Efficient Region of Interest Detection for Liver Segmentation using 3D CT Scans

Anura Hiraman, Serestina Viriri, M. V. Gwetu
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引用次数: 4

Abstract

Deep learning has become a methodology of choice in medical imaging; one of the applications being classification tasks. The research presented in this paper aims to obtain a region of interest for liver segmentation with the aid of a convolutional neural network to classify 2D slices of a 3D CT volume. This is done by classification of slices to detect slices containing the pelvis and chest so that they can be removed while maintaining the abdomen within which the liver occurs. The presented approach is evaluated on the Medical Image Computing and Computer Assisted Intervention (MICCAI) 2007 grand challenge datasets and the evaluation metrics used are accuracy, recall and precision. The presented approach proved to perform well and the classification models achieved an accuracy rate of 0.99 for pelvis slice classification and 0.97 for chest slice classification.
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基于三维CT扫描的高效兴趣区域检测肝脏分割
深度学习已经成为医学成像的首选方法;其中一个应用是分类任务。本文的研究旨在借助卷积神经网络对三维CT体的二维切片进行分类,从而获得肝脏分割的兴趣区域。这是通过切片分类来完成的,以检测包含骨盆和胸部的切片,以便在保留肝脏所在的腹部的同时将其移除。在医学图像计算和计算机辅助干预(MICCAI) 2007大挑战数据集上对该方法进行了评估,使用的评估指标是准确率、召回率和精密度。该方法取得了较好的效果,骨盆切片分类准确率为0.99,胸片分类准确率为0.97。
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