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Deep Learning-based Hierarchical Brain Segmentation with Preliminary Analysis of the Repeatability and

Masami Goto1, Koji Kamagata2, Christina Andica2

  • 1Department of Radiological Technology, Faculty of Health Science, Juntendo University, Tokyo, Japan.

Magnetic Resonance in Medical Sciences : MRMS : an Official Journal of Japan Society of Magnetic Resonance in Medicine
|July 3, 2024
PubMed
Summary
This summary is machine-generated.

The new deep learning-based hierarchical brain segmentation (DLHBS) method shows superior repeatability and reproducibility in estimating brain region volumes compared to SPM and FreeSurfer. This advanced tool offers more reliable brain subregion analysis.

Keywords:
brain volumetryconvolutional neural networkdeep learning-basedrepeatabilityreproducibility

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Area of Science:

  • Neuroimaging
  • Artificial Intelligence
  • Medical Image Analysis

Background:

  • Accurate brain subregion volumetry is crucial for neurological research and clinical diagnosis.
  • Existing segmentation tools like SPM and FreeSurfer have limitations in repeatability and reproducibility.
  • Deep learning offers potential for improved automated brain segmentation.

Purpose of the Study:

  • To develop and evaluate a novel deep learning-based hierarchical brain segmentation (DLHBS) method.
  • To assess the repeatability and reproducibility of DLHBS for brain subregion volume estimation.
  • To compare DLHBS performance against established tools: Statistical Parametric Mapping (SPM) and FreeSurfer (FS).

Main Methods:

  • Employed hierarchical segmentation with multiple deep learning models for efficient brain subregion segmentation.
  • Trained models using a large dataset (496 subjects) of T1-weighted MR images (T1WI) and validated with manual corrections.
  • Evaluated repeatability and reproducibility using scan-rescan data from 11 healthy subjects across three MRI scanners.

Main Results:

  • DLHBS demonstrated superior repeatability compared to SPM and FS across all eight evaluated regions, including gray matter, white matter, and hippocampus.
  • DLHBS showed higher reproducibility than SPM in six regions and than FS in five regions.
  • No instances of lower repeatability or reproducibility were observed with DLHBS.

Conclusions:

  • DLHBS significantly outperforms SPM and FS in both repeatability and reproducibility for brain subregion volumetry.
  • The DLHBS method provides a more reliable and accurate approach for brain image analysis.
  • This advancement has implications for more robust neurological research and diagnostics.