Literature DB >> 33679360

Evaluation of Task fMRI Decoding With Deep Learning on a Small Sample Dataset.

Sunao Yotsutsuji1, Miaomei Lei2, Hiroyuki Akama1,3.   

Abstract

Recently, several deep learning methods have been applied to decoding in task-related fMRI, and their advantages have been exploited in a variety of ways. However, this paradigm is sometimes problematic, due to the difficulty of applying deep learning to high-dimensional data and small sample size conditions. The difficulties in gathering a large amount of data to develop predictive machine learning models with multiple layers from fMRI experiments with complicated designs and tasks are well-recognized. Group-level, multi-voxel pattern analysis with small sample sizes results in low statistical power and large accuracy evaluation errors; failure in such instances is ascribed to the individual variability that risks information leakage, a particular issue when dealing with a limited number of subjects. In this study, using a small-size fMRI dataset evaluating bilingual language switch in a property generation task, we evaluated the relative fit of different deep learning models, incorporating moderate split methods to control the amount of information leakage. Our results indicated that using the session shuffle split as the data folding method, along with the multichannel 2D convolutional neural network (M2DCNN) classifier, recorded the best authentic classification accuracy, which outperformed the efficiency of 3D convolutional neural network (3DCNN). In this manuscript, we discuss the tolerability of within-subject or within-session information leakage, of which the impact is generally considered small but complex and essentially unknown; this requires clarification in future studies.
Copyright © 2021 Yotsutsuji, Lei and Akama.

Entities:  

Keywords:  MVPA; brain decoding; cross-subject modeling; cross-validation; deep learning; fMRI; model selection

Year:  2021        PMID: 33679360      PMCID: PMC7928289          DOI: 10.3389/fninf.2021.577451

Source DB:  PubMed          Journal:  Front Neuroinform        ISSN: 1662-5196            Impact factor:   4.081


  1 in total

1.  Attention module improves both performance and interpretability of four-dimensional functional magnetic resonance imaging decoding neural network.

Authors:  Zhoufan Jiang; Yanming Wang; ChenWei Shi; Yueyang Wu; Rongjie Hu; Shishuo Chen; Sheng Hu; Xiaoxiao Wang; Bensheng Qiu
Journal:  Hum Brain Mapp       Date:  2022-02-25       Impact factor: 5.399

  1 in total

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