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| Size | Qty | Add To Basket |
|---|---|---|
| 1×48 T | ||
| 1×96 T |
| Product Description | The quantitative human LIFR (glycosylated) sandwich ELISA kit is designed to detect human leukemia inhibitory factor receptor (LIFR) levels. LIFR is a receptor for the cytokine leukemia inhibitory factor (LIF). LIF is involved in various biological processes, including cell growth, differentiation, and inflammation. The kit is suitable for various biological samples such as tissue homogenates, cell lysates, serum, plasma. Its sensitivity is 0.128 ng/mL, which can accurately detect low concentrations of LIFR in the sample. |
| Target | LIFR |
| N-Glycosylation Site | 64, 85, 131, 143, 191, 243, 303, 390, 407, 426, 445, 481, 489, 572, 652, 663, 680, 729, 787 |
| Sample Types | Tissue homogenates, cell lysates, serum, plasma |
| Sample Volume | 100 μL |
| Sensitivity | 0.128 ng/mL |
| Detection Principle | Quantitative sandwich ELISA |
| Detection Range | 0.55 ng/mL-15 ng/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 | Leukemia inhibitory factor receptor |
| Alternate Names | LIFR; Leukemia inhibitory factor receptor; CD118 |
| Uniprot No. | P42702 |
| Application | The quantitative human LIFR (glycosylated) sandwich ELISA kit is designed to measure glycosylated LIFR levels in samples. This measurement is valuable in research related to cell signaling, development, and inflammation. The kit is applied in studies of conditions such as cancer, inflammatory diseases, and reproductive disorders. |
| 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, 85-110%; |
| Standard Curve | ![]() The standard curve is for reference only, and a new standard curve should be generated for each set of samples tested. |