The Application of Grey Relational Grade in Spinal Lesions Imaging Study

IF 1 4区 工程技术 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Grey System Pub Date : 2009-03-01 DOI:10.30016/JGS.200903.0003
Mao-Lin Chen, Hung-Ting Tu
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引用次数: 2

Abstract

Most Along with medical science progress, more complex medical imaging of physical illness can be operated and processed immediately into image. However, physical illness or whether there's any growth of bone lesions and the disease can only be found when the patients feel pain and go to the hospital for examination and scanning. Therefore, the purpose of this study was to combine AR Model and grey relational grade to analyze image of the thoracic cavity and spinal bone. It compares the spinal bone's spur lesions development and offers a more precise reference for doctors and patients’ family members. First of all, this paper removes the noise to highlight the clarity of spinal bones image. Further, it makes grey relational grade of AR-Model toward the spinal bones image classification model. Then, it compares and determines the spinal bone spur lesion with the model and acts as an inference and prevention toward spinal bone spur disease. So, this paper proposes to do AR-Model spectrum analysis toward medical images and makes each row's image into 256 gray level predictions by means of grey relational grade. According to this, spinal bone prediction model can make a comparison and identify the spinal bone image more effectively. After being simulated and verified, the design of this paper can actually provide a clearer spinal bone form and offer an effective image comparison warning.
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灰色关联度在脊柱病变影像学研究中的应用
随着医学的进步,越来越多的复杂的身体疾病的医学成像可以立即进行操作并处理成图像。但是,身体上的疾病或者是否有骨骼病变的生长和疾病,只有当患者感到疼痛并去医院检查和扫描时才能发现。因此,本研究的目的是结合AR模型和灰色关联等级对胸腔和脊柱骨的图像进行分析。比较脊柱骨刺病变的发展情况,为医生和患者家属提供更准确的参考。首先,本文去除噪声,突出脊柱骨骼图像的清晰度。进一步,对脊柱骨骼图像分类模型进行ar模型的灰色关联度划分。然后与模型比较确定脊髓骨刺病变,对脊髓骨刺疾病起到推断和预防作用。因此,本文提出对医学图像进行AR-Model光谱分析,利用灰度关联等级将每一行图像划分为256个灰度预测。据此建立的脊柱骨预测模型可以更有效地对脊柱骨图像进行比较和识别。经过仿真和验证,本文的设计确实可以提供更清晰的脊柱骨形态,并提供有效的图像比较预警。
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来源期刊
Journal of Grey System
Journal of Grey System 数学-数学跨学科应用
CiteScore
2.40
自引率
43.80%
发文量
0
审稿时长
1.5 months
期刊介绍: The journal is a forum of the highest professional quality for both scientists and practitioners to exchange ideas and publish new discoveries on a vast array of topics and issues in grey system. It aims to bring forth anything from either innovative to known theories or practical applications in grey system. It provides everyone opportunities to present, criticize, and discuss their findings and ideas with others. A number of areas of particular interest (but not limited) are listed as follows: Grey mathematics- Generator of Grey Sequences- Grey Incidence Analysis Models- Grey Clustering Evaluation Models- Grey Prediction Models- Grey Decision Making Models- Grey Programming Models- Grey Input and Output Models- Grey Control- Grey Game- Practical Applications.
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A Study of Using Analytical Hierarchy Process and Grey Relational Grade in Wine Evaluation Selection of Discrete GM Model Initial Value by Designing Calculation Program Clustering the English Reading Performances by Using GSP And GSM The Prices Prediction of Taiwan Stock via GM(1,1) Method Apply Differences Grey Prediction Methods in the Selling of LOHAS
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