What is it about?
This article presents an automatic method for brain tumor segmentation based on convolutional neural networks (CNN), utilizing a ResNet50 architecture for detection and an adapted version of U-Net, named DrvU-Net, for segmentation. The study addresses the limitations of traditional manual segmentation methods, which are often inaccurate and time-consuming, emphasizing the importance of precise tumor identification for diagnosis and treatment. By using the TCGA-LGG and TCIA datasets, the proposed approach demonstrates high performance, achieving accuracy rates of up to 96% for the Dice Similarity Coefficient (DSC) and other metrics, thereby highlighting the effectiveness of CNNs in medical image analysis. The article also discusses the significance of accurate brain tumor classification, which directly influences treatment options and patient prognosis.
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Why is it important?
Accurate brain tumor segmentation is crucial for improving patient care and treatment outcomes, as it significantly impacts various aspects of medical practice. Precise segmentation allows for better visualization of tumor boundaries, enabling healthcare professionals to develop effective treatment plans tailored to individual patients. During surgical procedures, accurate localization minimizes damage to surrounding healthy brain tissue while maximizing tumor removal. In radiation therapy, segmentation ensures that radiation targets the tumor precisely, sparing healthy tissues and reducing side effects. Furthermore, regular segmentation aids in monitoring treatment response and detecting recurrences over time. It also enhances the reliability of data in clinical studies, improving understanding of tumor behavior and responses to therapies. Lastly, accurate tumor classification and segmentation provide valuable prognostic information, guiding clinicians in predicting patient outcomes and tailoring follow-up care. Ultimately, accurate brain tumor segmentation enhances diagnostic precision and treatment efficacy, leading to improved patient quality of life.
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This page is a summary of: Advancing brain tumour segmentation: A novel CNN approach with Resnet50 and DrvU-Net: A comparative study, Intelligent Decision Technologies, July 2024, IOS Press,
DOI: 10.3233/idt-240385.
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