Abstract

Diagnosing liver steatosis is an essential precaution for detecting hepatocirrhosis and liver cancer in the early stages. However, automatic diagnosis of liver steatosis from ultrasound (US) images remains challenging due to poor visual quality from various origins, such as speckle noise and blurring. In this paper, we propose a fully automated liver steatosis prediction model using three deep learning neural networks. As a result, liver steatosis can be automatically detected with high accuracy and precision. First, transfer learning is used for semantically segmenting the liver and kidney (L-K) on parasagittal US images, and then cropping the L-K area from the original US images. The second neural network also involves semantic segmentation by checking the presence of a ring that is typically located around the kidney and cropping of the L-K area from the original US images. These cropped L-K areas are inputted to the final neural network, SteatosisNet, in order to grade the severity of fatty liver disease. The experimental results demonstrate that the proposed model can predict fatty liver disease with the sensitivity of 99.78%, specificity of 100%, PPV of 100%, NPV of 99.83%, and diagnostic accuracy of 99.91%, which is comparable to the common results annotated by medical experts.

Highlights

  • Diagnosis and treatment of liver steatosis, defined as the abnormal accumulation of fat in more than 5% of liver cells, are critically important [1] to prevent further progression of liver diseases, such as hepatocirrhosis and hepatocellular carcinoma [2,3,4].Ultrasound (US) is the most widely used imaging technique, for diagnosing liver steatosis [5,6]

  • These cropped liver and kidney (L-K) areas are inputted to the final neural network, SteatosisNet, in order to grade the severity of fatty liver disease

  • We present very promising results regarding the accuracy, sensitivity, and specificity of the proposed model using a dataset from the Samsung Medical Center (SMC) and the of the proposed model using a dataset from the Samsung Medical Center (SMC) and the widelyadopted adopted Byra

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Summary

Introduction

Diagnosis and treatment of liver steatosis, defined as the abnormal accumulation of fat in more than 5% of liver cells, are critically important [1] to prevent further progression of liver diseases, such as hepatocirrhosis and hepatocellular carcinoma [2,3,4].Ultrasound (US) is the most widely used imaging technique, for diagnosing liver steatosis [5,6]. In addition to reducing speckle noise, much work has been carried out to assess the level of liver steatosis more precisely by applying complicated algorithms, statistical models, or image-processing techniques to US images. The hepatorenal index (HRI) and the gray-level co-occurrence matrix (GLCM) are the most commonly known accurate, simple, and cost-effective tools used in the screening for liver steatosis [16,17,18,19]. These methods significantly depend on the skill of choosing the region of interest (ROI) and the experience of physicians performing the examination

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