Advancements in Image Processing Approaches for Brain Tumor Diagnosis: An Article Review
DOI:
https://doi.org/10.29304/jqcsm.2025.17.11980Keywords:
medical imaging, MRI (Magnetic Resonance Imaging), machine learning, degmentation techniques, Computer-Aided Diagnosis (CAD)Abstract
Recent advances in clinical photograph processing, especially synthetic intelligence (AI) and deep studying strategies, represent a paradigm shift in mind tumor diagnosis. The review proven that convolutional neural network (CNN) models and advanced U-Nets attain superior accuracy in tumor segmentation (up to 94% accuracy the usage of the Dess index) and class, outperforming conventional methods including thresholding and vicinity increase, which suffer from barriers in handling noise and heterogeneity of tumor boundaries. The integration of multimodal imaging (MRI, CT, PET) additionally enhances diagnostic accuracy by using providing a comprehensive view of tumor biology, but its effectiveness relies upon on standardization of protocols across clinical facilities.
Prominent challenges highlighted within the evaluate consist of the need for huge, categorized datasets, the computational barriers of deep studying fashions, and the issue of interpreting AI choices ("black box"), which affects medical self-belief. The findings also emphasize the significance of pre-processing techniques (which include CLAHE) in improving photo pleasant and the position of transfer getting to know in overcoming information scarcity.
In the future, emphasis must be positioned on growing light-weight fashions for practical scientific use, improving interpretability thru tools including Grad-CAM, and fostering collaboration between researchers and clinicians to align technical innovations with scientific wishes. These traits promise to transform mind tumor prognosis in the direction of extra efficient and equitable precision remedy.
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