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MELD Graph and 3D-nnUNet Deep Learning Approaches Detect Focal Cortical Dysplasia in Pediatric Drug-Resistant Epilepsy

MELD Graph and 3D-nnUNet Deep Learning Approaches Detect Focal Cortical Dysplasia in Pediatric Drug-…
Photo by Navy Medicine / Unsplash
Key Takeaway
Note that MELD Graph and 3D-nnUNet models cannot replace expert neuroradiological evaluation in pediatric focal cortical dysplasia.

This retrospective single-center study served as an external validation for deep-learning approaches in pediatric patients with focal cortical dysplasia. The population consisted of 71 children with drug-resistant epilepsy. Researchers compared MELD Graph and 3D-nnUNet models against expert neuroradiological evaluation to assess diagnostic accuracy in this specific cohort.

Lesion-level precision was 0.85 for MELD Graph and 0.91 for 3D-nnUNet. Recall rates were 0.52 and 0.48, respectively. Patient-level sensitivity reached 0.63 for MELD Graph and 0.54 for 3D-nnUNet. Specificity was 0.56 for MELD Graph and 0.86 for 3D-nnUNet. These metrics highlight the variability in model performance.

False-positive detections per patient in MRI-negative patients were 0.53 for MELD Graph and 0.14 for 3D-nnUNet. No adverse events or discontinuations were reported during the study. Safety data were not applicable as no interventions occurred. Limitations include the inability of models to replace expert neuroradiological evaluation. Optimized MRI acquisition protocols are needed to further improve automated lesion detection.

Secondary outcomes included the association of FLAIR image quality with model performance, though specific data were not reported. Practice relevance indicates these are valuable decision-support tools. However, the retrospective nature and single-center setting limit generalizability. Clinicians should interpret results cautiously regarding automated detection capabilities and rely on expert review. Future work should focus on protocol optimization.

Study Details

Study typeCohort
EvidenceLevel 3
PublishedApr 2026
View Original Abstract ↓
Focal cortical dysplasias (FCDs) are one of the most common structural causes of drug-resistant epilepsy in children but are frequently subtle and difficult to detect on conventional MRI. Many automated lesion detection methods have therefore been proposed to support neuroradiological assessment. In this study, we externally validated two recently developed deep-learning approaches for FCD detection, MELD Graph and 3D-nnUNet, in a pediatric cohort. In this retrospective single-center study, brain MRI scans of 71 children evaluated for epilepsy were analyzed, including 35 MRI-positive patients with suspected FCD and 36 MRI-negative cases based on the primary radiology reports. Both models were applied to standard 3D T1-weighted and 3D FLAIR images. Detected lesions were reviewed by an experienced pediatric neuroradiologist and classified as true positive, false positive, or false negative. Clinical semiology and EEG findings were additionally evaluated for cases with false-positive detections. At the lesion level, MELD Graph achieved a precision of 0.85 and recall of 0.52, while 3D-nnUNet achieved a precision of 0.91 and recall of 0.48. In the MRI-negative patients, MELD Graph produced more false-positive detections than 3D-nnUNet (0.53 vs. 0.14 false-positive lesions per patient). At the patient level, MELD Graph showed slightly higher sensitivity than 3D-nnUNet (0.63 vs. 0.54), whereas 3D-nnUNet demonstrated markedly higher specificity (0.86 vs. 0.56). Improved FLAIR image quality was associated with trends toward improved model performance. Both models demonstrated high precision but moderate sensitivity, indicating that they are valuable decision-support tools but cannot replace expert neuroradiological evaluation. Optimized MRI acquisition protocols are needed to further improve automated lesion detection in pediatric epilepsy.
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