液体活检来源的细胞外囊泡蛋白生物标志物在肺鳞状细胞癌诊断和预后评估中的应用。

IF 5.3 2区 医学 Q1 ONCOLOGY
Sheng Ma, Na Zhao, Xin Dong, Yaru Wang, Lei Song, Ruiqi Zheng, Xiaochen Zhi, Congcong Ma, Shujun Cheng, Jie Li, Yutao Liu, Ting Xiao
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引用次数: 0

摘要

背景:对于在影像学上发现结节但不确定是否为恶性肿瘤的患者,实现准确、早期和非侵入性的肺鳞状细胞癌(LUSC)诊断仍然是一个重大挑战。因此,我们旨在通过鉴定LUSC特异性的血浆细胞外囊泡(EVs)相关蛋白生物标志物来建立诊断和预后模型。方法:本研究采用新型纳米材料NaY从等离子体富集ev。通过透射电子显微镜、纳米颗粒跟踪分析和Western blotting进行验证。利用机器学习算法计算与LUSC相关的蛋白质生物标志物,并建立诊断模型。此外,使用101种机器学习算法的组合开发了LUSC的预后预测模型。对患者进行风险评分,以探讨高危组和低危组预后差异的潜在原因。结果:三个实验的结果表明,新型纳米材料NaY能有效地富集等离子体中的ev。对富集谱的分析揭示了LUSC患者血浆EVs中富集的糖酵解/糖异生和碳代谢相关途径。我们鉴定了38个与lscc相关的EV生物标志物,从中选择了5个蛋白(TUBB3、RPS7、RPLP1、KRT2和VTN)来建立区分良性和LUSC结节的诊断模型。通过独立样本的ELISA实验进一步验证RPS7和VTN的诊断效果。此外,DPYD、GALK1、CDC23、UBE2L3、RHEB和PSME1被确定为潜在的预后生物标志物。随后,计算每个样本的风险评分,将所有患者分为高风险组和低风险组。富集分析显示,来自高风险组的EVs含有促进细胞增殖和侵袭的蛋白质,而来自低风险组的EVs则富含免疫相关蛋白生物标志物。结论:新型纳米材料NaY能有效富集等离子体中的ev。利用血浆EV生物标志物,该诊断模型对患者肺结节良恶性鉴别能力强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Liquid biopsy-derived extracellular vesicle protein biomarkers for diagnosis and prognostic assessment of lung squamous cell carcinoma.

Background: For patients with nodules detected in imaging that are indeterminate for malignancy, achieving accurate, early, and non-invasive diagnosis of Lung Squamous Cell Carcinoma (LUSC) remains a significant challenge. Therefore, we aimed to establish diagnostic and prognostic models by identifying plasma extracellular vesicles (EVs) associated protein biomarkers specific to LUSC.

Methods: This study employed a novel nanomaterial, NaY, for the enrichment of EVs from plasma. Validation was conducted through transmission electron microscopy, nanoparticle tracking analyses, and Western blotting. Machine learning algorithms were utilized to compute protein biomarkers associated with LUSC and establish a diagnostic model. Additionally, a prognostic prediction model for LUSC was developed using a combination of 101 machine learning algorithms. Risk scoring of patients was performed to explore the underlying reasons for prognostic differences between high and low-risk groups.

Results: The results of three experiments demonstrate that the new nanomaterial NaY effectively enriches EVs from plasma. Analysis of the enriched profile reveals pathways related to glycolysis/gluconeogenesis and carbon metabolism enriched in plasma EVs of LUSC patients. Thirty-eight LSCC-related EV biomarkers were identified, from which five proteins (TUBB3, RPS7, RPLP1, KRT2, and VTN) were selected to establish a diagnostic model distinguishing between benign and LUSC nodules. The diagnostic efficacy of RPS7 and VTN was further validated in independent samples using ELISA experiments. Furthermore, DPYD, GALK1, CDC23, UBE2L3, RHEB, and PSME1 were determined as potential prognostic biomarkers. Subsequently, risk scores were computed for each sample, classifying all patients into high and low-risk groups. Enrichment analysis revealed that EVs from the high-risk group contained proteins promoting cell proliferation and invasion, while those from the low-risk group were enriched in immune-related protein biomarkers.

Conclusions: The novel nanomaterial NaY effectively enriches EVs from plasma. Utilizing plasma EV biomarkers, the diagnostic model demonstrates strong discriminative ability between benign and malignant pulmonary nodules in patients.

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来源期刊
CiteScore
10.90
自引率
1.70%
发文量
360
审稿时长
1 months
期刊介绍: Cancer Cell International publishes articles on all aspects of cancer cell biology, originating largely from, but not limited to, work using cell culture techniques. The journal focuses on novel cancer studies reporting data from biological experiments performed on cells grown in vitro, in two- or three-dimensional systems, and/or in vivo (animal experiments). These types of experiments have provided crucial data in many fields, from cell proliferation and transformation, to epithelial-mesenchymal interaction, to apoptosis, and host immune response to tumors. Cancer Cell International also considers articles that focus on novel technologies or novel pathways in molecular analysis and on epidemiological studies that may affect patient care, as well as articles reporting translational cancer research studies where in vitro discoveries are bridged to the clinic. As such, the journal is interested in laboratory and animal studies reporting on novel biomarkers of tumor progression and response to therapy and on their applicability to human cancers.
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