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An Automatic Segmentation Method for the Measurement of the Functional Volume of Oncological Lesions on MR ADC Maps

机译:用于测量ADC MR MR型肿瘤内病变功能体积的自动分段方法

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Human cancers frequently display intra-tumor phenotypic heterogeneity, whose nature can have profound implications both for tumor development and therapeutic outcomes. Some recent research efforts have been devoted to develop advanced image processing methods able to extract imaging descriptors characterizing such intra-tumor phenotypic heterogeneity. However, most methods need to accurately define the lesion volume in order to extract imaging descriptors. This work aims at assessing a novel segmentation method to measure the functional volume of lesions on MR ADC maps. The method was validated in advanced breast cancer patients addressed to Neoadjuvant Chemotherapy and surgical intervention, undergoing pre-treatment FDG-PET and multi-parametric MR studies. PET metabolic volume (MTV), SUV_(mean), SUV_(max), and Total Lesion Glycolysis (TLG) of lesions were measured using an already validated segmentation algorithm [Gallivanone et al., J. Instr. 2016]. The MR functional volume of lesions segmented on the ADC map resulted directly correlated to PET MTV. We defined a new parameter characterizing the MR total diffusion of lesions, the Total Lesion Diffusion (TLD) that resulted directly correlated to PET TLG. Furthermore, we assessed an inverse correlation between SUV_(max) and ADC_(min) within the PET and MR functional volumes, respectively. Textural indexes were also evaluated. Correlations (p<0.05) were found among the textural image descriptors related to the spatial distribution of the signal extracted within the PET and MR functional volumes. In conclusion, our segmentation method is effective to define the functional volume of lesions on ADC maps.
机译:人类癌症经常展示肿瘤内表型异质性,其性质可以对肿瘤发育和治疗结果的性质产生深远的影响。最近的一些研究工作已经致力于开发能够提取表征这种肿瘤内型异质性的成像描述符的高级图像处理方法。然而,大多数方法需要准确地定义病变体积以提取成像描述符。这项工作旨在评估新的分段方法,以测量ADC MAR地图上的病变功能体积。该方法验证了乳腺癌患者,涉及新辅助化疗和手术干预,进行预处理FDG-PET和多参数研究。使用已经验证的分割算法测量病变的宠物代谢体积(MTV),SUV_(平均值),SUV_(MAX)和总损伤糖酵解(TLG)[Gallivanone等,J. Instr。 2016]。在ADC地图上分段的病变MR功能体积直接相关与PET MTV相关。我们定义了一种新参数,其表征病变先生的总扩散,总病变扩散(TLD)直接与PET TLG相关。此外,我们分别评估了PET和MR功能卷内的SUV_(MAX)和ADC_(MIN)之间的反向相关性。还评估了纹理指标。在与PET内提取的信号的空间分布相关的纹理图像描述符中,发现相关性(P <0.05)。总之,我们的分段方法有效地定义ADC地图上的病变功能体积。

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