Abstract

In obstetrics, ultrasound is used for assessment of fetal development during pregnancy. The images generated by ultrasound are used to obtain measurements of fetal head length, body size, and the analysis of fetal movements, to identify and prevent the onset of congenital disease. This work presents the development of a new method for the segmentation of two-dimensional ultrasound images of fetal skulls based on a V-Net architecture called Fully Convolutional Neural Network - Combination (VNet-c). We created a new combination of strategies using a 3D V-Net as base, such as pre-processing, use of Batch Normalization and Dropout, and evaluation of distinct activation layers, activation function, data augmentation, loss function, and network depth. The computational results reveal the feasibility of the proposal in the correct segmentation of fetal skulls and head circumference measurements, reaching up to 97.91% of correctness, overcoming states-of-the-art methods.

Highlights

  • Ultrasound is a pathology diagnosis method that uses ultrasonic waves for real-time imaging

  • The rest of this article is organized as follows: in Section II, we show a review of the related works that use a Convolutional Neural Network to solve segmentation problems

  • PROPOSED ARCHITECTURE: VNET-C We propose a new architecture for automatic segmentation of fetal skulls in two-dimensional (2D) ultrasound images, and to recognize and measure the circumference of fetal skulls, the Fully Convolutional Neural Network - Combination (VNet-c)

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Summary

INTRODUCTION

Ultrasound is a pathology diagnosis method that uses ultrasonic waves for real-time imaging. Author et al.: Preparation of Papers for IEEE TRANSACTIONS and JOURNALS proven effective [9] It is an architecture based on the structure of the mammalian visual cortex, which has become popular and successful in many tasks, as visual recognition and object detection Faster-RCNN [10], image classification GoogLeNet [11], and image segmentation [12]. In this sense, this work proposes developing a new method for the automatic segmentation of fetal skulls in twodimensional (2D) ultrasound images.

RELATED WORKS
V-NET FULLY CONVOLUTIONAL NEURAL NETWORK
PROPOSED ARCHITECTURE
PRE-PROCESSING
COMPARATIVE ANALYSIS
Method
Findings
CONCLUSION
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