acquisition parameters as disparate as T1-weighted and T2-weighted contrasts with only T1-weighted training data. The segmentations generated are highly accurate with state-of-the-art results (overall Dice overlap=0.94), with a fast run time (≈ 45 s), and consistent across a wide range of acquisition protocols.
Copyright © 2019 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Brain; Convolutional neural networks; Harmonization; MRI; Robust; Segmentation

Mesh:

Year:  2019        PMID: 31129303      PMCID: PMC6688920          DOI: 10.1016/j.neuroimage.2019.05.033

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  42 in total

1.  On standardizing the MR image intensity scale.

Authors:  L G Nyúl; J K Udupa
Journal:  Magn Reson Med       Date:  1999-12       Impact factor: 4.668

2.  Reliability of MRI-derived measurements of human cerebral cortical thickness: the effects of field strength, scanner upgrade and manufacturer.

Authors:  Xiao Han; Jorge Jovicich; David Salat; Andre van der Kouwe; Brian Quinn; Silvester Czanner; Evelina Busa; Jenni Pacheco; Marilyn Albert; Ronald Killiany; Paul Maguire; Diana Rosas; Nikos Makris; Anders Dale; Bradford Dickerson; Bruce Fischl
Journal:  Neuroimage       Date:  2006-05-02       Impact factor: 6.556

3.  New methods of MR image intensity standardization via generalized scale.

Authors:  Anant Madabhushi; Jayaram K Udupa
Journal:  Med Phys       Date:  2006-09       Impact factor: 4.071

4.  Homeomorphic brain image segmentation with topological and statistical atlases.

Authors:  Pierre-Louis Bazin; Dzung L Pham
Journal:  Med Image Anal       Date:  2008-06-20       Impact factor: 8.545

5.  A nonparametric method for automatic correction of intensity nonuniformity in MRI data.

Authors:  J G Sled; A P Zijdenbos; A C Evans
Journal:  IEEE Trans Med Imaging       Date:  1998-02       Impact factor: 10.048

6.  Multi-site voxel-based morphometry--not quite there yet.

Authors:  N K Focke; G Helms; S Kaspar; C Diederich; V Tóth; P Dechent; A Mohr; W Paulus
Journal:  Neuroimage       Date:  2011-02-13       Impact factor: 6.556

7.  Formulating spatially varying performance in the statistical fusion framework.

Authors:  Andrew J Asman; Bennett A Landman
Journal:  IEEE Trans Med Imaging       Date:  2012-03-15       Impact factor: 10.048

8.  Whole-brain morphometric study of schizophrenia revealing a spatially complex set of focal abnormalities.

Authors:  Christos Davatzikos; Dinggang Shen; Ruben C Gur; Xiaoying Wu; Dengfeng Liu; Yong Fan; Paul Hughett; Bruce I Turetsky; Raquel E Gur
Journal:  Arch Gen Psychiatry       Date:  2005-11

9.  Automatic anatomical brain MRI segmentation combining label propagation and decision fusion.

Authors:  Rolf A Heckemann; Joseph V Hajnal; Paul Aljabar; Daniel Rueckert; Alexander Hammers
Journal:  Neuroimage       Date:  2006-07-24       Impact factor: 6.556

10.  Effects of mindful-attention and compassion meditation training on amygdala response to emotional stimuli in an ordinary, non-meditative state.

Authors:  Gaëlle Desbordes; Lobsang T Negi; Thaddeus W W Pace; B Alan Wallace; Charles L Raison; Eric L Schwartz
Journal:  Front Hum Neurosci       Date:  2012-11-01       Impact factor: 3.169

View more
  6 in total

1.  Subset selection strategy-based pancreas segmentation in CT.

Authors:  Yi Huang; Jing Wen; Yi Wang; Jun Hu; Yizhu Wang; Weibin Yang
Journal:  Quant Imaging Med Surg       Date:  2022-06

2.  Brain Morphometry Estimation: From Hours to Seconds Using Deep Learning.

Authors:  Michael Rebsamen; Yannick Suter; Roland Wiest; Mauricio Reyes; Christian Rummel
Journal:  Front Neurol       Date:  2020-04-08       Impact factor: 4.003

3.  A Contrast Augmentation Approach to Improve Multi-Scanner Generalization in MRI.

Authors:  Maria Ines Meyer; Ezequiel de la Rosa; Nuno Pedrosa de Barros; Roberto Paolella; Koen Van Leemput; Diana M Sima
Journal:  Front Neurosci       Date:  2021-08-31       Impact factor: 4.677

4.  SynthStrip: skull-stripping for any brain image.

Authors:  Andrew Hoopes; Jocelyn S Mora; Adrian V Dalca; Bruce Fischl; Malte Hoffmann
Journal:  Neuroimage       Date:  2022-07-13       Impact factor: 7.400

5.  FastSurfer - A fast and accurate deep learning based neuroimaging pipeline.

Authors:  Leonie Henschel; Sailesh Conjeti; Santiago Estrada; Kersten Diers; Bruce Fischl; Martin Reuter
Journal:  Neuroimage       Date:  2020-06-08       Impact factor: 6.556

6.  A deep learning toolbox for automatic segmentation of subcortical limbic structures from MRI images.

Authors:  Douglas N Greve; Benjamin Billot; Devani Cordero; Andrew Hoopes; Malte Hoffmann; Adrian V Dalca; Bruce Fischl; Juan Eugenio Iglesias; Jean C Augustinack
Journal:  Neuroimage       Date:  2021-09-25       Impact factor: 6.556

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.