Mikhail S. Maltsev, A. A. Trukhin, A. V. Manaev, M. V. Reinberg
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Currently, there is no method that is simultaneously effective and easy to perform for predicting the recurrence of differentiated thyroid cancer. \nAIM: The aim of the study was to develop a technique for extracting and computing textural features of the I-131 accumulation region using a single-photon emission tomography system corresponding to differentiated thyroid cancer tissue. \nMATERIALS AND METHODS: A retrospective analysis of single-photon emission tomography combined with X-ray computed tomography of the neck and thorax of 23 patients was conducted. Regions of interest, including foci of I-131 accumulation in the primary tumor bed, regional and distant metastases, were delineated in Xeleris 4DR software. The obtained mask with the original image was processed in a program written with the help of the Matlab package, which localizes the foci. The textural features of foci are calculated based on the obtained spatial adjacency matrix. This matrix shows how often pixels with certain gray scale brightness values occur in an image. Therefore, the features based on the spatial adjacency matrix reflect the frequency distribution of different pixel neighborhoods in a given context. \nRESULTS: An algorithm for constructing three-dimensional matrices of a radiation source surrounded by tissue of differentiated thyroid cancer was developed. The textural features of three-dimensional matrices were investigated. It was demonstrated that there are tendencies for differences in texture features corresponding to the ordering of pixel values and image contrast. The values of the obtained features obey the lognormal distribution. \nCONCLUSIONS: An algorithm for extracting textural features of I-131 accumulation foci allows post-therapy single-photon emission tomography images combined with X-ray computed tomography to be analyzed for the likelihood of recurrence of differentiated thyroid cancer.","PeriodicalId":34831,"journal":{"name":"Digital Diagnostics","volume":" 4","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-07-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Emission textural features I-131 of differentiated thyroid cancer tissue\",\"authors\":\"Mikhail S. Maltsev, A. A. Trukhin, A. V. Manaev, M. V. 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引用次数: 0
摘要
背景:分化型甲状腺癌的治疗包括放射碘治疗后的单光子发射断层扫描和 X 射线计算机断层扫描。尽管手术和放射性碘治疗反应良好,但仍有一些病例出现复发,导致8%的病例预后不良[1]。对残留甲状腺组织和转移灶中的I-131分布进行初步分析,可以估计分化癌复发的概率。目前,预测分化型甲状腺癌复发还没有一种既有效又简便的方法。目的:本研究旨在开发一种技术,利用单光子发射断层成像系统提取和计算分化型甲状腺癌组织相应的 I-131 累积区的纹理特征。材料与方法:研究人员对 23 名患者的颈部和胸部单光子发射断层扫描结合 X 射线计算机断层扫描进行了回顾性分析。在 Xeleris 4DR 软件中划定了感兴趣的区域,包括原发肿瘤床、区域和远处转移灶的 I-131 聚集灶。利用 Matlab 软件包编写的程序对获得的掩膜和原始图像进行处理,从而确定病灶的位置。病灶的纹理特征是根据获得的空间邻接矩阵计算出来的。该矩阵显示了具有特定灰度亮度值的像素在图像中出现的频率。因此,基于空间邻接矩阵的特征反映了不同像素邻域在给定上下文中的频率分布。结果:开发出了一种构建分化型甲状腺癌组织周围辐射源三维矩阵的算法。研究了三维矩阵的纹理特征。结果表明,与像素值排序和图像对比度相对应的纹理特征存在差异趋势。获得的特征值服从对数正态分布。结论通过一种提取 I-131 积聚灶纹理特征的算法,可以结合 X 射线计算机断层扫描对治疗后的单光子发射断层扫描图像进行分析,以确定分化型甲状腺癌复发的可能性。
Emission textural features I-131 of differentiated thyroid cancer tissue
BACKGROUND: The management of differentiated thyroid cancer includes single-photon emission tomography combined with X-ray computed tomography after radioiodine therapy. Despite a good response to surgery and radioiodine therapy, recurrence is noted in some cases, leading to an unfavorable prognosis in 8% of cases [1]. A preliminary analysis of the distribution of I-131 in residual thyroid tissues and foci of metastasis allows for the estimation of the probability of differentiated cancer recurrence. Currently, there is no method that is simultaneously effective and easy to perform for predicting the recurrence of differentiated thyroid cancer.
AIM: The aim of the study was to develop a technique for extracting and computing textural features of the I-131 accumulation region using a single-photon emission tomography system corresponding to differentiated thyroid cancer tissue.
MATERIALS AND METHODS: A retrospective analysis of single-photon emission tomography combined with X-ray computed tomography of the neck and thorax of 23 patients was conducted. Regions of interest, including foci of I-131 accumulation in the primary tumor bed, regional and distant metastases, were delineated in Xeleris 4DR software. The obtained mask with the original image was processed in a program written with the help of the Matlab package, which localizes the foci. The textural features of foci are calculated based on the obtained spatial adjacency matrix. This matrix shows how often pixels with certain gray scale brightness values occur in an image. Therefore, the features based on the spatial adjacency matrix reflect the frequency distribution of different pixel neighborhoods in a given context.
RESULTS: An algorithm for constructing three-dimensional matrices of a radiation source surrounded by tissue of differentiated thyroid cancer was developed. The textural features of three-dimensional matrices were investigated. It was demonstrated that there are tendencies for differences in texture features corresponding to the ordering of pixel values and image contrast. The values of the obtained features obey the lognormal distribution.
CONCLUSIONS: An algorithm for extracting textural features of I-131 accumulation foci allows post-therapy single-photon emission tomography images combined with X-ray computed tomography to be analyzed for the likelihood of recurrence of differentiated thyroid cancer.