Identifying the roles of hub gene in keloid formation using single-cell transcriptomics
Xiangbing Zheng , Zhengqiang Wan , Bing Liu , Jun Yin , Cheng Chen , Yuzhen Ma , Yong Zou
Eurasian Journal of Medicine and Oncology ›› 2026, Vol. 10 ›› Issue (1) : 133 -147.
Introduction: Keloid, a fibroproliferative tumor characterized by excessive collagen deposition and fibroblast hyperplasia, lacks effective therapeutic strategies due to unclear molecular mechanisms.
Objective: This study aims to elucidate keloid pathogenesis and identify diagnostic biomarkers through multi-omics integration.
Methods: Single-cell RNA sequencing (ScRNA-seq) data (GSE163973) and bulk RNA sequencing datasets (GSE162904/GSE145725) were analyzed. Fibroblast subpopulations were identified using the Seurat R package, and cell–cell interactions were explored using the CellChat R package. Weighted gene co-expression network analysis (WGCNA) was employed to identify key gene modules in fibroblasts. Hub genes were screened using Lasso regression and validated through machine learning algorithms and a gene-immune convolutional neural network (CNN). Immune infiltration patterns were evaluated using the MCP-counter and Immuno-Oncology Biological Research R packages.
Results: ScRNA-seq analysis revealed eight distinct cell subtypes within keloid tissues, with fibroblasts significantly enriched compared to normal skin. Fibroblast clusters 1 and 5 exhibited elevated midkine–low-density lipoprotein receptor-related protein 1-mediated interactions and enhanced differentiation activity. WGCNA identified three critical modules-“brown,” “cyan,” and “yellow”-linked to fibroblast activation. Lasso regression produced an eight-gene signature that effectively distinguished keloid from normal skin (area under the curve = 0.885 – 0.889). Nonnegative matrix factorization classified keloids into four subtypes, each with distinct immune infiltration profiles correlated with hub gene expression. The gene-immune CNN model achieved 100% sensitivity and 88.9% specificity in diagnostic classification.
Conclusion: This study elucidates the molecular mechanisms underlying keloid formation through integrated single-cell and transcriptomic analysis, proposing an eight-gene signature as a potential diagnostic and therapeutic target. The identified keloid subtypes and associated immune infiltration patterns provide novel insights for advancing precision medicine approaches in keloid management.
Cell communication / Deep learning / Differentiation trajectory / Immune infiltration / Keloid / Single-cell RNA
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| [2] |
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| [3] |
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| [4] |
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| [5] |
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| [6] |
|
| [7] |
|
| [8] |
|
| [9] |
|
| [10] |
|
| [11] |
|
| [12] |
|
| [13] |
|
| [14] |
|
| [15] |
|
| [16] |
|
| [17] |
|
| [18] |
|
| [19] |
|
| [20] |
|
| [21] |
|
| [22] |
|
| [23] |
|
| [24] |
|
| [25] |
|
| [26] |
|
| [27] |
|
| [28] |
|
| [29] |
|
| [30] |
|
| [31] |
|
| [32] |
|
| [33] |
|
| [34] |
|
| [35] |
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| [36] |
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