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Voxel-Wise Feature Selection Method for CNN Binary Classification of Neuroimaging Data.

Domenico Messina1, Pasquale Borrelli1, Paolo Russo2

  • 1IRCCS SDN, Naples, Italy.

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|May 7, 2021
PubMed
Summary
This summary is machine-generated.

A novel feature selection (FS) technique called t-masking enhances deep learning (DL) for brain imaging classification. This method improved Alzheimer's disease detection accuracy by 6% compared to other machine learning approaches.

Keywords:
Alzheimer’s diseasebrain disordersdeep learningfeature selectionmagnetic resonance imagingneuroimagingstatistical parametric mappingt-masking

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Area of Science:

  • Neuroimaging
  • Machine Learning
  • Artificial Intelligence

Background:

  • Deep learning (DL) models require effective feature selection (FS) for brain imaging data classification.
  • Traditional FS methods may not optimally leverage the spatial information inherent in neuroimaging datasets.

Purpose of the Study:

  • To introduce and evaluate a novel voxel-wise group analysis technique, t-masking, as a data-driven FS strategy for DL in brain imaging.
  • To assess the impact of t-masking on the classification performance of a convolutional neural network (CNN) for Alzheimer's disease detection.

Main Methods:

  • Implemented t-masking, a FS technique based on voxel-wise two-sample t-tests, integrated within a CNN learning procedure.
  • Utilized a structural magnetic resonance imaging dataset of 180 subjects for binary classification of very-mild Alzheimer's disease versus normal controls.
  • Designed six experimental configurations to analyze the impact of t-masking and compared its performance against other FS-based machine learning (ML) models.

Main Results:

  • The t-masking approach demonstrated an approximate 6% enhancement in classification performance.
  • The performance improvement achieved with t-masking was superior to that of comparable ML models employing different FS strategies.
  • Evaluated the influence of t-masking on various selection rates, providing insights for future research.

Conclusions:

  • Voxel-wise group analysis via t-masking offers a significant improvement for DL-based brain imaging classification tasks.
  • The t-masking method shows high generalizability across different DL architectures, neuroimaging modalities, and various brain pathologies.
  • This data-driven FS strategy enhances diagnostic accuracy and offers a valuable tool for neurodegenerative disease research.