ABFR-KAN: Kolmogorov-Arnold Networks for Functional Brain Analysis
By: Tyler Ward, Abdullah Imran
Potential Business Impact:
Finds autism in brain scans better.
Functional connectivity (FC) analysis, a valuable tool for computer-aided brain disorder diagnosis, traditionally relies on atlas-based parcellation. However, issues relating to selection bias and a lack of regard for subject specificity can arise as a result of such parcellations. Addressing this, we propose ABFR-KAN, a transformer-based classification network that incorporates novel advanced brain function representation components with the power of Kolmogorov-Arnold Networks (KANs) to mitigate structural bias, improve anatomical conformity, and enhance the reliability of FC estimation. Extensive experiments on the ABIDE I dataset, including cross-site evaluation and ablation studies across varying model backbones and KAN configurations, demonstrate that ABFR-KAN consistently outperforms state-of-the-art baselines for autism spectrum distorder (ASD) classification. Our code is available at https://github.com/tbwa233/ABFR-KAN.
Similar Papers
Improving Brain Disorder Diagnosis with Advanced Brain Function Representation and Kolmogorov-Arnold Networks
CV and Pattern Recognition
Helps doctors find autism faster using brain scans.
FunKAN: Functional Kolmogorov-Arnold Network for Medical Image Enhancement and Segmentation
CV and Pattern Recognition
Makes medical pictures clearer and finds diseases.
An Interpretable Multi-Plane Fusion Framework With Kolmogorov-Arnold Network Guided Attention Enhancement for Alzheimer's Disease Diagnosis
CV and Pattern Recognition
Finds Alzheimer's early using brain scans.