Literature DB >> 34909112

MULTI-DOMAIN LEARNING BY META-LEARNING: TAKING OPTIMAL STEPS IN MULTI-DOMAIN LOSS LANDSCAPES BY INNER-LOOP LEARNING.

Anthony Sicilia1, Xingchen Zhao2, Davneet S Minhas3, Erin E O'Connor4, Howard J Aizenstein5, William E Klunk5, Dana L Tudorascu5, Seong Jae Hwang1,2.   

Abstract

We consider a model-agnostic solution to the problem of Multi-Domain Learning (MDL) for multi-modal applications. Many existing MDL techniques are model-dependent solutions which explicitly require nontrivial architectural changes to construct domain-specific modules. Thus, properly applying these MDL techniques for new problems with well-established models, e.g. U-Net for semantic segmentation, may demand various low-level implementation efforts. In this paper, given emerging multi-modal data (e.g., various structural neuroimaging modalities), we aim to enable MDL purely algorithmically so that widely used neural networks can trivially achieve MDL in a model-independent manner. To this end, we consider a weighted loss function and extend it to an effective procedure by employing techniques from the recently active area of learning-to-learn (meta-learning). Specifically, we take inner-loop gradient steps to dynamically estimate posterior distributions over the hyperparameters of our loss function. Thus, our method is model-agnostic, requiring no additional model parameters and no network architecture changes; instead, only a few efficient algorithmic modifications are needed to improve performance in MDL. We demonstrate our solution to a fitting problem in medical imaging, specifically, in the automatic segmentation of white matter hyperintensity (WMH). We look at two neuroimaging modalities (T1-MR and FLAIR) with complementary information fitting for our problem.

Entities:  

Year:  2021        PMID: 34909112      PMCID: PMC8668019          DOI: 10.1109/ISBI48211.2021.9433977

Source DB:  PubMed          Journal:  Proc IEEE Int Symp Biomed Imaging        ISSN: 1945-7928


  7 in total

1.  White matter magnetic resonance imaging hyperintensity in Alzheimer's disease: correlations with corpus callosum atrophy.

Authors:  P Vermersch; J Roche; M Hamon; C Daems-Monpeurt; J P Pruvo; P Dewailly; H Petit
Journal:  J Neurol       Date:  1996-03       Impact factor: 4.849

2.  Learning without Forgetting.

Authors:  Zhizhong Li; Derek Hoiem
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2017-11-14       Impact factor: 6.226

3.  N4ITK: improved N3 bias correction.

Authors:  Nicholas J Tustison; Brian B Avants; Philip A Cook; Yuanjie Zheng; Alexander Egan; Paul A Yushkevich; James C Gee
Journal:  IEEE Trans Med Imaging       Date:  2010-04-08       Impact factor: 10.048

Review 4.  Not-so-supervised: A survey of semi-supervised, multi-instance, and transfer learning in medical image analysis.

Authors:  Veronika Cheplygina; Marleen de Bruijne; Josien P W Pluim
Journal:  Med Image Anal       Date:  2019-03-29       Impact factor: 8.545

5.  fslr: Connecting the FSL Software with R.

Authors:  John Muschelli; Elizabeth Sweeney; Martin Lindquist; Ciprian Crainiceanu
Journal:  R J       Date:  2015-06       Impact factor: 3.984

6.  Statistical normalization techniques for magnetic resonance imaging.

Authors:  Russell T Shinohara; Elizabeth M Sweeney; Jeff Goldsmith; Navid Shiee; Farrah J Mateen; Peter A Calabresi; Samson Jarso; Dzung L Pham; Daniel S Reich; Ciprian M Crainiceanu
Journal:  Neuroimage Clin       Date:  2014-08-15       Impact factor: 4.881

7.  White matter hyperintensities are more highly associated with preclinical Alzheimer's disease than imaging and cognitive markers of neurodegeneration.

Authors:  Benjamin M Kandel; Brian B Avants; James C Gee; Corey T McMillan; Guray Erus; Jimit Doshi; Christos Davatzikos; David A Wolk
Journal:  Alzheimers Dement (Amst)       Date:  2016-04-07
  7 in total

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