A Novel EfficientNet-based Approach for Brain Tumor Detection
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Abstract
Accurate and early detection of brain tumors is important to improve patient outcomes, but
this has intrinsically been somewhat subjective and contemporarily time-consuming and
expensive. We will outline an approach in this groundbreaker that empowered deep learning
and the efficiency of EfficientNetV2 in revolutionizing brain tumor detection. Our approach
outperforms existing methods on conventional brain tumor datasets, achieving more than
99.6% accuracy in the classification of tumors into clinically relevant subtypes. Only with
an EfficientNetV2 as the backbone, combined with carefully designed data augmentation
techniques, pruning techniques, and transfer learning strategies, the model can realize high
accuracy with drastically fewer parameters and significantly less computation compared to
other deep learning approaches applied for brain tumor detection. This makes our approach
highly scalable and feasible for translation to resource-constrained clinical environments.
We have also introduced a pruning technique, which makes it possible to reveal the insights
into model compression and parameter efficiency. Thus, our work has huge implications for
the potential that deep learning, and more so EfficientNetV2 architecture, holds in terms of
changing the landscape of brain tumor detection to fast, accurate, and cheap diagnosis
toward better patient outcomes and saving lives.
