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Development of a tool for automatic classification of intratumoral heterogeneity of lung cancers based on PET/CT intensity values

机译:基于PET / CT强度值的肺癌肿瘤内异质性自动分类工具的开发

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Intratumoral heterogeneity, typical of solid tumors, results from the coexistence of various subpopulations of tumor cells with different biological characteristics. The objective of this work was to develop an algorithm for the analysis and classification of intratumoral heterogeneity in lung cancers. The classification algorithm was based on features obtained from PET/CT images of the tumors. Delimited regions containing the tumors were defined by experience observers, who also classified each tumor regarding its degree of heterogeneity using a scale of four levels for heterogeneity. Features were created based on the joint histogram built from CT and PET data, which were then used to implement two classifier algorithms: one ordinal regression exploiting the four levels of heterogeneity and a logistic regression checking only two. Statistical analysis was carried out using IBM-SPSS Statistics 20 with a level of significance of 0.05. The models developed show good accuracy, mainly the binary classification algorithm (90%).
机译:实体瘤中典型的肿瘤内异质性是由于具有不同生物学特征的肿瘤细胞的各种亚群共存所致。这项工作的目的是开发一种用于分析和分类肺癌内异质性的算法。分类算法基于从肿瘤的PET / CT图像获得的特征。经验丰富的观察者定义了包含肿瘤的有限区域,观察者还根据异质性的四个等级对每个肿瘤的异质性进行了分类。基于从CT和PET数据构建的联合直方图创建要素,然后将其用于实现两种分类器算法:一种利用四个异质性水平进行的有序回归,以及仅对两个异质性进行逻辑对数回归。使用IBM-SPSS Statistics 20进行统计分析,显着性水平为0.05。所开发的模型显示出良好的准确性,主要是二进制分类算法(90%)。

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