| Literature DB >> 35462800 |
Weiwei Gao1, Xiaofeng Li2, Yanwei Wang3, Yingjie Cai4.
Abstract
To avoid the problems of relative overlap and low signal-to-noise ratio (SNR) of segmented three-dimensional (3D) multimodal medical images, which limit the effect of medical image diagnosis, a 3D multimodal medical image segmentation algorithm using reinforcement learning and big data analytics is proposed. Bayesian maximum a posteriori estimation method and improved wavelet threshold function are used to design wavelet shrinkage algorithm to remove high-frequency signal component noise in wavelet domain. The low-frequency signal component is processed by bilateral filtering and the inverse wavelet transform is used to denoise the 3D multimodal medical image. An end-to-end DRD U-Net model based on deep reinforcement learning is constructed. The feature extraction capacity of denoised image segmentation is increased by changing the convolution layer in the traditional reinforcement learning model to the residual module and introducing the multiscale context feature extraction module. The 3D multimodal medical image segmentation is done using the reward and punishment mechanism in the deep learning reinforcement algorithm. In order to verify the effectiveness of 3D multimodal medical image segmentation algorithm, the LIDC-IDRI data set, the SCR data set, and the DeepLesion data set are selected as the experimental data set of this article. The results demonstrate that the algorithm's segmentation effect is effective. When the number of iterations is increased to 250, the structural similarity reaches 98%, the SNR is always maintained between 55 and 60 dB, the training loss is modest, relative overlap and accuracy all exceed 95%, and the overall segmentation performance is superior. Readers will understand how deep reinforcement learning and big data analytics test the effectiveness of 3D multimodal medical image segmentation algorithm.Entities:
Keywords: deep reinforcement learning; high-frequency signal component; medical image segmentation; three-dimensional multimodal; wavelet shrinkage
Mesh:
Year: 2022 PMID: 35462800 PMCID: PMC9024167 DOI: 10.3389/fpubh.2022.879639
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Process of three-dimensional (3D) multimodal medical image segmentation.
Figure 2Comparison of the effect of brain image segmentation before and after. (A) Presegmentation brain images. (B) Brain images postsegmentation by proposed algorithm.
Figure 3Comparison of the effect of lung image segmentation before and after. (A) Presegmentation lung images. (B) Lung images postsegmentation by proposed algorithm.
Figure 4Comparison of structural similarity of different algorithms.
Figure 5Comparison of the signal-to-noise ratio (SNR) variation of different algorithms.
Figure 6Training loss of different algorithms.
Comparison of the relative overlap of different algorithms.
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Figure 7Comparison of segmentation accuracy of different algorithms.