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在预测性、预防性和个性化医学背景下,使用整合组学方法和机器学习策略识别特发性肺纤维化中与氧化应激相关的生物标志物。

Identifying oxidative stress-related biomarkers in idiopathic pulmonary fibrosis in the context of predictive, preventive, and personalized medicine using integrative omics approaches and machine-learning strategies.

作者信息

Yang Fan, Kong Jingwei, Zong Yuhan, Wang Manting, Jing Chuanqing, Ma Zhaotian, Li Wanyang, Cao Renshuang, Jing Shuwen, Gao Jie, Li Wenxin, Wang Ji

机构信息

College of Traditional Chinese Medicine, Beijing University of Chinese Medicine, Beijing, China.

National Institute of TCM Constitution and Preventive Medicine, Beijing University of Chinese Medicine, Beijing, China.

出版信息

EPMA J. 2023 Jul 31;14(3):417-442. doi: 10.1007/s13167-023-00334-4. eCollection 2023 Sep.

Abstract

BACKGROUND

Idiopathic pulmonary fibrosis (IPF) is a rare interstitial lung disease with a poor prognosis that currently lacks effective treatment methods. Preventing the acute exacerbation of IPF, identifying the molecular subtypes of patients, providing personalized treatment, and developing individualized drugs are guidelines for predictive, preventive, and personalized medicine (PPPM / 3PM) to promote the development of IPF. Oxidative stress (OS) is an important pathological process of IPF. However, the relationship between the expression levels of oxidative stress-related genes (OSRGs) and clinical indices in patients with IPF is unclear; therefore, it is still a challenge to identify potential beneficiaries of antioxidant therapy. Because PPPM aims to recognize and manage diseases by integrating multiple methods, patient stratification and analysis based on OSRGs and identifying biomarkers can help achieve the above goals.

METHODS

Transcriptome data from 250 IPF patients were divided into training and validation sets. Core OSRGs were identified in the training set and subsequently clustered to identify oxidative stress-related subtypes. The oxidative stress scores, clinical characteristics, and expression levels of senescence-associated secretory phenotypes (SASPs) of different subtypes were compared to identify patients who were sensitive to antioxidant therapy to conduct differential gene functional enrichment analysis and predict potential therapeutic drugs. Diagnostic markers between subtypes were obtained by integrating multiple machine learning methods, their expression levels were tested in rat models with different degrees of pulmonary fibrosis and validation sets, and nomogram models were constructed. CIBERSORT, single-cell RNA sequencing, and immunofluorescence staining were used to explore the effects of OSRGs on the immune microenvironment.

RESULTS

Core OSRGs classified IPF into two subtypes. Patients classified into subtypes with low oxidative stress levels had better clinical scores, less severe fibrosis, and lower expression of SASP-related molecules. A reliable nomogram model based on five diagnostic markers was constructed, and these markers' expression stability was verified in animal experiments. The number of neutrophils in the immune microenvironment was significantly different between the two subtypes and was closely related to the degree of fibrosis.

CONCLUSION

Within the framework of PPPM, this work comprehensively explored the role of OSRGs and their mediated cellular senescence and immune processes in the progress of IPF and assessed their capabilities aspredictors of high oxidative stress and disease progression,targets of the vicious loop between regulated pulmonary fibrosis and OS for targeted secondary and tertiary prevention, andreferences for personalized antioxidant and antifibrotic therapies.

SUPPLEMENTARY INFORMATION

The online version contains supplementary material available at 10.1007/s13167-023-00334-4.

摘要

背景

特发性肺纤维化(IPF)是一种罕见的间质性肺疾病,预后较差,目前缺乏有效的治疗方法。预防IPF急性加重、识别患者分子亚型、提供个性化治疗以及开发个体化药物是预测、预防和个性化医学(PPPM/3PM)促进IPF治疗发展的指导方针。氧化应激(OS)是IPF的重要病理过程。然而,IPF患者氧化应激相关基因(OSRGs)表达水平与临床指标之间的关系尚不清楚;因此,确定抗氧化治疗的潜在受益者仍然是一项挑战。由于PPPM旨在通过整合多种方法来识别和管理疾病,基于OSRGs进行患者分层和分析并识别生物标志物有助于实现上述目标。

方法

将250例IPF患者的转录组数据分为训练集和验证集。在训练集中识别核心OSRGs,随后进行聚类以识别氧化应激相关亚型。比较不同亚型的氧化应激评分、临床特征和衰老相关分泌表型(SASPs)的表达水平,以识别对抗氧化治疗敏感的患者,进行差异基因功能富集分析并预测潜在治疗药物。通过整合多种机器学习方法获得亚型之间的诊断标志物,在不同程度肺纤维化大鼠模型和验证集中检测其表达水平,并构建列线图模型。使用CIBERSORT、单细胞RNA测序和免疫荧光染色来探索OSRGs对免疫微环境的影响。

结果

核心OSRGs将IPF分为两个亚型。分类为氧化应激水平低的亚型的患者具有更好的临床评分、较轻的纤维化和较低的SASP相关分子表达。构建了一个基于五个诊断标志物的可靠列线图模型,并在动物实验中验证了这些标志物的表达稳定性。两个亚型之间免疫微环境中的中性粒细胞数量存在显著差异,且与纤维化程度密切相关。

结论

在PPPM框架内,本研究全面探讨了OSRGs及其介导的细胞衰老和免疫过程在IPF进展中的作用,并评估了它们作为高氧化应激和疾病进展预测指标、调节肺纤维化和OS之间恶性循环的靶点用于针对性二级和三级预防以及个性化抗氧化和抗纤维化治疗参考的能力。

补充信息

在线版本包含可在10.1007/s13167-023-00334-4获取的补充材料。

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