基于机器学习的自噬相关预后特征,用于膀胱癌的个性化风险分层和治疗方法。

IF 4.8 2区 医学 Q2 IMMUNOLOGY International immunopharmacology Pub Date : 2024-09-10 Epub Date: 2024-07-10 DOI:10.1016/j.intimp.2024.112623
Zhen Wang, Dong-Ning Chen, Xu-Yun Huang, Jun-Ming Zhu, Fei Lin, Qi You, Yun-Zhi Lin, Hai Cai, Yong Wei, Xue-Yi Xue, Qing-Shui Zheng, Ning Xu
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引用次数: 0

摘要

目的:膀胱癌(BCa)是一种致死率极高的泌尿系统恶性肿瘤,其特点是组织学异质性显著。自噬已迅速成为不同癌症类型的诊断和预后生物标志物。然而,目前可获得的 BCa 特异性自噬相关特征仍然有限:方法:通过一个10倍交叉验证框架,结合101种机器学习算法组合,开发出了一个完善的自噬相关特征。该特征在预测预后和免疫疗法反应方面的性能得到了全面评估,同时还探索了潜在的药物靶点和化合物。为了验证中枢基因的调控机制,还进行了体外和体内实验:自噬相关预后特征(ARPS)在预测 BCa 的预后方面表现出优于大多数临床特征和其他已开发标记物的性能。ARPS越高,预后越差,对免疫疗法的敏感性越低。针对高ARPS组患者筛选出了四个潜在靶点和五种治疗药物。体外和体内实验证实,FKBP9能促进BCa的增殖、侵袭和转移:总之,我们的研究为优化 BCa 患者的风险分层和决策开发了一种有价值的工具。
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Machine learning-based autophagy-related prognostic signature for personalized risk stratification and therapeutic approaches in bladder cancer.

Objective: Bladder cancer (BCa) is a highly lethal urological malignancy characterized by its notable histological heterogeneity. Autophagy has swiftly emerged as a diagnostic and prognostic biomarker in diverse cancer types. Nonetheless, the currently accessible autophagy-related signature specific to BCa remains limited.

Methods: A refined autophagy-related signature was developed through a 10-fold cross-validation framework, incorporating 101 combinations of machine learning algorithms. The performance of this signature in predicting prognosis and response to immunotherapy was thoroughly evaluated, along with an exploration of potential drug targets and compounds. In vitro and in vivo experiments were conducted to verify the regulatory mechanism of hub gene.

Results: The autophagy-related prognostic signature (ARPS) has exhibited superior performance in predicting the prognosis of BCa compared to the majority of clinical features and other developed markers. Higher ARPS is associated with poorer prognosis and reduced sensitivity to immunotherapy. Four potential targets and five therapeutic agents were screened for patients in the high-ARPS group. In vitro and vivo experiments have confirmed that FKBP9 promotes the proliferation, invasion, and metastasis of BCa.

Conclusions: Overall, our study developed a valuable tool to optimize risk stratification and decision-making for BCa patients.

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来源期刊
CiteScore
8.40
自引率
3.60%
发文量
935
审稿时长
53 days
期刊介绍: International Immunopharmacology is the primary vehicle for the publication of original research papers pertinent to the overlapping areas of immunology, pharmacology, cytokine biology, immunotherapy, immunopathology and immunotoxicology. Review articles that encompass these subjects are also welcome. The subject material appropriate for submission includes: • Clinical studies employing immunotherapy of any type including the use of: bacterial and chemical agents; thymic hormones, interferon, lymphokines, etc., in transplantation and diseases such as cancer, immunodeficiency, chronic infection and allergic, inflammatory or autoimmune disorders. • Studies on the mechanisms of action of these agents for specific parameters of immune competence as well as the overall clinical state. • Pre-clinical animal studies and in vitro studies on mechanisms of action with immunopotentiators, immunomodulators, immunoadjuvants and other pharmacological agents active on cells participating in immune or allergic responses. • Pharmacological compounds, microbial products and toxicological agents that affect the lymphoid system, and their mechanisms of action. • Agents that activate genes or modify transcription and translation within the immune response. • Substances activated, generated, or released through immunologic or related pathways that are pharmacologically active. • Production, function and regulation of cytokines and their receptors. • Classical pharmacological studies on the effects of chemokines and bioactive factors released during immunological reactions.
期刊最新文献
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