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Shenyi Lu

Affiliated Hospital of Youjiang Medical University for Nationalities

Publishes on Bone Tissue Engineering Materials, Orthopaedic implants and arthroplasty, Graphene and Nanomaterials Applications. 20 papers and 133 citations.

20Publications
133Total Citations

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Top publicationsby citations

Verification of cuproptosis-related diagnostic model associated with immune infiltration in rheumatoid arthritis
Mingyang Jiang, Kaicheng Liu, Shenyi Lu et al.|Frontiers in Endocrinology|2023
Cited by 24Open Access

Background: Rheumatoid arthritis (RA) is a chronic autoimmune disease closely related to inflammation. Cuproptosis is a newly discovered unique type of cell death, and it has been found that it may play an essential role in the occurrence and development of RA. Therefore, we intend to explore the potential association between cuproptosis-related genes (CRGs) and RA to provide a new biomarker for the treatment and prognosis of RA. Methods: Download GSE93777 datasets from the GEO database. Variance analysis was performed on the CRGs that had been reported. Then, the random forest (RF) model and nomogram of differentially expressed CRGs were constructed, and the ROC curve was used to evaluate the accuracy of the diagnostic model. Next, RA patients were subtyped by consensus clustering, and immune infiltration was analyzed in each subgroup to confirm the correlation between CRGs and abundance of immune cells. The expression levels of CRGs were verified by qRT-PCR. Results: Eight differentially expressed CRGs (DLST, DLD, PDHB, PDHA1, ATP7A, CDKN2A, LIAS, DLAT) were screened out by differential analysis to construct an RF model. The ROC curve proved that this model had good diagnostic accuracy. Based on the above eight significant CRGs, a nomogram was built to predict effective and high-precision results. The consensus clustering method identified two CRG patterns. Most of the immune cells were enriched in cluster A, indicating that cluster A may be related to the development of RA. Finally, qRT-PCR verified the expression of eight key genes, further confirming our findings. Conclusion: The diagnosis model of RA based on the above eight CRGs has excellent diagnostic potential. Based on these, patients can be divided into two different molecular subtypes; it is expected to develop a new treatment strategy for RA.

Multilayer drug-release microneedles loaded with functional exosomes constitute a multidimensional therapeutic system for the treatment of liver injury
Zhenyu Song, Shenyi Lu, Xueliang Zhang et al.|Advanced Composites and Hybrid Materials|2025
Cited by 8Open Access

Due to the difficulty in addressing multifactorial complex diseases such as chronic liver injury, we designed multilayer structured microneedles based on multiple pathogenic factors. This study addresses chronic liver injury characterized by high tissue fibrosis and hepatocyte necrosis by utilizing hepatocyte growth factor (HGF) and stem cell exosome solution (HGF@EV) to encapsulate a slow-release antifibrotic drug, nintedanib, within soluble microneedles (H@EV-H/G/N MNP). Applying the patch directly to the skin allows for continuous absorption and gradual degradation of nintedanib in vivo. In vitro experiments showed that nintedanib inhibits M2 polarization, reduces TGF-β secretion, and, in combination with microneedles, suppresses fibroblast proliferation and migration, thus hindering liver fibrosis progression. The regenerative effect of the HGF-loaded stem cell exosome solution led to significant hepatocyte proliferation. Under this dual action, the liver function and quality of life of the mice were effectively improved. By extension, different multilayer microneedles can be constructed to target the pathogenic characteristics of various diseases. This multimodal therapeutic system addresses complex refractory diseases characterized by multiple pathogenic factors.

Development of a Risk Model and Genotyping Patterns Based on Disulfidptosis-Related lncRNAs to Predict Prognosis and Immune Landscape in Osteosarcoma
Ke Zhang, Shenyi Lu, Mingyang Jiang et al.|Frontiers in Bioscience-Landmark|2024
Cited by 8Open Access

BACKGROUND: Osteosarcoma (OS) is the most prevalent orthopedic malignancy with a dismal prognosis. Disulfidptosis-related lncRNAs (DRLncs) may be related to the progression of OS, but their potential molecular regulatory role is still unclear. METHODS: Based on the data collected from The Cancer Genome Atlas (TCGA), we conducted correlation analysis and the univariate Cox analysis to screen prognosis-related DRLncs, followed by developing genotyping patterns and corresponding classifier. Subsequently, the survival analysis, enrichment analysis, drug sensitivity analysis and immune infiltration analysis were performed. Afterward, multivariate Cox regression was used to construct a risk model, which was further validated by the receiver operating characteristic (ROC) curve. The aberrant expression of hub DRLncs in OS was validated using the Reverse Transcription Polymerase Chain Reaction (RT-qPCR) assay. RESULTS: We identified 262 DRLncs and eleven prognosis-related DRLncs through filtering. We then constructed two distinct expression patterns of prognosis-related DRLncs and developed a classifier. We obtained 393 differentially expressed genes (DEGs) between different subtypes, which were significantly enriched in biological processes related to the extracellular matrix, integrin binding, focal adhesion, and Wnt signaling pathways. Through immune infiltration analysis, the activated CD4 memory T cells, resting natural killer (NK) cells, M1 macrophages, and resting dendritic cells (DC) were observed to exhibit different abundance in distinct subtypes. In the drug sensitivity analysis, tamoxifen showed a promising effect for drug-resistant OS. Furthermore, we identified five hub DRLncs and constructed a risk model. The RT-qPCR confirmed the aberrant expression of five hub DRLncs in OS. CONCLUSIONS: The present study identified DRLncs in OS, and conducted a comprehensive investigation of DRLncs-related expression patterns, survival status, immune landscape and drug sensitivity to reveal the difference in prognostic, pharmacological and immunological phenotype characteristics between distinct subtypes. Additionally, we developed a risk model to predict the prognosis, and constructed a genotyping classifier to predict the above phenotype characteristics in OS.