The First Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi, PR China.
Liuzhou People's Hospital, Liuzhou, Guangxi, PR China.
Int Immunopharmacol. 2024 Sep 10;138:112608. doi: 10.1016/j.intimp.2024.112608. Epub 2024 Jul 8.
Abdominal aortic aneurysm (AAA) poses a significant health risk and is influenced by various compositional features. This study aimed to develop an artificial intelligence-driven multiomics predictive model for AAA subtypes to identify heterogeneous immune cell infiltration and predict disease progression. Additionally, we investigated neutrophil heterogeneity in patients with different AAA subtypes to elucidate the relationship between the immune microenvironment and AAA pathogenesis.
This study enrolled 517 patients with AAA, who were clustered using k-means algorithm to identify AAA subtypes and stratify the risk. We utilized residual convolutional neural network 200 to annotate and extract contrast-enhanced computed tomography angiography images of AAA. A precise predictive model for AAA subtypes was established using clinical, imaging, and immunological data. We performed a comparative analysis of neutrophil levels in the different subgroups and immune cell infiltration analysis to explore the associations between neutrophil levels and AAA. Quantitative polymerase chain reaction, Western blotting, and enzyme-linked immunosorbent assay were performed to elucidate the interplay between CXCL1, neutrophil activation, and the nuclear factor (NF)-κB pathway in AAA pathogenesis. Furthermore, the effect of CXCL1 silencing with small interfering RNA was investigated.
Two distinct AAA subtypes were identified, one clinically more severe and more likely to require surgical intervention. The CNN effectively detected AAA-associated lesion regions on computed tomography angiography, and the predictive model demonstrated excellent ability to discriminate between patients with the two identified AAA subtypes (area under the curve, 0.927). Neutrophil activation, AAA pathology, CXCL1 expression, and the NF-κB pathway were significantly correlated. CXCL1, NF-κB, IL-1β, and IL-8 were upregulated in AAA. CXCL1 silencing downregulated NF-κB, interleukin-1β, and interleukin-8.
The predictive model for AAA subtypes demonstrated accurate and reliable risk stratification and clinical management. CXCL1 overexpression activated neutrophils through the NF-κB pathway, contributing to AAA development. This pathway may, therefore, be a therapeutic target in AAA.
腹主动脉瘤(AAA)对健康构成重大威胁,其发生受到多种组成特征的影响。本研究旨在开发一种人工智能驱动的多组学预测模型,用于 AAA 亚型,以识别异质性免疫细胞浸润并预测疾病进展。此外,我们还研究了不同 AAA 亚型患者中性粒细胞的异质性,以阐明免疫微环境与 AAA 发病机制之间的关系。
本研究纳入了 517 例 AAA 患者,采用 k-means 算法对其进行聚类,以识别 AAA 亚型并分层风险。我们利用残差卷积神经网络 200 对 AAA 的增强 CT 血管造影图像进行注释和提取。利用临床、影像学和免疫学数据建立了 AAA 亚型的精确预测模型。我们对不同亚组中性粒细胞水平进行了比较分析,并进行了免疫细胞浸润分析,以探讨中性粒细胞水平与 AAA 之间的关系。采用定量聚合酶链反应、Western blot 和酶联免疫吸附试验探讨了 CXCL1、中性粒细胞活化与 NF-κB 通路在 AAA 发病机制中的相互作用。此外,还研究了用小干扰 RNA 沉默 CXCL1 的效果。
鉴定出两种不同的 AAA 亚型,一种临床更严重,更可能需要手术干预。CNN 可有效检测 CT 血管造影中与 AAA 相关的病变区域,所建立的预测模型对两种识别出的 AAA 亚型的患者具有出色的区分能力(曲线下面积,0.927)。中性粒细胞活化、AAA 病理、CXCL1 表达和 NF-κB 通路均呈显著相关。AAA 中 CXCL1、NF-κB、IL-1β 和 IL-8 表达上调。沉默 CXCL1 可下调 NF-κB、白细胞介素-1β 和白细胞介素-8。
AAA 亚型预测模型可进行准确、可靠的风险分层和临床管理。CXCL1 过表达通过 NF-κB 通路激活中性粒细胞,导致 AAA 发生。因此,该通路可能是 AAA 的治疗靶点。