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Erschienen in: Neural Processing Letters 3/2023

20.09.2022

Saliency Transfer Learning and Central-Cropping Network for Prostate Cancer Classification

verfasst von: Guokai Zhang, Mengpei Jia, Lin Gao, Jihao Luo, Aijun Zhang, Yongyong Chen, Peipei Shan, Binghui Zhao

Erschienen in: Neural Processing Letters | Ausgabe 3/2023

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Abstract

Classifying the malignancy of prostate lesions from MRI images is crucial in diagnosing prostate cancer at the early stage. In clinical examination, radiologists usually focus on the most salient and distinctive regions to diagnose. However, in many state-of-the-art CNN based methods, the conventional convolution operation extracts the features equally importantly, which leads to an excessive feature learning process on the uninterested regions. To address this challenge, we propose a saliency transfer learning network that allows the model to focus on the salient and influential regions automatically. Moreover, a pyramid central-crop pooling scheme is employed to extract the multi-scale, centric-visual, and salient features from different layers. To validate the effectiveness of the proposed model, extensive experiments are conducted on prostate cancer and non-cancer MRI dataset, the experimental results demonstrate that our proposed model could gain competitive performance (Accuracy 94.9%, Sensitivity 96.7%, Specificity 93.5%, AUC 0.989) on this classification task.

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Metadaten
Titel
Saliency Transfer Learning and Central-Cropping Network for Prostate Cancer Classification
verfasst von
Guokai Zhang
Mengpei Jia
Lin Gao
Jihao Luo
Aijun Zhang
Yongyong Chen
Peipei Shan
Binghui Zhao
Publikationsdatum
20.09.2022
Verlag
Springer US
Erschienen in
Neural Processing Letters / Ausgabe 3/2023
Print ISSN: 1370-4621
Elektronische ISSN: 1573-773X
DOI
https://doi.org/10.1007/s11063-022-10999-z

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