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Extensive T1-weighted MRI Preprocessing Improves Generalizability of Deep Brain Age Prediction Models.

Lara Dular1, Franjo Pernuš1, Žiga Špiclin1

  • 1University of Ljubljana, Faculty of Electrical Engineering, Tržaška cesta 25, Ljubljana 1000, Slovenia.

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|May 22, 2023
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Summary
This summary is machine-generated.

Preprocessing T1w MRIs significantly impacts brain age prediction accuracy. Affine registration improves results, while extensive preprocessing can increase errors on new datasets without offset correction.

Keywords:
MRI preprocessingUK Biobankbrain agecomparisondeep regression modellinear mixed effect modelsreproducible researchtransfer learning

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Area of Science:

  • Neuroimaging
  • Artificial Intelligence
  • Biomarkers

Background:

  • Brain age estimation from T1w MRI is a key biomarker for brain aging and diseases.
  • Current brain age prediction accuracy is within 2-3 years, but inter-study comparisons are difficult due to varied preprocessing.
  • Deep learning models are increasingly used for brain age prediction.

Approach:

  • Investigated the impact of four T1w MRI preprocessing pipelines on four deep learning brain age models.
  • Evaluated variations in registration, grayscale correction, and software implementation.
  • Assessed model performance using mean absolute error (MAE) on T1w images.

Key Points:

  • Preprocessing choices significantly affect prediction error (up to 0.7 years MAE increase).
  • Affine registration improved MAE compared to rigid registration.
  • 3D isotropic 1 mm³ models were less sensitive to preprocessing variations than 2D or downsampled 3D models.
  • Offset correction is crucial for generalizing model performance across datasets with different preprocessing.

Conclusions:

  • Extensive T1w preprocessing can enhance MAE, particularly for new datasets, contrary to some literature.
  • Offset correction is essential for robust brain age prediction generalization, irrespective of preprocessing.
  • Standardizing preprocessing or implementing offset correction is vital for reliable brain age estimation.