4.7 Article

Medical image diagnosis of prostate tumor based on PSP-Net+VGG16 deep learning network

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Publisher

ELSEVIER IRELAND LTD
DOI: 10.1016/j.cmpb.2022.106770

Keywords

Prostate cancer diagnosis; MRI; Deep learning; PSP-Net; VGG16

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The study proposed a prostate cancer diagnosis method based on deep learning network, with high segmentation accuracy and processing speed. Experimental results showed that the method can accurately and quickly identify tumors, making it widely applicable to clinical diagnosis of prostate tumors.
Background and objective: Prostate cancer is the most common cancer of the male reproductive system. With the development of medical imaging technology, magnetic resonance images (MRI) have been used in the diagnosis and treatment of prostate cancer because of its clarity and non-invasiveness. Prostate MRI segmentation and diagnosis experience problems such as low tissue boundary contrast. The traditional segmentation method of manually drawing the contour boundary of the tissue cannot meet the clinical real-time requirements. How to quickly and accurately segment the prostate tumor has become an important research topic.Methods: This paper proposes a prostate tumor diagnosis based on the deep learning network PSPNet + VGG16. The deep convolutional neural network segmentation method based on the PSP-Net constructs a atrous convolution residual structure model extraction network. First, the three-dimensional prostate MRI is converted to two-dimensional image slices, and then the slice input of the twodimensional image is trained based on the PSP-Net neural network; and the VGG16 network is used to analyze the region of interest and classify prostate cancer and normal prostate.Results: According to the experimental results, the segmentation method based on the deep learning network PSP-Net is used to identify the data set samples. The segmentation accuracy is close to the Dice similarity coefficient and Hausdorff distance, and even exceeds the traditional prostate image segmentation method. The Dice index reached 91.3%, and the technique is superior in speed of processing. The predicted tumor markers are very close to the actual markers manually by clinicians; the classification accuracy and recognition rates of prostate MRI based on VGG16 are as high as 87.95% and 87.33%, and the accuracy rate and recall rate of the network model are relatively balanced. The area under curve index is also higher than other models, with good generalization ability. Conclusion: Experiments show that prostate cancer diagnosis based on the deep learning network PSPNet + VGG16 is superior in accuracy and processing time compared to other algorithms, and can be well applied to clinical prostate tumor diagnosis.

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