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Computer Aided Classification using Support Vector Machines in Detecting Cysts of Jaws

机译:使用支持向量机的颌骨囊肿计算机辅助分类

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Jaw cyst is one of the most common pathology observed in the field of dentistry. Early detection of the cystic lesion will help the surgeons to take appropriate therapeutic measures after a thorough diagnostic procedure. One of the challenging task for surgeons is to differentiate the cysts from the other pathologies. The appearance of these pathologies on a radiograph is a complex and confusing task due to the close similarity between the cysts and tumors which is a difficult to differentiate just by its appearance. Hence to resolve this problem, a computer aided classification algorithm is needed for accurate classification of cysts. The work presents a new approach for the determination of the presence or severity of the jaw bone disease aiding the diagnosis and radiotherapy planning. This paper presents texture characterization for the dental panoramic images. The transposed images are analyzed using Gray level co-occurrence matrix(GLCM). The textural properties such as entropy, contrast, correlation, energy and homogeneity are determined for both cyst and non-cystic images. The results obtained are fed to the classification model to classify the given image into normal or abnormal images containing cyst. Support vector machines are chosen for image classification. Image dataset of 30 were used in training and validation. The image set consists of 20 abnormal images and 10 normal images used in image classification.
机译:颌骨囊肿是牙科领域最常见的病理学之一。早期发现囊性病变将有助于外科医生在进行全面诊断后采取适当的治疗措施。对于外科医生而言,具有挑战性的任务之一是将囊肿与其他病理学区分开来。由于囊肿与肿瘤之间的紧密相似性,仅凭其外观就难以区分,因此在射线照相上出现这些病理学是一项复杂而令人困惑的任务。因此,为了解决该问题,需要计算机辅助分类算法来对囊肿进行准确分类。这项工作为确定颌骨疾病的存在或严重程度提供了一种新方法,有助于诊断和放射治疗计划。本文提出了牙科全景图像的纹理表征。使用灰度共生矩阵(GLCM)对转置后的图像进行分析。确定囊肿和非囊肿图像的质地属性,例如熵,对比度,相关性,能量和均一性。将获得的结果输入分类模型,以将给定图像分类为包含囊肿的正常或异常图像。选择支持向量机进行图像分类。 30个图像数据集用于训练和验证。图像集包括20个异常图像和10个正常图像,用于图像分类。

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