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1.
Front Immunol ; 13: 1012730, 2022.
Article in English | MEDLINE | ID: covidwho-2215266

ABSTRACT

Cyclic attractors generated from Boolean models may explain the adaptability of a cell in response to a dynamical complex tumor microenvironment. In contrast to this idea, we postulate that cyclic attractors in certain cases could be a systemic mechanism to face the perturbations coming from the environment. To justify our conjecture, we present a dynamic analysis of a highly curated transcriptional regulatory network of macrophages constrained into a cancer microenvironment. We observed that when M1-associated transcription factors (STAT1 or NF-κB) are perturbed and the microenvironment balances to a hyper-inflammation condition, cycle attractors activate genes whose signals counteract this effect implicated in tissue damage. The same behavior happens when the M2-associated transcription factors are disturbed (STAT3 or STAT6); cycle attractors will prevent a hyper-regulation scenario implicated in providing a suitable environment for tumor growth. Therefore, here we propose that cyclic macrophage phenotypes can serve as a reservoir for balancing the phenotypes when a specific phenotype-based transcription factor is perturbed in the regulatory network of macrophages. We consider that cyclic attractors should not be simply ignored, but it is necessary to carefully evaluate their biological importance. In this work, we suggest one conjecture: the cyclic attractors can serve as a reservoir to balance the inflammatory/regulatory response of the network under external perturbations.


Subject(s)
Algorithms , Tumor Microenvironment , Gene Regulatory Networks , Macrophages , Transcription Factors/genetics
2.
Front Immunol ; 12: 705646, 2021.
Article in English | MEDLINE | ID: covidwho-1450806

ABSTRACT

COVID-19 is a disease with a spectrum of clinical responses ranging from moderate to critical. To study and control its effects, a large number of researchers are focused on two substantial aims. On the one hand, the discovery of diverse biomarkers to classify and potentially anticipate the disease severity of patients. These biomarkers could serve as a medical criterion to prioritize attention to those patients with higher prone to severe responses. On the other hand, understanding how the immune system orchestrates its responses in this spectrum of disease severities is a fundamental issue required to design new and optimized therapeutic strategies. In this work, using single-cell RNAseq of bronchoalveolar lavage fluid of nine patients with COVID-19 and three healthy controls, we contribute to both aspects. First, we presented computational supervised machine-learning models with high accuracy in classifying the disease severity (moderate and severe) in patients with COVID-19 starting from single-cell data from bronchoalveolar lavage fluid. Second, we identified regulatory mechanisms from the heterogeneous cell populations in the lungs microenvironment that correlated with different clinical responses. Given the results, patients with moderate COVID-19 symptoms showed an activation/inactivation profile for their analyzed cells leading to a sequential and innocuous immune response. In comparison, severe patients might be promoting cytotoxic and pro-inflammatory responses in a systemic fashion involving epithelial and immune cells without the possibility to develop viral clearance and immune memory. Consequently, we present an in-depth landscape analysis of how transcriptional factors and pathways from these heterogeneous populations can regulate their expression to promote or restrain an effective immune response directly linked to the patients prognosis.


Subject(s)
Bronchoalveolar Lavage Fluid/cytology , Bronchoalveolar Lavage Fluid/immunology , COVID-19/pathology , Lung/cytology , SARS-CoV-2/immunology , B-Lymphocytes/immunology , Biomarkers , Bronchoalveolar Lavage Fluid/chemistry , Dendritic Cells/immunology , Epithelial Cells/cytology , Epithelial Cells/virology , Humans , Killer Cells, Natural/immunology , Lung/chemistry , Machine Learning , Macrophages/immunology , Monocytes/immunology , Neutrophils/immunology , RNA, Viral/genetics , Sequence Analysis, RNA , Severity of Illness Index , Single-Cell Analysis , T-Lymphocytes/immunology
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