Combined CNN and Pixel Feature Image for Fatty Liver Ultrasound Image Classification

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Abstract

Recent revolutionary results of deep learning indicate the advent of reliable classifiers to perform difficult tasks in medical diagnosis. Fatty liver is a common liver disease, and it is also one of the major challenges people face in disease prevention. It will cause many complications, which need to be found and treated in time. In the field of automatic diagnosis of fatty liver ultrasound images, there are problems of less data amount, and the pathological images of different severity are similar. Therefore, this paper proposes a classification method through combining convolutional neural network with the differential image patches based on pixel-level features for fatty liver ultrasonic images. It can automatically diagnose the ultrasonic images of normal liver, low-grade fatty liver, moderate grade fatty liver, and severe fatty liver. The proposed method not only solves the problem of less data amount but also improves the accuracy of classification. Compared with other deep learning methods and traditional methods, the experimental results show that our method has better accuracy than other classification methods.

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Zhu, H., Liu, Y., Gao, X., & Zhang, L. (2022). Combined CNN and Pixel Feature Image for Fatty Liver Ultrasound Image Classification. Computational and Mathematical Methods in Medicine, 2022. https://doi.org/10.1155/2022/9385734

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