Go to The Journal of Clinical Investigation
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Transfers
  • Advertising
  • Job board
  • Contact
  • Physician-Scientist Development
  • Current issue
  • Past issues
  • By specialty
    • COVID-19
    • Cardiology
    • Immunology
    • Metabolism
    • Nephrology
    • Oncology
    • Pulmonology
    • All ...
  • Videos
  • Collections
    • In-Press Preview
    • Resource and Technical Advances
    • Clinical Research and Public Health
    • Research Letters
    • Editorials
    • Perspectives
    • Physician-Scientist Development
    • Reviews
    • Top read articles

  • Current issue
  • Past issues
  • Specialties
  • In-Press Preview
  • Resource and Technical Advances
  • Clinical Research and Public Health
  • Research Letters
  • Editorials
  • Perspectives
  • Physician-Scientist Development
  • Reviews
  • Top read articles
  • About
  • Editors
  • Consulting Editors
  • For authors
  • Publication ethics
  • Publication alerts by email
  • Transfers
  • Advertising
  • Job board
  • Contact
Temporal transcriptomic analysis using TrendCatcher identifies early and persistent neutrophil activation in severe COVID-19
Xinge Wang, Mark A. Sanborn, Yang Dai, Jalees Rehman
Xinge Wang, Mark A. Sanborn, Yang Dai, Jalees Rehman
View: Text | PDF
Resource and Technical Advance COVID-19 Cell biology Immunology

Temporal transcriptomic analysis using TrendCatcher identifies early and persistent neutrophil activation in severe COVID-19

  • Text
  • PDF
Abstract

Studying temporal gene expression shifts during disease progression provides important insights into the biological mechanisms that distinguish adaptive and maladaptive responses. Existing tools for the analysis of time course transcriptomic data are not designed to optimally identify distinct temporal patterns when analyzing dynamic differentially expressed genes (DDEGs). Moreover, there are not enough methods to assess and visualize the temporal progression of biological pathways mapped from time course transcriptomic data sets. In this study, we developed an open-source R package TrendCatcher (https://github.com/jaleesr/TrendCatcher), which applies the smoothing spline ANOVA model and break point searching strategy, to identify and visualize distinct dynamic transcriptional gene signatures and biological processes from longitudinal data sets. We used TrendCatcher to perform a systematic temporal analysis of COVID-19 peripheral blood transcriptomes, including bulk and single-cell RNA-Seq time course data. TrendCatcher uncovered the early and persistent activation of neutrophils and coagulation pathways, as well as impaired type I IFN (IFN-I) signaling in circulating cells as a hallmark of patients who progressed to severe COVID-19, whereas no such patterns were identified in individuals receiving SARS-CoV-2 vaccinations or patients with mild COVID-19. These results underscore the importance of systematic temporal analysis to identify early biomarkers and possible pathogenic therapeutic targets.

Authors

Xinge Wang, Mark A. Sanborn, Yang Dai, Jalees Rehman

×

Figure 6

Temporal analysis of PBMC scRNA-Seq data from human subjects receiving the SARS-CoV-2 mRNA vaccine.

Options: View larger image (or click on image) Download as PowerPoint
Temporal analysis of PBMC scRNA-Seq data from human subjects receiving t...
(A) UMAP of the single-cell transcriptional profile of 1 patient on day 0. Cell types were autoannotated by SingleR. (B) Dot plot of comparison of the top GO terms enriched from cell type–specific DDEGs. The x axis represents cell type with the number of DDEGs shown in the brackets; the y axis represents the enriched GO terms; p.adjust represents adjusted P values using Holm-Bonferroni methods; and P values were generated by Fisher’s exact test. Dot size represents gene ratio. (C) TimeHeatmap of NK cells. Each column represents a time window. “0D-1D” represents day 0 (healthy control) to day 1. The “%GO” column represents the percentage of DDEGs found in the corresponding pathway. The “nDDEG” column represents number of DDEGs found in the corresponding pathway. The number in each grid represents the Avg_log2FC of gene expressions compared with the previous time window. Color represents the Avg_log2FC of the DDEGs within each time window for the corresponding pathway. The first dose was administered on day 1, and the second dose was administered on day 21.

Copyright © 2026 American Society for Clinical Investigation
ISSN 2379-3708

Sign up for email alerts