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Surfaced-based detection of focal cortical dysplasia using magnetic resonance fingerprinting and machine learning.

Publication ,  Journal Article
Su, T-Y; Hu, S; Wang, X; Adler, S; Wagstyl, K; Ding, Z; Choi, JY; Sakaie, K; Blümcke, I; Murakami, H; Alexopoulos, AV; Jones, SE; Najm, I ...
Published in: Epilepsia
October 9, 2025

OBJECTIVE: This study was undertaken to develop a framework for focal cortical dysplasia (FCD) detection using surface-based morphometric (SBM) analysis and machine learning (ML) applied to three-dimensional (3D) magnetic resonance fingerprinting (MRF). METHODS: We included 114 subjects (44 patients with medically intractable focal epilepsy and FCD, 70 healthy controls [HCs]). All subjects underwent high-resolution 3-T MRF scans generating T1 and T2 maps. All patients had clinical T1-weighted (T1w) images; 35 also had 3D fluid-attenuated inversion recovery (FLAIR). A 3D region of interest (ROI) was manually created for each lesion. All maps/images and lesion ROIs were registered to T1w images. Surface-based features were extracted following the Multi-center Epilepsy Lesion Detection pipeline. Features were normalized using intrasubject, interhemispheric, and intersubject z-scoring. A two-stage ML approach was applied: a vertexwise neural network classifier for lesional versus normal vertices using T1w/MRF/FLAIR features, followed by a clusterwise Random Undersampling Boosting classifier to suppress false positives (FPs) based on cluster size, prediction probabilities, and feature statistics. Leave-one-out cross-validation was performed at both stages. RESULTS: Using T1w features, sensitivity was 70.4% with 11.6 FP clusters/patient and 4.1 in HCs. Adding MRF reduced FPs to 6.6 clusters/patient and 1.5 in HCs, with 68.2% sensitivity. Combining T1w, MRF, and FLAIR achieved 71.4% sensitivity, with 4.7 FPs/patient and 1.1 in HCs. Detection probabilities were significantly higher for true positive clusters than FPs (p < .001). Type II showed higher detection rates than non-type II. Magnetic resonance imaging (MRI)-positive patients showed higher detection rates and fewer FPs than MRI-negative patients. Seizure-free patients demonstrated higher detection rates than non-seizure-free patients. Subtyping accuracy was 80.8% for non-type II versus type II, and 68.4% for IIa versus IIb, although limited by small sample size. The transmantle sign was present in 61.5% of IIb and 40% of IIa cases. SIGNIFICANCE: We developed an ML framework for FCD detection integrating SBM with clinical MRI and MRF. Advances include improved FP control and enhanced subtyping; selected model outputs may provide indicators of detection confidence and seizure outcome.

Duke Scholars

Published In

Epilepsia

DOI

EISSN

1528-1167

Publication Date

October 9, 2025

Location

United States

Related Subject Headings

  • Neurology & Neurosurgery
  • 3209 Neurosciences
  • 3202 Clinical sciences
  • 1109 Neurosciences
  • 1103 Clinical Sciences
 

Citation

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Su, T.-Y., Hu, S., Wang, X., Adler, S., Wagstyl, K., Ding, Z., … Wang, Z. I. (2025). Surfaced-based detection of focal cortical dysplasia using magnetic resonance fingerprinting and machine learning. Epilepsia. https://doi.org/10.1111/epi.18667
Su, Ting-Yu, Siyuan Hu, Xiaofeng Wang, Sophie Adler, Konrad Wagstyl, Zheng Ding, Joon Yul Choi, et al. “Surfaced-based detection of focal cortical dysplasia using magnetic resonance fingerprinting and machine learning.Epilepsia, October 9, 2025. https://doi.org/10.1111/epi.18667.
Su T-Y, Hu S, Wang X, Adler S, Wagstyl K, Ding Z, et al. Surfaced-based detection of focal cortical dysplasia using magnetic resonance fingerprinting and machine learning. Epilepsia. 2025 Oct 9;
Su, Ting-Yu, et al. “Surfaced-based detection of focal cortical dysplasia using magnetic resonance fingerprinting and machine learning.Epilepsia, Oct. 2025. Pubmed, doi:10.1111/epi.18667.
Su T-Y, Hu S, Wang X, Adler S, Wagstyl K, Ding Z, Choi JY, Sakaie K, Blümcke I, Murakami H, Alexopoulos AV, Jones SE, Najm I, Ma D, Wang ZI. Surfaced-based detection of focal cortical dysplasia using magnetic resonance fingerprinting and machine learning. Epilepsia. 2025 Oct 9;
Journal cover image

Published In

Epilepsia

DOI

EISSN

1528-1167

Publication Date

October 9, 2025

Location

United States

Related Subject Headings

  • Neurology & Neurosurgery
  • 3209 Neurosciences
  • 3202 Clinical sciences
  • 1109 Neurosciences
  • 1103 Clinical Sciences