Ruan Jingxuan, Wu Yaping, Wang Haiyan, Huang Zhenxing, Liu Ziwei, Yang Xinlang, Yang Yongfeng, Zheng Hairong, Liang Dong, Wang Meiyun, Hu Zhanli
Research Center for Medical AI, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.
Department of Medical Imaging, Henan Provincial People's Hospital & People's Hospital of Zhengzhou University, Zhengzhou, China.
Med Phys. 2025 Apr;52(4):2340-2355. doi: 10.1002/mp.17568. Epub 2024 Dec 16.
Positron emission tomography (PET) imaging is widely used to detect focal lesions or diseases and to study metabolic abnormalities between organs. However, analyzing organ correlations alone does not fully capture the characteristics of the metabolic network. Our work proposes a graph-based analysis method for quantifying the topological properties of the network, both globally and at the nodal level, to detect systemic or single-organ metabolic abnormalities caused by diseases such as lung cancer.
We used whole-body F-fluorodeoxyglucose (F-FDG) standardized uptake value (SUV) images from 32 lung cancer patients and 20 healthy controls to construct two-organ glucose metabolism correlation networks at the population level. We calculated five global measures and three nodal centralities for these networks to explore the small-world, rich-club and modular organization in the metabolic network. Additionally, we analyzed the preference for connections significantly affected by lung cancer by dividing organs according to system level and spatial location.
In lung cancer patients, functional segregation in metabolic networks increased (increased , , and , t < 0), whereas functional integration decreased (increased , t < 0, and decreased , t > 0), indicating more localized and dispersed metabolic activities. At the nodal level, certain organs, such as the pancreas, liver, heart, and right kidney, were no longer hubs in lung cancer patients (decreased nodal centralities, t > 0), whereas the left adrenal gland, left kidney, and left lung showed significantly increased centralities (increased nodal centralities, t < 0). This change suggests compensatory effects between organs. Connections between the nervous and urinary systems, as well as between the upper and middle organs, were more strongly affected by lung cancer (p < 0.05).
Our study demonstrates the utility of graph theory in analyzing PET imaging data to uncover metabolic network abnormalities. We identified significant topological changes and shifts in nodal roles in lung cancer patients, indicating a shift toward localized and segregated metabolic activities. These findings emphasize the need to consider systemic interactions and specific organ connections affected by disease. The impact on connections between the nervous and urinary systems and between the upper and middle regions underscores the modular nature of organ interactions, offering insights into disease mechanisms and potential therapeutic targets.
正电子发射断层扫描(PET)成像广泛用于检测局灶性病变或疾病,并研究器官之间的代谢异常。然而,仅分析器官相关性并不能完全捕捉代谢网络的特征。我们的工作提出了一种基于图的分析方法,用于在全局和节点层面量化网络的拓扑特性,以检测由肺癌等疾病引起的全身或单器官代谢异常。
我们使用了32例肺癌患者和20名健康对照的全身F-氟脱氧葡萄糖(F-FDG)标准化摄取值(SUV)图像,在群体水平构建双器官葡萄糖代谢相关网络。我们计算了这些网络的五个全局指标和三个节点中心性,以探索代谢网络中的小世界、富俱乐部和模块化组织。此外,我们根据系统水平和空间位置对器官进行划分,分析了受肺癌显著影响的连接偏好。
在肺癌患者中,代谢网络中的功能分离增加( 、 和 增加,t<0),而功能整合减少( 增加,t<0, 减少,t>0),表明代谢活动更加局部化和分散。在节点层面,某些器官,如胰腺、肝脏、心脏和右肾,在肺癌患者中不再是枢纽(节点中心性降低,t>0),而左肾上腺、左肾和左肺的中心性显著增加(节点中心性增加,t<0)。这种变化表明器官之间的代偿作用。神经系统与泌尿系统之间以及上半身与中半身器官之间的连接受肺癌影响更大(p<0.05)。
我们的研究证明了图论在分析PET成像数据以揭示代谢网络异常方面的实用性。我们确定了肺癌患者中显著的拓扑变化和节点角色的转变,表明向局部化和分离的代谢活动转变。这些发现强调了考虑疾病影响的全身相互作用和特定器官连接的必要性。对神经系统与泌尿系统之间以及上半身与中半身区域之间连接的影响突出了器官相互作用的模块化性质,为疾病机制和潜在治疗靶点提供了见解。