A comparative analysis of imaging-based algorithms for detecting focal cortical dysplasia type II in children

. 2025 Aug 15 ; 15 (1) : 29946. [epub] 20250815

Jazyk angličtina Země Velká Británie, Anglie Médium electronic

Typ dokumentu časopisecké články, srovnávací studie

Perzistentní odkaz   https://www.medvik.cz/link/pmid40817382

Grantová podpora
NU21-08-00228 Agentura Pro Zdravotnický Výzkum České Republiky
LM2018140 Ministerstvo Školství, Mládeže a Tělovýchovy
LX22NPO5107 Ministerstvo Školství, Mládeže a Tělovýchovy

Odkazy

PubMed 40817382
PubMed Central PMC12356853
DOI 10.1038/s41598-025-16015-3
PII: 10.1038/s41598-025-16015-3
Knihovny.cz E-zdroje

Focal cortical dysplasia (FCD) is the leading cause of drug-resistant epilepsy (DRE) in pediatric patients. Accurate detection of FCDs is crucial for successful surgical outcomes, yet remains challenging due to frequently subtle MRI findings, especially in children, whose brain morphology undergoes significant developmental changes. Automated detection algorithms have the potential to improve diagnostic precision, particularly in cases, where standard visual assessment fails. This study aimed to evaluate the performance of automated algorithms in detecting FCD type II in pediatric patients and to examine the impact of adult versus pediatric templates on detection accuracy. MRI data from 23 surgical pediatric patients with histologically confirmed FCD type II were retrospectively analyzed. Three imaging-based detection algorithms were applied to T1-weighted images, each targeting key structural features: cortical thickness, gray matter intensity (extension), and gray-white matter junction blurring. Their performance was assessed using adult and pediatric healthy controls templates, with validation against both predictive radiological ROIs (PRR) and post-resection cavities (PRC). The junction algorithm achieved the highest median dice score (0.028, IQR 0.038, p < 0.01 when compared with other algorithms) and detected relevant clusters even in MRI-negative cases. The adult template (median dice score 0.013, IQR 0.027) significantly outperformed the pediatric template (0.0032, IQR 0.023) (p < 0.001), highlighting the importance of template consistency. Despite superior performance of the adult template, its use in pediatric populations may introduce bias, as it does not account for age-specific morphological features such as cortical maturation and incomplete myelination. Automated algorithms, especially those targeting junction blurring, enhance FCD detection in pediatric populations. These algorithms may serve as valuable decision-support tools, particularly in settings where neuroradiological expertise is limited.

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Severino, M. et al. Definitions and classification of malformations of cortical development: practical guidelines. PubMed PMC

Bernasconi, A. et al. Recommendations for the use of structural magnetic resonance imaging in the care of patients with epilepsy: A consensus report from the international league against epilepsy neuroimaging task force. PubMed

Krsek, P. et al. Different features of histopathological subtypes of pediatric focal cortical dysplasia. PubMed

Lerner, J. T. et al. Assessment and surgical outcomes for mild type I and severe type II cortical dysplasia: A critical review and the UCLA experience. PubMed

Kynčl, M. et al. Recommendations for structural brain MRI in the diagnosis of epilepsy.

von Oertzen, J. Standard magnetic resonance imaging is inadequate for patients with refractory focal epilepsy. PubMed PMC

Mellerio, C. et al. 3T < scp > MRI improves the detection of transmantle sign in type 2 focal cortical dysplasia. PubMed

Bartolini, L. et al. Temporal lobe epilepsy and focal cortical dysplasia in children: A tip to find the abnormality. PubMed

Duncan, J. S., Winston, G. P., Koepp, M. J. & Ourselin, S. Brain imaging in the assessment for epilepsy surgery. PubMed PMC

Tarsi, A. et al. MRI findings in low grade tumours associated with focal cortical dysplasia. PubMed

Wang, X. et al. Focal cortical dysplasia type III related medically refractory epilepsy: MRI findings and potential predictors of surgery outcome. PubMed PMC

Hu, W. et al. Multimodality Image Post-processing in Detection of Extratemporal MRI-Negative Cortical Dysplasia. PubMed PMC

Zhang, S. et al. Deep learning-based automated lesion segmentation on pediatric focal cortical dysplasia II preoperative MRI: a reliable approach. PubMed PMC

Feng, C. et al. ACM, New York, NY, USA,. Enhance the Focal Cortical Dysplasia Lesions in a MR-negative Image. in Proceedings of the 2020 4th International Conference on Digital Signal Processing 127–130. 10.1145/3408127.3408193(2020)

Kersting, L. N. et al. Detection of focal cortical dysplasia: development and multicentric evaluation of artificial intelligence models. PubMed PMC

Spitzer, H. et al. Interpretable surface-based detection of focal cortical dysplasias: a Multi-centre epilepsy lesion detection study. PubMed PMC

Lin, Y. et al. Automatic analysis of integrated magnetic resonance and positron emission tomography images improves the accuracy of detection of focal cortical dysplasia type IIb lesions. PubMed

Hong, S. J., Bernhardt, B. C., Schrader, D. S., Bernasconi, N. & Bernasconi, A. Whole-brain MRI phenotyping in dysplasia-related frontal lobe epilepsy. PubMed PMC

Middlebrooks, E. H. et al. Improved detection of focal cortical dysplasia using a novel 3D imaging sequence: Edge-Enhancing gradient echo (3D-EDGE) MRI. PubMed PMC

Adler, S. et al. Novel surface features for automated detection of focal cortical dysplasias in paediatric epilepsy. PubMed PMC

Willard, A. et al. Seizure Outcome After Surgery for MRI-Diagnosed Focal Cortical Dysplasia. PubMed

Chari, A. et al. Lesion detection in epilepsy surgery: lessons from a prospective evaluation of a machine learning algorithm. PubMed

Mo, J. J. et al. Clinical Value of Machine Learning in the Automated Detection of Focal Cortical Dysplasia Using Quantitative Multimodal Surface-Based Features. PubMed PMC

Blümcke, I. et al. The clinicopathologic spectrum of focal cortical dysplasias: A consensus classification proposed by an ad hoc task force of the ILAE diagnostic methods commission. PubMed PMC

Kassubek, J., Huppertz, H., Spreer, J. & Schulze-Bonhage, A. Detection and localization of focal cortical dysplasia by Voxel‐based 3‐D mri analysis. PubMed

Huppertz, H. J. et al. Enhanced visualization of blurred gray–white matter junctions in focal cortical dysplasia by voxel-based 3D MRI analysis. PubMed

Desikan, R. S. et al. An automated labeling system for subdividing the human cerebral cortex on MRI scans into gyral based regions of interest. PubMed

Hulshof, H. M. et al. The epileptogenic zone in children with tuberous sclerosis complex is characterized by prominent features of focal cortical dysplasia. PubMed PMC

Su et al. 3D ROC Analysis for Medical Imaging Diagnosis. in. PubMed

Taha, A. A. & Hanbury, A. Metrics for evaluating 3D medical image segmentation: analysis, selection, and tool. PubMed PMC

Baulac, S. et al. Familial focal epilepsy with focal cortical dysplasia due to PubMed

Wang, F., Hong, S. T., Zhang, Y., Xing, Z. & Lin, Y. X. 18F-FDG-PET/CT for localizing the epileptogenic focus in patients with different types of focal cortical dysplasia. PubMed PMC

Veersema, T. J. et al. 7 Tesla T2*-weighted MRI as a tool to improve detection of focal cortical dysplasia. PubMed

Tang, Y. et al. Cortical abnormalities of synaptic vesicle protein 2A in focal cortical dysplasia type II identified in vivo with 18F-SynVesT-1 positron emission tomography imaging. PubMed PMC

Jin, B. et al. Automated detection of focal cortical dysplasia type II with surface-based magnetic resonance imaging postprocessing and machine learning. PubMed PMC

David, B. et al. External validation of automated focal cortical dysplasia detection using morphometric analysis. PubMed

Dangouloff-Ros, V. et al. Preoperative detection of subtle focal cortical dysplasia in children by combined arterial spin labeling, Voxel-Based morphometry, Electroencephalography-Synchronized functional MRI, Resting-State regional homogeneity, and 18F-fluorodeoxyglucose positron emission tomography. PubMed

Demerath, T. et al. Fully automated detection of focal cortical dysplasia: comparison of MPRAGE and MP2RAGE sequences. PubMed

Wang, Y. et al. Voxel-based automated detection of focal cortical dysplasia lesions using diffusion tensor imaging and T2-weighted MRI data. PubMed

Kimura, N. et al. Risk factors of cognitive impairment in pediatric epilepsy patients with focal cortical dysplasia. PubMed

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