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Analysis of Near-Infrared Image to Diagnose Maxillary Sinusitis.

机译:分析近红外图像以诊断上颌窦炎。

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摘要

Introduction: Sinusitis is one of the most common chronic illnesses. Computed tomography is the most common imaging method in sinusitis detection. Objectives: The main purpose of this study is to determine the diagnostic usage of NIR imaging in maxillary sinusitis. It is also determined which feature set produces the most efficient classification results. In addition, it is investigated whether the color normalization of the NIR images affects on the results. Results: Histogram mean, texture inertia, and texture entropy are the most efficient features in data discrimination. The best sensitivity in maxillary sinusitis detection is 76% produced by using asymmetry indicator values of histogram mean feature extracted from the original images. In addition, the discrimination functionality of the selected feature set is degraded by color normalization. Methods: After the NIR images are prepared, their regions of interest (ROI) are selected manually. Then several features are extracted from the images. The values are used to measure a feature-based asymmetry indicator according to the left and right maxillary sinuses in each image. Also, the images of test class (test set) can be classified by having the range of the asymmetry indicator for control and sever images (train set). The classification correctness metrics are calculated to evaluate the diagnostic role of NIR images in sinusitis disease. Conclusion: It is possible to detect sinusitis using NIR imaging with the sensitivity of 76%. The most effective feature for maxillary sinusitis detection is histogram mean feature. Color normalization is not recommended to be applied on the images.
机译:简介:鼻窦炎是最常见的慢性疾病之一。计算机断层扫描是鼻窦炎检测中最常见的成像方法。目的:本研究的主要目的是确定近红外成像在上颌窦炎中的诊断用途。还可以确定哪个功能集产生最有效的分类结果。此外,还研究了NIR图像的颜色归一化是否会影响结果。结果:直方图均值,纹理惯性和纹理熵是数据判别中最有效的功能。通过使用从原始图像中提取的直方图平均特征的不对称指标值,上颌窦炎检测的最佳灵敏度为76%。另外,通过颜色归一化降低了所选特征集的辨别功能。方法:准备好NIR图像后,手动选择其感兴趣区域(ROI)。然后从图像中提取几个特征。这些值用于根据每个图像中的左,右上颌窦测量基于特征的不对称指标。同样,可以通过具有用于控制图像和服务器图像的不对称指示器的范围(训练集)来对测试类别(测试集)的图像进行分类。计算分类正确性指标以评估NIR图像在鼻窦炎疾病中的诊断作用。结论:利用NIR成像可以检测鼻窦炎,灵敏度为76%。上颌窦炎检测的最有效特征是直方图均值特征。建议不要对图像应用色彩标准化。

著录项

  • 作者

    Amini, Maryamsadat.;

  • 作者单位

    University of California, Irvine.;

  • 授予单位 University of California, Irvine.;
  • 学科 Engineering Biomedical.;Health Sciences Medicine and Surgery.
  • 学位 M.S.
  • 年度 2014
  • 页码 65 p.
  • 总页数 65
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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