Literature DB >> 35125834

On Training Deep 3D CNN Models with Dependent Samples in Neuroimaging.

Yunyang Xiong1, Hyunwoo J Kim2, Bhargav Tangirala1, Ronak Mehta1, Sterling C Johnson1, Vikas Singh1.   

Abstract

There is much interest in developing algorithms based on 3D convolutional neural networks (CNNs) for performing regression and classification with brain imaging data and more generally, with biomedical imaging data. A standard assumption in learning is that the training samples are independently drawn from the underlying distribution. In computer vision, where we have millions of training examples, this assumption is violated but the empirical performance may remain satisfactory. But in many biomedical studies with just a few hundred training examples, one often has multiple samples per participant and/or data may be curated by pooling datasets from a few different institutions. Here, the violation of the independent samples assumption turns out to be more significant, especially in small-to-medium sized datasets. Motivated by this need, we show how 3D CNNs can be modified to deal with dependent samples. We show that even with standard 3D CNNs, there is value in augmenting the network to exploit information regarding dependent samples. We present empirical results for predicting cognitive trajectories (slope and intercept) from morphometric change images derived from multiple time points. With terms which encode dependency between samples in the model, we get consistent improvements over a strong baseline which ignores such knowledge.

Entities:  

Year:  2019        PMID: 35125834      PMCID: PMC8813050          DOI: 10.1007/978-3-030-20351-1_8

Source DB:  PubMed          Journal:  Inf Process Med Imaging        ISSN: 1011-2499


  6 in total

1.  Visual Explanations From Deep 3D Convolutional Neural Networks for Alzheimer's Disease Classification.

Authors:  Chengliang Yang; Anand Rangarajan; Sanjay Ranka
Journal:  AMIA Annu Symp Proc       Date:  2018-12-05

2.  LCC-Demons: a robust and accurate symmetric diffeomorphic registration algorithm.

Authors:  M Lorenzi; N Ayache; G B Frisoni; X Pennec
Journal:  Neuroimage       Date:  2013-05-16       Impact factor: 6.556

3.  Riemannian Nonlinear Mixed Effects Models: Analyzing Longitudinal Deformations in Neuroimaging.

Authors:  Hyunwoo J Kim; Nagesh Adluru; Heemanshu Suri; Baba C Vemuri; Sterling C Johnson; Vikas Singh
Journal:  Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit       Date:  2017-11-09

4.  Longitudinal analysis of neural network development in preterm infants.

Authors:  Christopher D Smyser; Terrie E Inder; Joshua S Shimony; Jason E Hill; Andrew J Degnan; Abraham Z Snyder; Jeffrey J Neil
Journal:  Cereb Cortex       Date:  2010-03-17       Impact factor: 5.357

5.  Randomized denoising autoencoders for smaller and efficient imaging based AD clinical trials.

Authors:  Vamsi K Ithapul; Vikas Singh; Ozioma Okonkwo; Sterling C Johnson
Journal:  Med Image Comput Comput Assist Interv       Date:  2014

Review 6.  Neuropsychological and clinical heterogeneity of cognitive impairment and dementia in patients with Parkinson's disease.

Authors:  Angie A Kehagia; Roger A Barker; Trevor W Robbins
Journal:  Lancet Neurol       Date:  2010-09-27       Impact factor: 44.182

  6 in total
  1 in total

1.  A Variational Approximation for Analyzing the Dynamics of Panel Data.

Authors:  Jurijs Nazarovs; Rudrasis Chakraborty; Songwong Tasneeyapant; Sathya N Ravi; Vikas Singh
Journal:  Uncertain Artif Intell       Date:  2021-07
  1 in total

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