Generalizable DNN model for brain tumor sub-structure segmentation from low-resolution 2D multimodal MR Images

dc.contributor.authorBhaskaracharya, B.
dc.contributor.authorNair, R.P.
dc.contributor.authorPrakashini, K.
dc.contributor.authorR, G.M.
dc.contributor.authorLitvak, P.
dc.contributor.authorMandava, P.
dc.contributor.authorVijayasenan, D.
dc.contributor.authorSumam David, S.D.
dc.date.accessioned2026-02-03T13:20:16Z
dc.date.issued2025
dc.description.abstractSegmenting subregions within gliomas are critical for effective treatment planning of brain tumors. However, traditional methods of analyzing these regions using multiple MRI modalities are time-consuming, tedious, and subjective. To address these challenges, automatic segmentation models have been developed but are often built with complex 3D architecture using 3D MRI data. Also, brain tumor substructure segmentation is a highly class-imbalanced problem. To overcome these limitations, we propose two models that work on low-resolution 2D MRI data, widely used in resource-constrained countries. One model employs training a 2D U-NeT model using proposed hard sampling approach, demonstrating its effectiveness in segmenting gliomas, especially in datasets with extreme class imbalance. Another model incorporates pointwise and depthwise convolutions in each convolutional layer, enabling efficient information processing and feature learning. By ensembling the prediction maps of these models, we further improve overall segmentation performance. Our models were evaluated on the BraTS2018 dataset, achieving dice scores of 0.78 for Enhancing Tumor (ET), 0.82 for Tumor Core (TC), and 0.87 for Whole Tumor (WT). On a tertiary care hospital dataset, dice scores of 0.68 (ET), 0.75 (TC), and 0.84 (WT) were obtained, demonstrating their robustness and proximity to state-of-the-art methods. In summary, the proposed models offer efficient and reliable segmentation of glioma subregions. Their high dice scores, and computational efficiency, make them valuable tools for treatment planning and advancements in brain tumor segmentation. © 2024 Elsevier Ltd
dc.identifier.citationBiomedical Signal Processing and Control, 2025, 100, , pp. -
dc.identifier.issn17468094
dc.identifier.urihttps://doi.org/10.1016/j.bspc.2024.106916
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/20450
dc.publisherElsevier Ltd
dc.subjectArthroplasty
dc.subjectDiffusion tensor imaging
dc.subjectHospital data processing
dc.subjectImage segmentation
dc.subjectNetwork security
dc.subjectNuclear magnetic resonance
dc.subjectBrain tumors
dc.subjectDepth-wise convolution
dc.subjectEnsemble multiple model
dc.subjectGlioma brain tumor
dc.subjectHard sampling
dc.subjectMICCAI-BraTS challenge
dc.subjectMultiple-modeling
dc.subjectPoint wise
dc.subjectPoint-wise convolution
dc.subjectZoom-augmentation
dc.subjectMagnetic resonance imaging
dc.subjectadult
dc.subjectArticle
dc.subjectbrain tumor
dc.subjectcontrolled study
dc.subjectdeep neural network
dc.subjectdimensionality reduction
dc.subjectentropy
dc.subjectfeature learning (machine learning)
dc.subjectfollow up
dc.subjecthuman
dc.subjectimage quality
dc.subjectimage segmentation
dc.subjectmachine learning
dc.subjectmagnetic field
dc.subjectmultimodal imaging
dc.subjectnuclear magnetic resonance imaging
dc.subjectsegmentation algorithm
dc.subjecttertiary care center
dc.subjecttertiary health care
dc.subjecttwo-dimensional imaging
dc.titleGeneralizable DNN model for brain tumor sub-structure segmentation from low-resolution 2D multimodal MR Images

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