Abstract

Medical image segmentation is a key technology for image guidance. Therefore, the advantages and disadvantages of image segmentation play an important role in image-guided surgery. Traditional machine learning methods have achieved certain beneficial effects in medical image segmentation, but they have problems such as low classification accuracy and poor robustness. Deep learning theory has good generalizability and feature extraction ability, which provides a new idea for solving medical image segmentation problems. However, deep learning has problems in terms of its application to medical image segmentation: one is that the deep learning network structure cannot be constructed according to medical image characteristics; the other is that the generalizability y of the deep learning model is weak. To address these issues, this paper first adapts a neural network to medical image features by adding cross-layer connections to a traditional convolutional neural network. In addition, an optimized convolutional neural network model is established. The optimized convolutional neural network model can segment medical images using the features of two scales simultaneously. At the same time, to solve the generalizability problem of the deep learning model, an adaptive distribution function is designed according to the position of the hidden layer, and then the activation probability of each layer of neurons is set. This enhances the generalizability of the dropout model, and an adaptive dropout model is proposed. This model better addresses the problem of the weak generalizability of deep learning models. Based on the above ideas, this paper proposes a medical image segmentation algorithm based on an optimized convolutional neural network with adaptive dropout depth calculation. An ultrasonic tomographic image and lumbar CT medical image were separately segmented by the method of this paper. The experimental results show that not only are the segmentation effects of the proposed method improved compared with those of the traditional machine learning and other deep learning methods but also the method has a high adaptive segmentation ability for various medical images. The research work in this paper provides a new perspective for research on medical image segmentation.

Highlights

  • At present, the demand for medical imaging in imageguided radiotherapy, image-guided surgery, image-guided interventional therapy, and image-guided navigation is increasing, which promotes the research and development of medical imaging technology and image processing technology [1, 2]. e accuracy and efficiency of image-guided surgery is much higher than that of traditional surgical procedures, and it can reduce the risk of surgery

  • E medical image segmentation methods based on traditional machine learning mainly include the following: Rodrigues et al [10] proposed to use the support vector machine method to detect the region of interest and used the Adaboosting weak classifier to select the features on the region of interest

  • It shows that the convolutional neural network model that has not been optimized has a significant improvement over traditional machine learning methods. is is mainly because the deep learning model can better train the experimental data and obtain a more reasonable and reliable image segmentation model

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Summary

Introduction

The demand for medical imaging in imageguided radiotherapy, image-guided surgery, image-guided interventional therapy, and image-guided navigation is increasing, which promotes the research and development of medical imaging technology and image processing technology [1, 2]. e accuracy and efficiency of image-guided surgery is much higher than that of traditional surgical procedures, and it can reduce the risk of surgery. Guo et al [15] proposed a deformation method based on dictionary learning, which improved the learning strategy on the existing dictionary learning model and performed image segmentation It has achieved certain effects in medical image segmentation, but the classification accuracy is low. Hu et al [24] proposed a new automatic liver segmentation method based on a deep three-dimensional convolutional neural network and global optimization of the surface evolution. Based on the above ideas, this paper proposes a medical image segmentation algorithm based on optimized convolutional neural network-adaptive dropout depth calculation.

Optimized Convolutional Neural Network Model
Depth Calculation Model Based on Adaptive Dropout
Conclusion
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