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Segmentation and recognition of breast ultrasound images based on an expanded U-Net

Yanjun Guo, Xingguang Duan, Chengyi Wang, Huiqin Guo

2021PLoS ONE46 citationsDOIOpen Access PDF

Abstract

This paper establishes a fully automatic real-time image segmentation and recognition system for breast ultrasound intervention robots. It adopts the basic architecture of a U-shaped convolutional network (U-Net), analyses the actual application scenarios of semantic segmentation of breast ultrasound images, and adds dropout layers to the U-Net architecture to reduce the redundancy in texture details and prevent overfitting. The main innovation of this paper is proposing an expanded training approach to obtain an expanded of U-Net. The output map of the expanded U-Net can retain texture details and edge features of breast tumours. Using the grey-level probability labels to train the U-Net is faster than using ordinary labels. The average Dice coefficient (standard deviation) and the average IOU coefficient (standard deviation) are 90.5% (±0.02) and 82.7% (±0.02), respectively, when using the expanded training approach. The Dice coefficient of the expanded U-Net is 7.6 larger than that of a general U-Net, and the IOU coefficient of the expanded U-Net is 11 larger than that of the general U-Net. The context of breast ultrasound images can be extracted, and texture details and edge features of tumours can be retained by the expanded U-Net. Using an expanded U-Net can quickly and automatically achieve precise segmentation and multi-class recognition of breast ultrasound images.

Topics & Concepts

Computer scienceSegmentationArtificial intelligenceSørensen–Dice coefficientOverfittingContext (archaeology)Pattern recognition (psychology)Convolutional neural networkDiceStandard deviationImage segmentationComputer visionArtificial neural networkMathematicsStatisticsPaleontologyBiologyRadiomics and Machine Learning in Medical ImagingAI in cancer detectionAdvanced Neural Network Applications