论文标题
基于成像的表示和肿瘤内异质性通过树编辑距离的分层
Imaging-based representation and stratification of intra-tumor Heterogeneity via tree-edit distance
论文作者
论文摘要
个性化医学是医学实践的未来。在肿瘤学中,肿瘤异质性评估是有效治疗计划和预测预测的关键步骤。尽管进行了新的DNA测序和分析程序,但仍需要对肿瘤表征进行非侵入性方法来影响日常常规。故意,成像纹理分析正在迅速扩展,并有望对肿瘤病变进行组织病理学评估。在这项工作中,我们提出了一种基于树的表示策略,以描述受转移性癌症影响的患者的肿瘤内异质性。我们利用从PET/CT成像中提取的放射组学信息,并提供了详尽且易于阅读的疾病扩散的摘要。我们根据分层聚类技术来利用这种新颖的患者代表性进行癌症亚型。为此,将树木之间的新基于异质性的距离定义并应用于前列腺癌的案例研究。簇解释是根据与严重程度,肿瘤负担和生物学特征一致的一致性探讨的。结果是有希望的,因为提出的方法的表现优于当前文献方法。最终,提出的方法绘制了一个通用分析框架,该框架将允许从患者的每日获得的成像数据中提取知识,并为有效的治疗计划提供见解。
Personalized medicine is the future of medical practice. In oncology, tumor heterogeneity assessment represents a pivotal step for effective treatment planning and prognosis prediction. Despite new procedures for DNA sequencing and analysis, non-invasive methods for tumor characterization are needed to impact on daily routine. On purpose, imaging texture analysis is rapidly scaling, holding the promise to surrogate histopathological assessment of tumor lesions. In this work, we propose a tree-based representation strategy for describing intra-tumor heterogeneity of patients affected by metastatic cancer. We leverage radiomics information extracted from PET/CT imaging and we provide an exhaustive and easily readable summary of the disease spreading. We exploit this novel patient representation to perform cancer subtyping according to hierarchical clustering technique. To this purpose, a new heterogeneity-based distance between trees is defined and applied to a case study of prostate cancer. Clusters interpretation is explored in terms of concordance with severity status, tumor burden and biological characteristics. Results are promising, as the proposed method outperforms current literature approaches. Ultimately, the proposed method draws a general analysis framework that would allow to extract knowledge from daily acquired imaging data of patients and provide insights for effective treatment planning.