An automated content-based segmentation framework: Application to MR images of knee for osteoarthritis research

S. Ababneh, M. Gurcan
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引用次数: 8

Abstract

To effectively diagnose and monitor the treatment of diseases such as osteoarthritis, the segmentation, processing and analysis of mass volumes of medical images is gaining high importance. In this paper, a new fully automated content-based segmentation framework is proposed. The framework is designed to be compatible with a wide variety of segmentation techniques. To this end, a novel content-based two-pass block discovery mechanism is proposed to provide full automation for image segmentation. The proposed framework uses both training and local image data and disjoint block-wise image scanning to achieve ROI and background block discovery. The detected object and background blocks are then used to initialize and support the segmentation process. The effectiveness of the proposed framework is demonstrated by performing automatic segmentation of the femur and tibia bones in knee osteoarthritis MR images with 96% accuracy. Experimental results are provided which show the effectiveness of the proposed framework.
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基于内容的自动分割框架:应用于膝关节骨关节炎的MR图像研究
为了有效地诊断和监测骨关节炎等疾病的治疗,对大量医学图像的分割、处理和分析变得越来越重要。本文提出了一种新的基于内容的全自动分词框架。该框架被设计为与各种各样的分割技术兼容。为此,提出了一种新的基于内容的两路块发现机制,实现了图像分割的完全自动化。该框架同时使用训练和局部图像数据以及不相交的逐块图像扫描来实现ROI和背景块发现。然后,检测到的对象和背景块用于初始化和支持分割过程。通过对膝关节骨关节炎MR图像中的股骨和胫骨进行自动分割,准确率达到96%,证明了所提出框架的有效性。实验结果表明了该框架的有效性。
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Organizing committee Copyright page Adaptive filtering and target detection for ultrasonic backscattered signal An automated content-based segmentation framework: Application to MR images of knee for osteoarthritis research Secure applications — Hack-proofing your app
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