Abstract

Residual placenta is one of the common types of postpartum complications in clinical practice. Residual placenta is also the main and most common cause of late postpartum hemorrhage. This article proposes a spatial pyramid loop module, which solves the problem that the existing network structure cannot effectively extract the semantic information and category information in the image at the same time. The spatial pyramid structure is used to effectively extract the semantic information and category information. In addition, this article proposes to use cyclic convolutional network to realize the transfer function of information at different scales, and build it in the spatial pyramid structure to further strengthen the ability to extract semantic information and category information. This article proposes a feature fusion module to solve the impact of image classification network used in the base network in the existing network structure. The attention mechanism is used to achieve the effective fusion of high-dimensional features and low-dimensional features in the base network to reduce the influence of the base network, so as to better recover the recognition and prediction results. A semantic category loss function is proposed to supervise the categories of objects in images. This article builds it on the feature layer with the smallest scale, which not only increases the intermediate supervision to make the network fully converge, but also reduces the difficulty of extracting category information, and makes full use of the information transfer function of the cyclic convolutional network. This article introduces uncertainty information into the field of image segmentation to provide the accuracy of segmentation. For the purpose of uncertainty information, this article improves the network structure. At the same time for the image segmentation task, this article improves the Bayesian cross entropy loss function. The experiment verifies the necessity of improving the Bayesian crossover function in this article and the effectiveness of the conditional random field used in this article, and also verifies the effectiveness of the proposed semi-supervised learning method.

Highlights

  • The placenta will be delivered from the birth canal 5-15 minutes after the fetus is delivered in a natural childbirth

  • In order to compare only the performance of the network when different times of downsampling are used in the spatial pyramid recurring module, the multi-scale recurrent network built in this article uses a common feature fusion module, and only cross-entropy loss is used in the training process

  • From the perspective of network structure and loss function, this article proposes a method based on multi-scale cyclic convolutional network

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Summary

Introduction

The placenta will be delivered from the birth canal 5-15 minutes after the fetus is delivered in a natural childbirth. Residual placenta leads to postpartum hemorrhage, uterine cavity infection, endometritis, and abdominal pain. If it is not treated in a timely, effective and thorough manner, adhesions and organization will occur, which will bring great pain to the patient [3]. It seriously threatens the life safety and quality of life of women of childbearing age, and even leads to secondary amenorrhea or intrauterine adhesions, which affects reproductive health [4]. It increases the medical burden and affects the postpartum rehabilitation process

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