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CNN-TumorNet: leveraging explainability in deep learning for precise brain tumor diagnosis on MRI images
31
Zitationen
8
Autoren
2025
Jahr
Abstract
Despite the efficacy of CNN-TumorNet, the overarching challenge of deep learning interpretability persists. These models may function as "black boxes," complicating doctors' ability to trust and accept them without comprehending their rationale. By integrating LIME, CNN-TumorNet achieves elevated accuracy alongside enhanced transparency, facilitating its application in clinical environments and improving patient care in neuro-oncology.
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