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CLEC11A-Driven Molecular Mechanisms in Intervertebral Disc Degeneration: A Comprehensive Multi-Omics Study.

Nizhou Jiang | Quanxiang Wang | Zhenxin Hu | Xiliang Tian
Journal of inflammation research | 2025

Intervertebral disc degeneration (IVDD) is a common chronic degenerative disease with a complex etiology involving genetic and environmental factors. However, the genetic pathogenesis and key driving factors of IVDD remain largely unknown.

Pubmed ID: 39897524 RIS Download

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