Machine learning of flow cytometry data reveals the delayed innate immune responses correlate with the severity of COVID-19
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Dongqing Wei | Xueying Mao | Tu-nan Chen | Jing Zhu | Heqi Sun | Yitian Fang | Guangfu Ji
[1] Liang Cheng,et al. Genome-wide Mendelian randomization and single-cell RNA sequencing analyses identify the causal effects of COVID-19 on 41 cytokines. , 2022, Briefings in functional genomics.
[2] M. Bessel,et al. Viral load is associated with mitochondrial dysfunction and altered monocyte phenotype in acute severe SARS-CoV-2 infection , 2022, International Immunopharmacology.
[3] Kaley J. Rittichier,et al. Trustworthy Artificial Intelligence: A Review , 2022, ACM Comput. Surv..
[4] Mina Rho,et al. Multimodal deep learning applied to classify healthy and disease states of human microbiome , 2022, Scientific reports.
[5] Lydia M. Roberts,et al. Age-related differences in immune dynamics during SARS-CoV-2 infection in rhesus macaques , 2021, Life Science Alliance.
[6] Lindsay N. Carpp,et al. Single-cell immunology of SARS-CoV-2 infection , 2021, Nature Biotechnology.
[7] Xuexian O Yang,et al. Accumulation of CD28null Senescent T-Cells Is Associated with Poorer Outcomes in COVID19 Patients , 2021, Biomolecules.
[8] Adriana Forero,et al. Mechanisms of Antiviral Immune Evasion of SARS-CoV-2 , 2021, Journal of Molecular Biology.
[9] J. Schultze,et al. Monocytes and Macrophages in COVID-19 , 2021, Frontiers in Immunology.
[10] M. C. Muenker,et al. Delayed production of neutralizing antibodies correlates with fatal COVID-19 , 2021, Nature Medicine.
[11] Y. Saeys,et al. High dimensional profiling identifies specific immune types along the recovery trajectories of critically ill COVID19 patients , 2021, Cellular and Molecular Life Sciences.
[12] C. D. Dela Cruz,et al. A neutrophil activation signature predicts critical illness and mortality in COVID-19 , 2021, Blood Advances.
[13] M. Merad,et al. A streamlined whole blood CyTOF workflow defines a circulating immune cell signature of COVID‐19 , 2021, Cytometry. Part A : the journal of the International Society for Analytical Cytology.
[14] A. Sette,et al. Adaptive immunity to SARS-CoV-2 and COVID-19 , 2021, Cell.
[15] L. M. Nguyen,et al. The multiple functions and subpopulations of eosinophils in tissues under steady-state and pathological conditions. , 2020, Allergology international : official journal of the Japanese Society of Allergology.
[16] L. Carter,et al. Functional SARS-CoV-2-Specific Immune Memory Persists after Mild COVID-19 , 2020, Cell.
[17] C. Roca,et al. Increased IL‐10‐producing regulatory T cells are characteristic of severe cases of COVID‐19 , 2020, Clinical & translational immunology.
[18] William T. Hu,et al. Extrafollicular B cell responses correlate with neutralizing antibodies and morbidity in COVID-19 , 2020, Nature Immunology.
[19] P. Saldiva,et al. SARS-CoV-2–triggered neutrophil extracellular traps mediate COVID-19 pathology , 2020, The Journal of experimental medicine.
[20] J. Mason,et al. A dynamic COVID-19 immune signature includes associations with poor prognosis , 2020, Nature Medicine.
[21] Jiyuan Zhang,et al. Single-cell landscape of immunological responses in patients with COVID-19 , 2020, Nature Immunology.
[22] Zhixiang Zuo,et al. Dysregulated adaptive immune response contributes to severe COVID-19 , 2020, Cell Research.
[23] B. Singer,et al. Pathogenesis of COVID-19-induced ARDS: implications for an ageing population , 2020, European Respiratory Journal.
[24] Sasikanth Manne,et al. Deep immune profiling of COVID-19 patients reveals distinct immunotypes with therapeutic implications , 2020, Science.
[25] Aaron M. Rosenfeld,et al. Comprehensive mapping of immune perturbations associated with severe COVID-19 , 2020, Science Immunology.
[26] Morten Nielsen,et al. Robust T Cell Immunity in Convalescent Individuals with Asymptomatic or Mild COVID-19 , 2020, Cell.
[27] G. Kelly,et al. A Streamlined CyTOF Workflow To Facilitate Standardized Multi-Site Immune Profiling of COVID-19 Patients , 2020, medRxiv.
[28] Roland Eils,et al. COVID-19 severity correlates with airway epithelium–immune cell interactions identified by single-cell analysis , 2020, Nature Biotechnology.
[29] O. Tsang,et al. Acute SARS-CoV-2 Infection Impairs Dendritic Cell and T Cell Responses , 2020, Immunity.
[30] M. Netea,et al. Complex Immune Dysregulation in COVID-19 Patients with Severe Respiratory Failure , 2020, Cell Host & Microbe.
[31] Kaushik Roy,et al. Gradual Channel Pruning While Training Using Feature Relevance Scores for Convolutional Neural Networks , 2020, IEEE Access.
[32] Yan Zhao,et al. Clinical Characteristics of 138 Hospitalized Patients With 2019 Novel Coronavirus-Infected Pneumonia in Wuhan, China. , 2020, JAMA.
[33] J. Hirschfeld. Neutrophil Subsets in Periodontal Health and Disease: A Mini Review , 2020, Frontiers in Immunology.
[34] Shisheng Zhang,et al. A Deep Learning-Based Approach for Gait Analysis in Huntington Disease , 2019, MedInfo.
[35] K. Kumamaru,et al. Diagnostic accuracy of 3D deep-learning-based fully automated estimation of patient-level minimum fractional flow reserve from coronary computed tomography angiography. , 2019, European heart journal cardiovascular Imaging.
[36] Klaus-Robert Müller,et al. Evaluating Recurrent Neural Network Explanations , 2019, BlackboxNLP@ACL.
[37] Klaus-Robert Müller,et al. Explaining Recurrent Neural Network Predictions in Sentiment Analysis , 2017, WASSA@EMNLP.
[38] Klaus-Robert Müller,et al. "What is relevant in a text document?": An interpretable machine learning approach , 2016, PloS one.
[39] Klaus-Robert Müller,et al. Explaining Predictions of Non-Linear Classifiers in NLP , 2016, Rep4NLP@ACL.
[40] Alexander Binder,et al. The LRP Toolbox for Artificial Neural Networks , 2016, J. Mach. Learn. Res..
[41] Alexander Binder,et al. On Pixel-Wise Explanations for Non-Linear Classifier Decisions by Layer-Wise Relevance Propagation , 2015, PloS one.
[42] Sean C. Bendall,et al. Data-Driven Phenotypic Dissection of AML Reveals Progenitor-like Cells that Correlate with Prognosis , 2015, Cell.
[43] R Core Team,et al. R: A language and environment for statistical computing. , 2014 .
[44] Rob Lambkin-Williams,et al. Longitudinal analysis of leukocyte differentials in peripheral blood of patients with acute respiratory viral infections. , 2013, Journal of clinical virology : the official publication of the Pan American Society for Clinical Virology.
[45] Josef Spidlen,et al. FlowRepository: A resource of annotated flow cytometry datasets associated with peer‐reviewed publications , 2012, Cytometry. Part A : the journal of the International Society for Analytical Cytology.
[46] G. Parks,et al. IFNgamma-producing, virus-specific CD8+ effector cells acquire the ability to produce IL-10 as a result of entry into the infected lung environment. , 2010, Virology.
[47] A. Zychlinsky,et al. Neutrophil Extracellular Traps Kill Bacteria , 2004, Science.
[48] C. Raggi,et al. Mini review , 2004 .
[49] Robert C. Wolpert,et al. A Review of the , 1985 .