Automated Segmentation of Infarct Lesions in T1-Weighted MRI Scans Using Variational Mode Decomposition and Deep Learning

dc.contributor.authorMay Phu Paing
dc.contributor.authorS. Tungjitkusolmun
dc.contributor.authorToan Bui
dc.contributor.authorSarinporn Visitsattapongse
dc.contributor.authorChuchart Pintavirooj
dc.date.accessioned2026-05-08T19:15:28Z
dc.date.issued2021-3-10
dc.description.abstractAutomated segmentation methods are critical for early detection, prompt actions, and immediate treatments in reducing disability and death risks of brain infarction. This paper aims to develop a fully automated method to segment the infarct lesions from T1-weighted brain scans. As a key novelty, the proposed method combines variational mode decomposition and deep learning-based segmentation to take advantages of both methods and provide better results. There are three main technical contributions in this paper. First, variational mode decomposition is applied as a pre-processing to discriminate the infarct lesions from unwanted non-infarct tissues. Second, overlapped patches strategy is proposed to reduce the workload of the deep-learning-based segmentation task. Finally, a three-dimensional U-Net model is developed to perform patch-wise segmentation of infarct lesions. A total of 239 brain scans from a public dataset is utilized to develop and evaluate the proposed method. Empirical results reveal that the proposed automated segmentation can provide promising performances with an average dice similarity coefficient (DSC) of 0.6684, intersection over union (IoU) of 0.5022, and average symmetric surface distance (ASSD) of 0.3932, respectively.
dc.identifier.doi10.3390/s21061952
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/15041
dc.publisherSensors
dc.subjectAdvanced MRI Techniques and Applications
dc.subjectAdvanced Neural Network Applications
dc.subjectBrain Tumor Detection and Classification
dc.titleAutomated Segmentation of Infarct Lesions in T1-Weighted MRI Scans Using Variational Mode Decomposition and Deep Learning
dc.typeArticle

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