Integrated analysis of spatial transcriptomics and CT phenotypes for unveiling the novel molecular characteristics of recurrent and non-recurrent high-grade serous ovarian cancer

IF 9.5 2区 医学 Q1 MEDICINE, RESEARCH & EXPERIMENTAL Biomarker Research Pub Date : 2024-08-12 DOI:10.1186/s40364-024-00632-7
Hye-Yeon Ju, Seo Yeon Youn, Jun Kang, Min Yeop Whang, Youn Jin Choi, Mi-Ryung Han
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Abstract

High-grade serous ovarian cancer (HGSOC), which is known for its heterogeneity, high recurrence rate, and metastasis, is often diagnosed after being dispersed in several sites, with about 80% of patients experiencing recurrence. Despite a better understanding of its metastatic nature, the survival rates of patients with HGSOC remain poor. Our study utilized spatial transcriptomics (ST) to interpret the tumor microenvironment and computed tomography (CT) to examine spatial characteristics in eight patients with HGSOC divided into recurrent (R) and challenging-to-collect non-recurrent (NR) groups. By integrating ST data with public single-cell RNA sequencing data, bulk RNA sequencing data, and CT data, we identified specific cell population enrichments and differentially expressed genes that correlate with CT phenotypes. Importantly, we elucidated that tumor necrosis factor-α signaling via NF-κB, oxidative phosphorylation, G2/M checkpoint, E2F targets, and MYC targets served as an indicator of recurrence (poor prognostic markers), and these pathways were significantly enriched in both the R group and certain CT phenotypes. In addition, we identified numerous prognostic markers indicative of nonrecurrence (good prognostic markers). Downregulated expression of PTGDS was linked to a higher number of seeding sites (≥ 3) in both internal HGSOC samples and public HGSOC TCIA and TCGA samples. Additionally, lower PTGDS expression in the tumor and stromal regions was observed in the R group than in the NR group based on our ST data. Chemotaxis-related markers (CXCL14 and NTN4) and markers associated with immune modulation (DAPL1 and RNASE1) were also found to be good prognostic markers in our ST and radiogenomics analyses. This study demonstrates the potential of radiogenomics, combining CT and ST, for identifying diagnostic and therapeutic targets for HGSOC, marking a step towards personalized medicine.
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综合分析空间转录组学和 CT 表型,揭示复发性和非复发性高级别浆液性卵巢癌的新分子特征
高分化浆液性卵巢癌(HGSOC)以其异质性、高复发率和转移性而闻名,通常在分散于多个部位后被确诊,约80%的患者会出现复发。尽管人们对其转移性有了更深入的了解,但 HGSOC 患者的生存率仍然很低。我们的研究利用空间转录组学(ST)解读肿瘤微环境,并利用计算机断层扫描(CT)检查八名HGSOC患者的空间特征,这些患者被分为复发组(R)和具有挑战性的非复发组(NR)。通过将 ST 数据与公共单细胞 RNA 测序数据、大量 RNA 测序数据和 CT 数据整合,我们确定了与 CT 表型相关的特定细胞群富集和差异表达基因。重要的是,我们阐明了肿瘤坏死因子-α通过NF-κB、氧化磷酸化、G2/M检查点、E2F靶点和MYC靶点的信号转导是复发的指标(不良预后标志物),这些通路在R组和某些CT表型中都显著富集。此外,我们还发现了许多预后标志物,这些标志物可指示不再复发(良好预后标志物)。在 HGSOC 内部样本以及 HGSOC TCIA 和 TCGA 公开样本中,PTGDS 的表达下调与较多的播种位点(≥ 3 个)有关。此外,根据我们的 ST 数据,R 组肿瘤和基质区域的 PTGDS 表达低于 NR 组。在我们的ST和放射基因组学分析中还发现,与趋化相关的标记物(CXCL14和NTN4)和与免疫调节相关的标记物(DAPL1和RNASE1)也是良好的预后标记物。这项研究证明了结合 CT 和 ST 的放射基因组学在确定 HGSOC 诊断和治疗目标方面的潜力,标志着向个性化医疗迈出了一步。
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来源期刊
Biomarker Research
Biomarker Research Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
15.80
自引率
1.80%
发文量
80
审稿时长
10 weeks
期刊介绍: Biomarker Research, an open-access, peer-reviewed journal, covers all aspects of biomarker investigation. It seeks to publish original discoveries, novel concepts, commentaries, and reviews across various biomedical disciplines. The field of biomarker research has progressed significantly with the rise of personalized medicine and individual health. Biomarkers play a crucial role in drug discovery and development, as well as in disease diagnosis, treatment, prognosis, and prevention, particularly in the genome era.
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