2023
DOI: 10.1007/s10278-023-00797-x
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DeepBLS: Deep Feature-Based Broad Learning System for Tissue Phenotyping in Colorectal Cancer WSIs

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Cited by 3 publications
(1 citation statement)
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“…BLSNet [30] uses incremental learning algorithm for the classification of non-melanoma and melanoma skin lesions from dermoscopic images, which achieves a performance trade-off between classification accuracy and execution time. DeepBLS [31] combines a comprehensive learning system with deep feature extraction to identify different tissue components in colon cancer histological images. SPRBF-ABLS [32] is a cascaded neural network framework based on a sparse polynomial-based RBF neural network and an attention-based broad learning system.…”
Section: Broad Learning Systems In Medical Imagesmentioning
confidence: 99%
“…BLSNet [30] uses incremental learning algorithm for the classification of non-melanoma and melanoma skin lesions from dermoscopic images, which achieves a performance trade-off between classification accuracy and execution time. DeepBLS [31] combines a comprehensive learning system with deep feature extraction to identify different tissue components in colon cancer histological images. SPRBF-ABLS [32] is a cascaded neural network framework based on a sparse polynomial-based RBF neural network and an attention-based broad learning system.…”
Section: Broad Learning Systems In Medical Imagesmentioning
confidence: 99%