BACKGROUND: IgA nephropathy (IgAN) is a leading cause of renal failure, but its pathogenesis remains unclear, complicating diagnosis and treatment. The invasive nature of renal biopsy highlights the need for non-invasive diagnostic biomarkers. Bulk RNA sequencing (RNA-seq) of urine offers a promising approach for identifying molecular changes relevant to IgAN. METHODS: We performed bulk RNA-seq on 53 urine samples from 11 untreated IgAN patients and 11 healthy controls, integrating these data with public renal RNA-seq, microarray, and scRNA-seq datasets. Machine learning was used to identify key differentially expressed genes, with protein expression validated by immunohistochemistry (IHC) and drug-target interactions explored via molecular docking. RESULTS: Urine RNA-seq analysis revealed differential expression profiles, from which TYROBP and HCK were identified as key biomarkers using machine learning. These biomarkers were validated in both a test cohort and an external validation cohort, demonstrating strong predictive accuracy. scRNA-seq confirmed their cell-specific expression patterns, correlating with renal function metrics such as GFR and serum creatinine. IHC further validated protein expression, and molecular docking suggested potential therapeutic interactions with IgAN treatments. CONCLUSION: TYROBP and HCK are promising non-invasive urinary biomarkers for IgAN. Their predictive accuracy, validated through machine learning, along with IHC confirmation and molecular docking insights, supports their potential for both diagnostic and therapeutic applications in IgAN.
Urinary TYROBP and HCK as genetic biomarkers for non-invasive diagnosis and therapeutic targeting in IgA nephropathy.
尿液 TYROBP 和 HCK 作为 IgA 肾病非侵入性诊断和治疗靶向的遗传生物标志物
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作者:Xie Boji, Pang Shuting, Xie Yuli, Tan Qiuyan, Li Shanshan, Jili Mujia, Huang Yian, Zhao Binran, Yuan Hao, Mi Junhao, Chen Xuesong, Ruan Liangping, Chen Hong, Li Xiaolai, Hu Boning, Huang Jing, Yang Rirong, Li Wei
| 期刊: | Frontiers in Genetics | 影响因子: | 2.800 |
| 时间: | 2024 | 起止号: | 2024 Dec 24; 15:1516513 |
| doi: | 10.3389/fgene.2024.1516513 | 研究方向: | 其它 |
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