JOURNAL ARTICLE
Single-Cell RNA-Seq Analysis of Hearts in Patients with Fetal Tetralogy of Fallot.
Published In: Cardiology, 2025, v. 150, n. 2. P. 221 1 of 3
Database: Academic Search Ultimate 2 of 3
Authored By: Ding, Ye; Zhu, Jingai; Xu, Geng; Cheng, Qing; Zhu, Chun 3 of 3
Abstract
Introduction: To explore the cytological characteristics of tetralogy of Fallot (TOF), we collected samples and investigated the differences in the cytological classification between normal fetal hearts and fetal hearts with congenital defects. We then performed single-cell sequencing analysis to search for possible differential genes of disease markers. Methods: Here, the right ventricles of a heart sample with TOF and a healthy human fetal heart sample were analyzed through single-cell sequencing. Data quality control filtering, comparison, quantification, and identification of recovered cells on the raw data were performed using Cell Ranger, thereby ultimately obtaining gene expression matrices for each cell. Subsequently, Seurat was used for cell filtration, standardization, cell subgroup classification, differential expression gene analysis of each subgroup, and marker gene screening. Results: Bioinformatic analysis identified 9,979 and 15,224 cells from the healthy and diseased samples, respectively, with an average read depth of 25,000/cell. The cardiomyocyte cell populations, derived from the abnormal samples identified through the first-level graph-based analysis, were separated into six distinct cell clusters. Conclusion: Our study provides some information on TOF in a fetus, which can offer a new reference for the early detection and treatment of TOF by comparing defective heart cells with normal heart cells. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Cardiology. 2025/03, Vol. 150, Issue 2, p221
- Document Type:Article
- Subject Area:Health and Medicine
- Publication Date:2025
- ISSN:0008-6312
- DOI:10.1159/000540406
- Accession Number:184562244
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