Machine learning-based mRNA signature in early acute myocardial infarction patients: the perspective toward immunological, predictive, and personalized

被引:1
|
作者
Pan, Hai-Hua [1 ]
Yuan, Na [1 ]
He, Ling-Yan [2 ]
Sheng, Jia-Lin [2 ]
Hu, Hui-Lin [1 ]
Zhai, Chang-Lin [1 ]
机构
[1] Jiaxing Univ, Hosp 1, Jiaxing Affiliated Hosp, Jiaxing 314001, Zhejiang, Peoples R China
[2] Zhejiang Chinese Med Univ, Jiaxing Univ Master Degree Cultivat Base, Hangzhou 310053, Zhejiang, Peoples R China
关键词
Signature; AMI; CAD; Machine learning; Immunological; CARDIOVASCULAR-DISEASE; CCR1; INFLAMMATION; CHEMOKINES; EXPRESSION;
D O I
10.1007/s10142-023-01081-5
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Patients diagnosed with stable coronary artery disease (CAD) are at continued risk of experiencing acute myocardial infarction (AMI). This study aims to unravel the pivotal biomarkers and dynamic immune cell changes, from an immunological, predictive, and personalized viewpoint, by implementing a machine-learning approach and a composite bioinformatics strategy. Peripheral blood mRNA data from different datasets were analyzed, and CIBERSORT was used for deconvoluting human immune cell subtype expression matrices. Weighted gene co-expression network analysis (WGCNA) in single-cell and bulk transcriptome levels was conducted to explore possible biomarkers for AMI, with a particular emphasis on examining monocytes and their involvement in cell-cell communication. Unsupervised cluster analysis was performed to categorize AMI patients into different subtypes, and machine learning methods were employed to construct a comprehensive diagnostic model to predict the occurrence of early AMI. Finally, RT-qPCR on peripheral blood samples collected from patients validated the clinical utility of the machine learning-based mRNA signature and hub biomarkers. The study identified potential biomarkers for early AMI, including CLEC2D, TCN2, and CCR1, and found that monocytes may play a vital role in AMI samples. Differential analysis revealed that CCR1 and TCN2 exhibited elevated expression levels in early AMI compared to stable CAD. Machine learning methods showed that the glmBoost+Enet [alpha=0.9] model achieved high predictive accuracy in the training set, external validation sets, and clinical samples in our hospital. The study provided comprehensive insights into potential biomarkers and immune cell populations involved in the pathogenesis of early AMI. The identified biomarkers and the constructed comprehensive diagnostic model hold great promise for predicting the occurrence of early AMI and can serve as auxiliary diagnostic or predictive biomarkers.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Machine learning for early prediction of acute myocardial infarction or death in acute chest pain patients using electrocardiogram and blood tests at presentation
    de Capretz, Pontus Olsson
    Bjoerkelund, Anders
    Bjoerk, Jonas
    Ohlsson, Mattias
    Mokhtari, Arash
    Nystroem, Axel
    Ekelund, Ulf
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2023, 23 (01)
  • [32] Machine learning for early prediction of acute myocardial infarction or death in acute chest pain patients using electrocardiogram and blood tests at presentation
    Pontus Olsson de Capretz
    Anders Björkelund
    Jonas Björk
    Mattias Ohlsson
    Arash Mokhtari
    Axel Nyström
    Ulf Ekelund
    BMC Medical Informatics and Decision Making, 23
  • [33] Machine learning in the prediction of in-hospital mortality in patients with first acute myocardial infarction
    Zhu, Xiaoli
    Xie, Bojian
    Chen, Yijun
    Zeng, Hanqian
    Hu, Jinxi
    CLINICA CHIMICA ACTA, 2024, 554
  • [34] Integration of machine learning to identify diagnostic genes in leukocytes for acute myocardial infarction patients
    Zhang L.
    Liu Y.
    Wang K.
    Ou X.
    Zhou J.
    Zhang H.
    Huang M.
    Du Z.
    Qiang S.
    Journal of Translational Medicine, 21 (1)
  • [35] Machine Learning to Predict Contrast-Induced Acute Kidney Injury in Patients With Acute Myocardial Infarction
    Sun, Ling
    Zhu, Wenwu
    Chen, Xin
    Jiang, Jianguang
    Ji, Yuan
    Liu, Nan
    Xu, Yajing
    Zhuang, Yi
    Sun, Zhiqin
    Wang, Qingjie
    Zhang, Fengxiang
    FRONTIERS IN MEDICINE, 2020, 7
  • [36] Machine learning-based autophagy-related prognostic signature for personalized risk stratification and therapeutic approaches in bladder cancer
    Wang, Zhen
    Chen, Dong-Ning
    Huang, Xu-Yun
    Zhu, Jun-Ming
    Lin, Fei
    You, Qi
    Lin, Yun-Zhi
    Cai, Hai
    Wei, Yong
    Xue, Xue-Yi
    Zheng, Qing-Shui
    Xu, Ning
    INTERNATIONAL IMMUNOPHARMACOLOGY, 2024, 138
  • [37] Predictive model for early complications of acute myocardial infarction in patients with type 2 diabetes mellitus
    Koteliukh, Mariia Yuriivna
    Dorosh, Olena Hryhorivna
    BIOMEDICAL RESEARCH AND THERAPY, 2022, 9 (02): : 4892 - 4900
  • [38] Development of machine learning-based models for predicting risk factors in acute cerebral infarction patients: a clinical retrospective study
    Yang, Changqing
    Hu, Renlin
    Xiong, Shilan
    Hong, Zhou
    Liu, Jiaqi
    Mao, Zhuqing
    Chen, Mingzhu
    BMC NEUROLOGY, 2024, 24 (01)
  • [39] Personalized, Machine Learning-Based Nutrition Reduces Diabetes Markers in Type 2 Diabetic Patients
    Ben Shlomo, Yatir
    Azulay, Shahar
    Raveh-Sadka, Tali
    Cohen, Yossi
    Hanemann, Ariel
    DIABETES, 2019, 68
  • [40] Development of a Machine Learning-Based Predictive Model for Lung Metastasis in Patients With Ewing Sarcoma
    Li, Wenle
    Hong, Tao
    Liu, Wencai
    Dong, Shengtao
    Wang, Haosheng
    Tang, Zhi-Ri
    Li, Wanying
    Wang, Bing
    Hu, Zhaohui
    Liu, Qiang
    Qin, Yong
    Yin, Chengliang
    FRONTIERS IN MEDICINE, 2022, 9