Yang Wanting, Wu Wei, Wang Long, Zhang Shuming, Zhao Juanjuan, Qiang Yan
College of Information and Computer, Taiyuan University of Technology, 030000, Taiyuan, Shanxi, China.
Department of Clinical Laboratory, Affiliated People's Hospital of Shanxi Medical University, Shanxi Provincial People's Hospital, Taiyuan, Shanxi, China.
Comput Biol Med. 2023 Sep;164:107371. doi: 10.1016/j.compbiomed.2023.107371. Epub 2023 Aug 13.
In the case of specific immunotherapy regimens and access to pre-treatment CT scans, developing reliable, interpretable intelligent image biomarkers to predict efficacy is essential for physician decision-making and patient treatment selection. However, varying levels of prognosis show a similar appearance on CT scans. It becomes challenging to stratify patients by a single pre-treatment CT scan when presenting subtle differences in images for experienced experts and existing prognostic classification methods. In addition, the pattern of peri-tumoural radiological structures also determines the patient's response to ICIs. Therefore, it is essential to develop a method that focuses on the clinical priori features of the tumour edges but also makes full use of the rich information within the 3D tumour. This paper proposes a priori-guided multilevel graph transformer fusion network (PMSG-Net). Specifically, a graph convolutional network is first used to obtain a feature representation of the tumour edge, and complementary information from that detailed representation is used to enhance the global representation. In the tumour global representation branch (MSGNet), we designed the cascaded scale-enhanced swin transformer to obtain attributes of graph nodes, and efficiently learn and model spatial dependencies and semantic connections at different scales through multi-hop context-aware attention (MCA), yielding a richer global semantic representation. To our knowledge, this is the first attempt to use graph neural networks to predict the efficacy of immunotherapy, and the experimental results show that this method outperforms the current mainstream methods.
在特定免疫治疗方案以及可获取治疗前CT扫描的情况下,开发可靠、可解释的智能图像生物标志物以预测疗效对于医生决策和患者治疗选择至关重要。然而,不同预后水平在CT扫描上表现出相似外观。当为经验丰富的专家和现有预后分类方法呈现图像中的细微差异时,通过单次治疗前CT扫描对患者进行分层变得具有挑战性。此外,肿瘤周围放射学结构模式也决定了患者对免疫检查点抑制剂(ICIs)的反应。因此,开发一种既关注肿瘤边缘临床先验特征又充分利用三维肿瘤内丰富信息的方法至关重要。本文提出了一种先验引导的多级图变换器融合网络(PMSG-Net)。具体而言,首先使用图卷积网络来获取肿瘤边缘的特征表示,并利用该详细表示中的互补信息来增强全局表示。在肿瘤全局表示分支(MSGNet)中,我们设计了级联尺度增强的斯温变换器以获取图节点的属性,并通过多跳上下文感知注意力(MCA)在不同尺度上有效学习和建模空间依赖性和语义连接,从而产生更丰富的全局语义表示。据我们所知,这是首次尝试使用图神经网络来预测免疫治疗的疗效,实验结果表明该方法优于当前主流方法。