Integrative machine learning and neural networks for identifying PANoptosis-related lncRNA molecular subtypes and constructing a predictive model for head and neck squamous cell carcinoma.

IF 1.9 3区 医学 Q2 OTORHINOLARYNGOLOGY European Archives of Oto-Rhino-Laryngology Pub Date : 2024-10-01 Epub Date: 2024-06-24 DOI:10.1007/s00405-024-08765-z
Zhenzhen Wang, Lixin Cheng, Juntao Huang, Yi Shen
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Abstract

Purpose: PANoptosis is considered a novel type of cell death that plays important roles in tumor progression. In this study, we applied machine learning algorithms to explore the relationships between PANoptosis-related lncRNAs (PRLs) and head and neck squamous cell carcinoma (HNSCC) and established a neural network model for prognostic prediction.

Methods: Information about the HNSCC cohort was downloaded from the TCGA database, and the differentially expressed prognostic PRLs between tumor and normal samples were assessed in patients with different tumor subtypes via nonnegative matrix factorization (NMF) analysis. Subsequently, five kinds of machine-learning algorithms were used to select the core PRLs across the subtypes, and the interactive features were pooled into a neural network model to establish a PRL-related risk score (PLRS) system. Survival differences were compared via Kaplan‒Meier analysis, and the predictive effects were assessed with the areas under the ROCs. Moreover, functional enrichment analysis, immune infiltration, tumor mutation burden (TMB) and clinical therapeutic response were also conducted to further evaluate the novel predictive model.

Results: A total of 347 PRLs were identified, 225 of which were differentially expressed between tumor and normal samples. Patients were divided into two clusters via NMF analysis, in which cluster 1 had a better prognosis and more immune cells and functional infiltrates. With the application of five machine learning algorithms, we selected 13 interactive PRLs to construct the predictive model. The AUCs for the ROCs in the entire set were 0.735, 0.740 and 0.723, respectively. Patients in the low-PLRS group exhibited a better prognosis, greater immune cell enrichment, greater immune function activation, lower TMB and greater sensitivity to immunotherapy.

Conclusion: In this study, we established a novel neural network prognostic model to predict survival and identify tumor subtypes in HNSCC patients. This novel assessment system is useful for prediction, providing ideas for clinical treatment.

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整合机器学习和神经网络,识别与 PANoptosis 相关的 lncRNA 分子亚型,构建头颈部鳞状细胞癌的预测模型。
目的:PAN凋亡被认为是一种新型细胞死亡方式,在肿瘤进展中发挥着重要作用。在这项研究中,我们应用机器学习算法探讨了PAN凋亡相关lncRNAs(PRLs)与头颈部鳞状细胞癌(HNSCC)之间的关系,并建立了一个用于预后预测的神经网络模型:从TCGA数据库下载HNSCC队列的相关信息,通过非负矩阵因式分解(NMF)分析评估不同肿瘤亚型患者的肿瘤和正常样本间差异表达的预后PRLs。随后,利用五种机器学习算法筛选出不同亚型的核心PRLs,并将交互特征汇集到神经网络模型中,建立了PRL相关风险评分(PLRS)系统。通过 Kaplan-Meier 分析比较了生存率的差异,并用 ROCs 下面积评估了预测效果。此外,还进行了功能富集分析、免疫浸润、肿瘤突变负荷(TMB)和临床治疗反应,以进一步评估新的预测模型:结果:共鉴定出347个PRLs,其中225个在肿瘤样本和正常样本之间有差异表达。通过NMF分析将患者分为两个群组,其中群组1的预后较好,免疫细胞和功能浸润较多。通过应用五种机器学习算法,我们选择了 13 个交互式 PRLs 来构建预测模型。整组 ROC 的 AUC 分别为 0.735、0.740 和 0.723。低PLRS组患者的预后更好,免疫细胞富集程度更高,免疫功能激活程度更高,TMB更低,对免疫疗法的敏感性更高:在这项研究中,我们建立了一个新的神经网络预后模型来预测 HNSCC 患者的生存期并识别肿瘤亚型。这一新型评估系统可用于预测,为临床治疗提供思路。
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来源期刊
CiteScore
5.30
自引率
7.70%
发文量
537
审稿时长
2-4 weeks
期刊介绍: Official Journal of European Union of Medical Specialists – ORL Section and Board Official Journal of Confederation of European Oto-Rhino-Laryngology Head and Neck Surgery "European Archives of Oto-Rhino-Laryngology" publishes original clinical reports and clinically relevant experimental studies, as well as short communications presenting new results of special interest. With peer review by a respected international editorial board and prompt English-language publication, the journal provides rapid dissemination of information by authors from around the world. This particular feature makes it the journal of choice for readers who want to be informed about the continuing state of the art concerning basic sciences and the diagnosis and management of diseases of the head and neck on an international level. European Archives of Oto-Rhino-Laryngology was founded in 1864 as "Archiv für Ohrenheilkunde" by A. von Tröltsch, A. Politzer and H. Schwartze.
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