基于血液的液体活检分析可溶性免疫检查点和细胞因子识别不同的神经内分泌肿瘤。

IF 11.4 1区 医学 Q1 ONCOLOGY
Pablo Mata-Martínez, Lucía Celada, Francisco J Cueto, Gonzalo Sáenz de Santa María, Jaime Fernández, Verónica Terrón-Arcos, Nuria Valdés, Vanesa García Moreira, María Isabel Enguita Del Toro, Eduardo López-Collazo, María-Dolores Chiara, Carlos Del Fresno
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引用次数: 0

摘要

背景:神经内分泌肿瘤(NENs)是一类起源于神经内分泌细胞的罕见肿瘤,既存在于内分泌腺中,也分布于全身。由于缺乏特异性标记物,诊断NENs仍然是一项复杂的挑战。因此,理想情况下,在易于获取的血液样本中需要新的生物标志物。方法:对139例nen(包括垂体性nen 29例、嗜色素细胞瘤和副神经节瘤46例、胃胰腺和肺(GEPP) nen和64名健康志愿者(HVs))进行血溶性免疫检查点(sPD-L1、sPD-L2、sPD-1、sCD25、sTIM3、sLAG3、半凝集素-9、sCD27、sB7.2和sSIGLEC5)和细胞因子(IL4、IL6、IP10和MCP1)的定量检测。使用数学回归模型评估这些循环免疫参数区分NENs与HVs、区分各种NENs亚型和预测其预后的潜力。这些基于免疫因素的模型生成评分,并通过受试者工作特征(ROC)和曲线下面积(AUC)分析进行评估。将这些评分与临床数据进行相关性分析。从这些分析中,出现了一个最小的特征,包括五个模型中共有的免疫因子:sCD25、sPD-L2、sTIM3、sLAG3和Galectin-9。经过评估、验证并检查了这种改进的特征对非神经内分泌肿瘤的特异性,证明了其作为识别不同NENs的临床相关工具的潜力。结果:分析的免疫因子在不同NENs中有特异性表达模式。基于这些因子特征的得分对nen的识别效率很高,auc在0.948 ~ 0.993之间,准确率在92.52% ~ 95.74%之间。这些评分说明了NENs的生物学特征,包括嗜铬细胞瘤和副神经节瘤的相似性,胃肠道和肺部NENs的差异,并与临床特征相关。此外,该模型在区分转移性和退出性GEPP NENs方面表现出很强的性能,实现了80.95%至88.89%的敏感性和特异性。此外,一个易于实现的最小签名成功识别了所有AUC值超过0.900,准确率在84.11%至93.12%之间的分析nen,并通过发现和验证随机化策略进行了内部验证。这些发现突出了模型在准确诊断和区分nen方面的有效性和最小特征。结论:血液中可溶性免疫因子的分析提供了一种有前途的液体活检方法来识别NENs,为预后和诊断提供关键见解。这项研究为一种创新的临床工具提供了概念验证,该工具有可能改变这些罕见恶性肿瘤的管理,为早期发现和疾病监测提供了一种非侵入性和有效的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A blood-based liquid biopsy analyzing soluble immune checkpoints and cytokines identifies distinct neuroendocrine tumors.

Background: Neuroendocrine neoplasms (NENs) comprise a group of rare tumors originating from neuroendocrine cells, which are present in both endocrine glands and scattered throughout the body. Due to their scarcity and absence of specific markers, diagnosing NENs remains a complex challenge. Therefore, new biomarkers are required, ideally, in easy-to-obtain blood samples.

Methods: A panel of blood soluble immune checkpoints (sPD-L1, sPD-L2, sPD-1, sCD25, sTIM3, sLAG3, Galectin-9, sCD27, sB7.2 and sSIGLEC5) and cytokines (IL4, IL6, IP10 and MCP1) was quantified in a cohort of 139 NENs, including 29 pituitary NENs, 46 pheochromocytomas and paragangliomas, and 67 gastroenteropancreatic and pulmonary (GEPP) NENs, as well as in 64 healthy volunteers (HVs). The potential of these circulating immunological parameters to distinguish NENs from HVs, differentiate among various NENs subtypes, and predict their prognosis was evaluated using mathematical regression models. These immunological factors-based models generated scores that were evaluated by Receiver Operating Characteristic (ROC) and Area Under the Curve (AUC) analyses. Correlations between these scores and clinical data were performed. From these analyses, a minimal signature emerged, comprising the five shared immunological factors across the models: sCD25, sPD-L2, sTIM3, sLAG3, and Galectin-9. This refined signature was evaluated, validated, and checked for specificity against non-neuroendocrine tumors, demonstrating its potential as a clinically relevant tool for identifying distinct NENs.

Results: Most of the immunological factors analyzed showed specific expression patterns among different NENs. Scores based on signatures of these factors identified NENs with high efficiency, showing AUCs ranging between 0.948 and 0.993 depending on the comparison, and accuracies between 92.52% and 95.74%. These scores illustrated biological features of NENs including the similarity between pheochromocytomas and paragangliomas, the divergence between gastrointestinal and pulmonary NENs, and correlated with clinical features. Furthermore, the models demonstrated strong performance in distinguishing metastatic and exitus GEPP NENs, achieving sensitivities and specificities ranging from 80.95% to 88.89%. Additionally, an easy-to-implement minimal signature successfully identified all analyzed NENs with AUC values exceeding 0.900, and accuracies between 84.11% and 93.12%, which was internally validated by a discovery and validation randomization strategy. These findings highlight the effectiveness of the models and minimal signature in accurately diagnosing and differentiating NENs.

Conclusions: The analysis of soluble immunological factors in blood presents a promising liquid biopsy approach for identifying NENs, delivering critical insights for both prognosis and diagnosis. This study serves as a proof-of-concept for an innovative clinical tool that holds the potential to transform the management of these rare malignancies, providing a non-invasive and effective method for early detection and disease monitoring.

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来源期刊
CiteScore
18.20
自引率
1.80%
发文量
333
审稿时长
1 months
期刊介绍: The Journal of Experimental & Clinical Cancer Research is an esteemed peer-reviewed publication that focuses on cancer research, encompassing everything from fundamental discoveries to practical applications. We welcome submissions that showcase groundbreaking advancements in the field of cancer research, especially those that bridge the gap between laboratory findings and clinical implementation. Our goal is to foster a deeper understanding of cancer, improve prevention and detection strategies, facilitate accurate diagnosis, and enhance treatment options. We are particularly interested in manuscripts that shed light on the mechanisms behind the development and progression of cancer, including metastasis. Additionally, we encourage submissions that explore molecular alterations or biomarkers that can help predict the efficacy of different treatments or identify drug resistance. Translational research related to targeted therapies, personalized medicine, tumor immunotherapy, and innovative approaches applicable to clinical investigations are also of great interest to us. We provide a platform for the dissemination of large-scale molecular characterizations of human tumors and encourage researchers to share their insights, discoveries, and methodologies with the wider scientific community. By publishing high-quality research articles, reviews, and commentaries, the Journal of Experimental & Clinical Cancer Research strives to contribute to the continuous improvement of cancer care and make a meaningful impact on patients' lives.
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