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Classification of the Thyroiditis based on characteristic sonographic textural features and correlated histopathology results

机译:基于特征性超声纹理特征和相关组织病理学结果的甲状腺炎分类

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Thyroiditis is a health disorder and it refers to “inflammation of the thyroid glands”. Once a thyroid nodule has been detected (or suspected), the first test that is routinely being performed is the fine needle aspiration (FNA) biopsy (invasive). This test result is helpful in the classification of the nodule being benign or malignant with the aid of bio-markers. Another common test is the Ultrasound imaging (non-invasive). But, due to the inherent spatial limitations within the Ultrasound image, distinguishing the different pathological conditions related to Thyroiditis are challenging. The aim of this study is to classify multiple pathological conditions related to Thyroiditis by analyzing various textural image features extracted from ultrasound images. The thyroid Ultrasound images are retrospectively collected (with biopsy results) from a private scan center in Chennai, India. The image database contains thirty five Adenoma conditions, sixteen Hashimoto's conditions and twenty five normal cases. The abnormal conditions on the Ultrasound images are drawn manually by the experienced radiologist and stored as a `ground truth'. The gray-level co-occurrence matrix and the gray-level run-length features of the `hand drawn' region of interest (ROI) are extracted for each image. The features are then analyzed using the statistical unpaired two-tailed Student's t-test and classified based on the `ground truth' data. The t-test shows a significant (p<;0.001) differences between the groups. The texture features extracted from the Ultrasound images proves that the thyroid disorders such as Adenoma and Hashimoto's Thyroiditis can be distinguished from the normal using the highlighted texture features.
机译:甲状腺炎是一种健康疾病,指的是“甲状腺炎症”。一旦检测到(或怀疑)甲状腺结节,常规进行的第一个检查就是细针穿刺(FNA)活检(侵入性)。该测试结果有助于借助生物标记物将结节分类为良性或恶性。另一个常见的测试是超声成像(非侵入性)。但是,由于超声图像内在的空间局限性,区分与甲状腺炎相关的不同病理状况具有挑战性。这项研究的目的是通过分析从超声图像中提取的各种纹理图像特征,对与甲状腺炎相关的多种病理状况进行分类。甲状腺超声图像是从印度金奈的一家私人扫描中心回顾性收集的(有活检结果)。图像数据库包含35个腺瘤病,16个桥本病和25个正常病例。由经验丰富的放射科医生手动绘制超声图像上的异常情况,并将其存储为“地面真相”。对于每个图像,提取“感兴趣的手绘区域”(ROI)的灰度共现矩阵和灰度游程特征。然后使用统计不成对的两尾学生t检验对特征进行分析,并根据“地面真相”数据进行分类。 t检验显示两组之间存在显着(p <; 0.001)差异。从超声图像中提取的纹理特征证明,可以使用突出显示的纹理特征将甲状腺疾病(如腺瘤和桥本甲状腺炎)与正常人区分开。

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