MobileLookNet: A Lightweight Convolutional Neural Network for Detection of Osseous Metastasis Using Feature Fusion and Attention Strategies

This study introduces MobileLookNet, a novel lightweight architecture designed for detecting osseous metastasis in bone scintigrams on resource-constrained devices. By employing depthwise separable convolutions in parallel, utilizing inverted residuals, and integrating low-level and high-level featu...

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Main Authors: Morales, Irish Danielle, Echon, Carlo Joseph, Teaño, Angelico Ruiz, Alampay, Raphael, Abu, Patricia Angela R
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出版: Archīum Ateneo 2024
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在線閱讀:https://archium.ateneo.edu/intelligent-visual-env/5
https://doi.org/10.1145/3663976.3664235
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總結:This study introduces MobileLookNet, a novel lightweight architecture designed for detecting osseous metastasis in bone scintigrams on resource-constrained devices. By employing depthwise separable convolutions in parallel, utilizing inverted residuals, and integrating low-level and high-level features, MobileLookNet captures diverse levels of abstraction and extracts more individually expressive features. It outperforms traditional bone scintigraphy methods and state-of-the-art networks in metastasis detection while requiring significantly fewer floating-point operations (FLOPs) and parameters. Ablation studies reveal that feature fusion yields superior results compared to transformer-based attention strategies, highlighting the informative nature of low-level features in metastasis detection. Moreover, MobileLookNet demonstrates a trade-off between high accuracy, low FLOPs, and low parameters, where at most two can be achieved at a time. Overall, MobileLookNet shows promise in assisting nuclear medicine practitioners and enhancing metastasis detection in resource-constrained settings.