Semi-automatic spine extraction for disc space narrowing diagnosis

Nur Syazwani Samanu, M. A. Zulkifley, A. Hussain
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Abstract

This paper describes the development of a semi-automatic system for detection and diagnosis of vertebrae condition, focuses on cervical area. The goal of this system is to facilitate medical community to make a faster pre-screening based on the imaging modalities, especially X-ray image. The main challenges in diagnosing a disease through X-ray image are the issue of blur and noise. Therefore, to achieve this goal, a semi-automatic spine extraction to detect disc space narrowing (DSN) condition has been developed that focused on patient with back pain history. In general, this system was developed on Matlab platform that consists of four major modules, which are image enhancement, image segmentation, feature extraction and classification. Image enhancement module utilized Contrast-limited Adaptive Histogram Equalization (CLAHE) and filtering technique to improve the image quality. After that, the second module is performed to extract the desired region from the original X-ray image. Feature extraction module is then implemented to extract unique signature of the vertebrae bones based on the bone's condition. For the last module, feed-forward backpropagation artificial neural network is used to classify the existence of DSN. It needs to be trained before testing is performed so that the parameters can be tuned for optimal classification. The quantitative performance proved that the X-ray image quality has been improved and the system has managed to classify the DSN condition. Simulation results show that the proposed system provides good performance of accuracy with average of 99% for the tested X-ray images. As for future work, the system can be further improved by using more measurement points between the two neighboring vertebras.
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半自动脊柱拔除术诊断椎间盘间隙狭窄
本文介绍了一种以颈椎为重点的半自动椎体疾病检测与诊断系统的开发。该系统的目的是为了方便医学界根据成像方式,特别是x线图像,更快地进行预筛查。通过x射线图像诊断疾病的主要挑战是模糊和噪声问题。因此,为了实现这一目标,我们开发了一种半自动脊柱提取术来检测椎间盘间隙狭窄(DSN)状况,主要针对有背痛病史的患者。总体而言,本系统是在Matlab平台上开发的,主要包括图像增强、图像分割、特征提取和分类四大模块。图像增强模块利用对比度有限的自适应直方图均衡化(CLAHE)和滤波技术来提高图像质量。之后,执行第二模块,从原始x射线图像中提取所需区域。然后实现特征提取模块,根据椎骨的状态提取椎骨的唯一特征。最后一个模块采用前馈反向传播人工神经网络对DSN的存在性进行分类。在执行测试之前需要对其进行训练,以便对参数进行调优以实现最佳分类。定量性能证明x射线图像质量得到了提高,系统成功地对DSN条件进行了分类。仿真结果表明,该系统对测试的x射线图像具有良好的精度,平均达到99%。对于未来的工作,可以通过在相邻的两个椎体之间使用更多的测点来进一步改进系统。
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