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| Size | Qty | Add To Basket |
|---|---|---|
| 1×48 T | ||
| 1×96 T |
| Product Description | The quantitative human AGRN (glycosylated) sandwich ELISA kit is designed to detect human agrin (AGRN) levels. AGRN is a large extracellular matrix proteoglycan that plays a critical role in neuromuscular junction formation and maintenance. It is essential for synaptic differentiation and the organization of acetylcholine receptors at the postsynaptic membrane. The kit is suitable for various biological samples such as tissue homogenates, serum, plasma. Its sensitivity is 14.974 pg/mL, which can accurately detect low concentrations of AGRN in the sample. |
| Target | AGRN |
| N-Glycosylation Site | 135, 250, 777, 932 |
| O-Glycosylation Site | 1835 |
| Sample Types | Tissue homogenates, serum, plasma |
| Sample Volume | 100 μL |
| Sensitivity | 14.974 pg/mL |
| Detection Principle | Quantitative sandwich ELISA |
| Detection Range | 50 pg/mL-2000 pg/mL |
| Detection Time | 1 h-5 h |
| Detection Wavelength | 450 nm |
| Storage | Store at 2-8°C for long term storage. |
| Species | Human |
| Full Name | Agrin |
| Alternate Names | AGRN; Agrin; Agrin proteoglycan |
| Uniprot No. | O00468 |
| Application | The quantitative human AGRN (glycosylated) sandwich ELISA kit is valuable for researchers investigating neuromuscular disorders, such as congenital myasthenic syndromes and amyotrophic lateral sclerosis, where AGRN function is often disrupted. By quantifying AGRN levels, researchers can gain insights into the role of this protein in disease pathogenesis and explore potential therapeutic interventions. |
| Kit Components | Pre-coated ELISA plate; Lyophilized standard; Biotin-labeled antibody; HRP-avidin; Various diluents; Wash buffer; TMB chromogenic substrate; Stop solution |
| Precision | Intra-Assay: n=20, CV <8%; Inter-Assay: n=20, CV <10%; |
| Recovery | Serum sample: n=5, 85-100%; Plasma sample: n=4, 80-100%; |
| Standard Curve | ![]() The standard curve is for reference only, and a new standard curve should be generated for each set of samples tested. |