A machine learning model and identification of immune infiltration for chronic obstructive pulmonary disease based on disulfidptosis-related genes

被引:0
作者
Li, Sijun [1 ]
Zhu, Qingdong [2 ]
Huang, Aichun [2 ]
Lan, Yanqun [2 ]
Wei, Xiaoying [2 ]
He, Huawei [2 ]
Meng, Xiayan [2 ]
Li, Weiwen [2 ]
Lin, Yanrong [2 ]
Yang, Shixiong [3 ]
机构
[1] Fourth Peoples Hosp Nanning, Infect Dis Lab, Nanning, Peoples R China
[2] Fourth Peoples Hosp Nanning, Dept TB, Nanning, Peoples R China
[3] Fourth Peoples Hosp Nanning, Adm Off, Nanning, Peoples R China
关键词
Chronic obstructive pulmonary disease; Disulfidptosis; Disulfidptosis-related genes; Immune cells; Machine learning model; COPD; EXPRESSION; PATHOGENESIS; SMOKERS; EXACERBATIONS; IMPAIRMENT; EMPHYSEMA; GLUCOSE; BURDEN; RISK;
D O I
10.1186/s12920-024-02076-2
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
BackgroundChronic obstructive pulmonary disease (COPD) is a chronic and progressive lung disease. Disulfidptosis-related genes (DRGs) may be involved in the pathogenesis of COPD. From the perspective of predictive, preventive, and personalized medicine (PPPM), clarifying the role of disulfidptosis in the development of COPD could provide a opportunity for primary prediction, targeted prevention, and personalized treatment of the disease.MethodsWe analyzed the expression profiles of DRGs and immune cell infiltration in COPD patients by using the GSE38974 dataset. According to the DRGs, molecular clusters and related immune cell infiltration levels were explored in individuals with COPD. Next, co-expression modules and cluster-specific differentially expressed genes were identified by the Weighted Gene Co-expression Network Analysis (WGCNA). Comparing the performance of the random forest (RF), support vector machine (SVM), generalized linear model (GLM), and eXtreme Gradient Boosting (XGB), we constructed the ptimal machine learning model.ResultsDE-DRGs, differential immune cells and two clusters were identified. Notable difference in DRGs, immune cell populations, biological processes, and pathway behaviors were noted among the two clusters. Besides, significant differences in DRGs, immune cells, biological functions, and pathway activities were observed between the two clusters.A nomogram was created to aid in the practical application of clinical procedures. The SVM model achieved the best results in differentiating COPD patients across various clusters. Following that, we identified the top five genes as predictor genes via SVM model. These five genes related to the model were strongly linked to traits of the individuals with COPD.ConclusionOur study demonstrated the relationship between disulfidptosis and COPD and established an optimal machine-learning model to evaluate the subtypes and traits of COPD. DRGs serve as a target for future predictive diagnostics, targeted prevention, and individualized therapy in COPD, facilitating the transition from reactive medical services to PPPM in the management of the disease.
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页数:17
相关论文
共 73 条
[41]   TAILS proteomics reveals dynamic changes in airway proteolysis controlling protease activity and innate immunity during COPD exacerbations [J].
Mallia-Milanes, Brendan ;
Dufour, Antoine ;
Philp, Christopher ;
Solis, Nestor ;
Klein, Theo ;
Fischer, Marlies ;
Bolton, Charlotte E. ;
Shapiro, Steven ;
Overall, Christopher M. ;
Johnson, Simon R. .
AMERICAN JOURNAL OF PHYSIOLOGY-LUNG CELLULAR AND MOLECULAR PHYSIOLOGY, 2018, 315 (06) :L1003-L1014
[42]   Sleep in chronic respiratory disease: COPD and hypoventilation disorders [J].
McNicholas, Walter T. ;
Hansson, Daniel ;
Schiza, Sofia ;
Grote, Ludger .
EUROPEAN RESPIRATORY REVIEW, 2019, 28 (153)
[43]   Functional interactors of three genome-wide association study genes are differentially expressed in severe chronic obstructive pulmonary disease lung tissue [J].
Morrow, Jarrett D. ;
Zhou, Xiaobo ;
Lao, Taotao ;
Jiang, Zhiqiang ;
Demeo, Dawn L. ;
Cho, Michael H. ;
Qiu, Weiliang ;
Cloonan, Suzanne ;
Pinto-Plata, Victor ;
Celli, Bartholome ;
Marchetti, Nathaniel ;
Criner, Gerard J. ;
Bueno, Raphael ;
Washko, George R. ;
Glass, Kimberly ;
Quackenbush, John ;
Choi, Augustine M. K. ;
Silverman, Edwin K. ;
Hersh, Craig P. .
SCIENTIFIC REPORTS, 2017, 7
[44]   Differentiating COPD and asthma using quantitative CT imaging and machine learning [J].
Moslemi, Amir ;
Kontogianni, Konstantina ;
Brock, Judith ;
Wood, Susan ;
Herth, Felix ;
Kirby, Miranda .
EUROPEAN RESPIRATORY JOURNAL, 2022, 60 (03)
[45]  
Newman AM, 2015, NAT METHODS, V12, P453, DOI [10.1038/NMETH.3337, 10.1038/nmeth.3337]
[46]  
Nugent R, 2010, METHODS MOL BIOL, V620, P369, DOI 10.1007/978-1-60761-580-4_12
[47]   Tmem27 is upregulated by vitamin D in INS-1 cells and its serum concentrations are low in patients with autoimmune diabetes [J].
Pepaj, Milaim ;
Gjerlaugsen, Nina ;
Julien, Kari ;
Thorsby, Per M. .
SCANDINAVIAN JOURNAL OF CLINICAL & LABORATORY INVESTIGATION, 2014, 74 (04) :358-365
[48]   Undiagnosed and Misdiagnosed Chronic Obstructive Pulmonary Disease: Data from the BOLD Australia Study [J].
Petrie, Kate ;
Toelle, Brett G. ;
Wood-Baker, Richard ;
Maguire, Graeme P. ;
James, Alan L. ;
Hunter, Michael ;
Johns, David P. ;
Marks, Guy B. ;
George, Johnson ;
Abramson, Michael J. .
INTERNATIONAL JOURNAL OF CHRONIC OBSTRUCTIVE PULMONARY DISEASE, 2021, 16 :467-475
[49]  
Qin Q, 2022, Front Aging Neurosci, P14
[50]   Specialist respiratory outreach: a case-finding initiative for identifying undiagnosed COPD in primary care [J].
Ray, Emma ;
Culliford, David ;
Kruk, Helen ;
Gillett, Kate ;
North, Mal ;
Astles, Carla M. ;
Hicks, Alexander ;
Johnson, Matthew ;
Lin, Sharon Xiaowen ;
Orlando, Rosanna ;
Thomas, Mike ;
Jordan, Rachel E. ;
Price, David ;
Konstantin, Mita ;
Wilkinson, Tom M. A. .
NPJ PRIMARY CARE RESPIRATORY MEDICINE, 2021, 31 (01)