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Computer-Aided Segmentation of Liver Lesions in CT Scans Using Cascaded Convolutional Neural Networks and Genetically Optimised Classifier

机译:CT扫描中肝脏病变的计算机辅助分段使用级联卷积神经网络和转基优化分类器

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摘要

Abdominal CT scans have been widely studied and researched by medical professionals in recent years. CT scans have proved effective for the task of detection of liver abnormalities in patients. Computer-aided automatic segmentation of the liver can serve as an elementary step for radiologists to trace anomalies in the liver. In this paper, we have explored deep learning techniques first and foremost for the extraction of liver from the abdominal CT scan and then, consequently, to segment the lesions from a tumour-ridden liver. A cascaded model of convolutional neural networks is used to segment lesions once tumour has been detected in the liver by GA-ANN which has been fed textural liver features using LTEM for its classification procedure. A high DICE index has been obtained of 0.9557 for liver segmentation and 0.6976 for lesion segmentation.
机译:近年来,腹部CT扫描已被医学专业人员普遍研究和研究。 CT扫描已证明有效地检测患者肝异常的任务。肝脏的计算机辅助自动分割可以作为放射学家在肝脏中追踪异常的基本步骤。在本文中,我们首先探索了深度学习技术,并且从腹部CT扫描中提取肝脏,然后将病变分成肿瘤脊椎肝脏。一旦通过GA-ANN在肝脏在肝脏中检测到肿瘤,患有肿瘤的级联模型将用于分段病变,这已经通过LTEM进行了局部肝脏特征,以其对其分类程序。对于肝脏分段,可获得高骰子指数为0.9557,对于病变分割为0.6976。

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