分形放射组学作为CT和MRI肿瘤图像的复杂性分析

A. Barucci, D. Farnesi, F. Ratto, S. Pelli, R. Pini, R. Carpi, M. Esposito, M. Olmastroni, C. Romei, A. Taliani, M. Materassi
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引用次数: 4

摘要

癌症是全球第二大死因。早期诊断可以允许干预以降低死亡率,但由于癌症复杂的结构和不同肿瘤之间以及每个病变内的空间异质性,使用常规成像技术很难将其与健康组织区分开来。其复杂性的量化可以作为对抗这种疾病的预测工具。近年来,由于放射组学(Radiomics)从图像中提取特征,临床成像可以实现这种量化。本研究采用箱形计数法,对不同类型肿瘤的CT和MR图像的分形维数(FD)和空隙度$(\pmb{L})$进行了检测。我们的目标是强调基于分形分析的特征的潜力,以获得能够检测肿瘤空间复杂性和异质性的新指标。结果表明,FD和$\pmb{L}$都显示出与放射组学估计的复杂性与潜在生物学模型之间缺乏联系有关的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fractal-Radiomics as Complexity Analysis of CT and MRI Cancer Images
Cancer is the second leading cause of death globally. Early diagnosis can allow intervention to reduce mortality but due to cancer complex structure and spatial heterogeneity among different tumors and within each lesion, it is difficult to differentiate it from healthy tissue using conventional imaging techniques. Quantification of its complexity can be a prognostic tool for fighting this disease. In recent years, clinical imaging allows this quantification thanks to Radiomics, which extracts features from images. In this study, Fractal Dimension (FD) and Lacunarity $(\pmb{L})$ in computed tomography (CT) and magnetic resonance (MR) images for different kinds of cancer were examined using box counting method. Our aim is to highlight the potentiality of features based on fractal analysis, in order to obtain new indicators able to detect tumor spatial complexity and heterogeneity. The results indicated that both FD and $\pmb{L}$ show problems linked to the lack of connection between complexity estimated with Radiomics and the underlying biological model.
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