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From Anatomy to Genomics Using a Multi-Task Deep Learning Approach for Comprehensive Glioma Profiling

Akmalbek AbdusalomovDepartment of Computer Engineering, Gachon University Sujeong-Gu, Seongnam-Si 13120, Republic of KoreaSabina UmirzakovaDepartment of Computer Engineering, Gachon University Sujeong-Gu, Seongnam-Si 13120, Republic of KoreaObidjon BekmirzaevDepartment of Artificial Intelligence, Tashkent State University of Economics, Tashkent 100066, UzbekistanAdilbek DauletovAbror Shavkatovich BuriboevDepartment of AI-Software, Gachon University, Sujeong-Gu, Seongnam-Si 13120, Republic of KoreaAlpamis KutlimuratovDepartment of Applied Informatics, Kimyo International University, Tashkent 100170, UzbekistanAkhram NishanovFaculty of Software Engineering, Tashkent University of Information Technologies Named After Muhammad Al-Khwarizmi, Tashkent 100200, UzbekistanRashid NasimovDepartment of Artificial Intelligence, Tashkent State University of Economics, Tashkent 100066, UzbekistanRyum-Duck OhDepartment of Computer Software, Korea National University of Transportation, Chungju-si 27909, Republic of Korea
Bioengineeringjournal2025en
ABI

Annotatsiya

BACKGROUND: Gliomas are among the most complex and lethal primary brain tumors, necessitating precise evaluation of both anatomical subregions and molecular alterations for effective clinical management. METHODS: To find a solution to the disconnected nature of current bioimage analysis pipelines, where anatomical segmentation based on MRI and molecular biomarker prediction are done as separate tasks, we use here Molecular-Genomic and Multi-Task (MGMT-Net), a one deep learning scheme that carries out the task of the multi-modal MRI data without any conversion. MGMT-Net incorporates a novel Cross-Modality Attention Fusion (CMAF) module that dynamically integrates diverse imaging sequences and pairs them with a hybrid Transformer-Convolutional Neural Network (CNN) encoder to capture both global context and local anatomical detail. This architecture supports dual-task decoders, enabling concurrent voxel-wise tumor delineation and subject-level classification of key genomic markers, including the IDH gene mutation, the 1p/19q co-deletion, and the TERT gene promoter mutation. RESULTS: Extensive validation on the Brain Tumor Segmentation (BraTS 2024) dataset and the combined Cancer Genome Atlas/Erasmus Glioma Database (TCGA/EGD) datasets demonstrated high segmentation accuracy and robust biomarker classification performance, with strong generalizability across external institutional cohorts. Ablation studies further confirmed the importance of each architectural component in achieving overall robustness. CONCLUSIONS: MGMT-Net presents a scalable and clinically relevant solution that bridges radiological imaging and genomic insights, potentially reducing diagnostic latency and enhancing precision in neuro-oncology decision-making. By integrating spatial and genetic analysis within a single model, this work represents a significant step toward comprehensive, AI-driven glioma assessment.

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