Abstract

Malignant lesions are a huge threat to human health and have a high mortality rate. Locating the contour of organs is a preparation step, and it helps doctors diagnose correctly. Therefore, there is an urgent clinical need for a segmentation model specifically designed for medical imaging. However, most current medical image segmentation models directly migrate from natural image segmentation models, thus ignoring some characteristic features for medical images, such as false positive phenomena and the blurred boundary problem in 3D volume data. The research on organ segmentation models for medical images is still challenging and demanding. As a consequence, we redesign a 3D convolutional neural network (CNN) based on 3D U-Net and adopted the render method from computer graphics for 3D medical images segmentation, named Render 3D U-Net. This network adapts a subdivision-based point-sampling method to replace the original upsampling method for rendering high-quality boundaries. Besides, Render 3D U-Net integrates the point-sampling method into 3D ANU-Net architecture under deep supervision. Meanwhile, to reduce false positive phenomena in clinical diagnosis and to achieve more accurate segmentation, Render 3D U-Net specially designs a module for screening false positive. Finally, three public challenge datasets (MICCAI 2017 LiTS, MICCAI 2019 KiTS, and ISBI 2019 segTHOR) were selected as experiment datasets and to evaluate the performance on target organs. Compared with other models, Render 3D U-Net improved the performance on both overall organ and boundary in the CT image segmentation tasks, including in the liver, kidney, and heart.

Highlights

  • Cancer is one of the most fatal and widespread diseases worldwide

  • The LiTS [36] dataset is from the Liver Tumor Segmentation Challenge, which was held in MICCAI 2017

  • The experiments results are summarized in the following table, where DS means deep supervision, HD means Hausdorff distance

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Summary

Introduction

Cancer is one of the most fatal and widespread diseases worldwide. Patients can greatly extend their survival time and increase their survival rate with the help of early detection. Physicians make clinical diagnosis on patients through the results of their CT images.due to the uneven regional distribution of medical resources, physicians with the abovementioned diagnostic capabilities show obvious uneven distribution. Patients in rural areas can only go to central cities for disease diagnosis and treatment, which greatly increases the work intensity of these physicians. The complexity of the medical image itself and the high requirements for accuracy of the segmentation result require physicians to perform detailed analysis for a long time. This contradiction has become one of the most urgent problems in cancer diagnosis worldwide.

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