Clinical Value Of Combined Detection Of Serum Stim-3 And Pepsinogen For Gastric Cancer Diagnosis

CANCER MANAGEMENT AND RESEARCH(2021)

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摘要
Purpose: The present study aimed to evaluate the clinical value of the combined detection of soluble T cell immunoglobulinand mucin domain molecule 3 (sTim-3) and pepsinogen (PG) in sera for gastric cancer (GC) diagnosis. Patients and Methods: The double antibody sandwich method was used to establish a highly sensitive time-resolved fluorescence immunoassay for the detection of sTim-3. Serum sTim-3, PGI, and PGII levels in 149 GC patients (123 first-diagnosis GC patients and 26 post-GC patients), 81 patients with benign gastric disease (BGD), and 73 healthy controls were quantitatively detected. The clinical diagnostic value of the combined detection of sTim-3 and PG in GC was analyzed. Results: Serum sTim-3 levels in GC (20.41 +/- 9.55 ng/mL) and BGD (16.50 +/- 9.76 ng/mL) patients were significantly higher (P < 0.001) than those in healthy controls (9.22 +/- 3.40 ng/mL). Combined detection of sTim-3 and PGI/PGII (AUC: 0.9330, sensitivity: 86.44%, and specificity: 91.78%) showed a high diagnostic value for GC. When the level of PGI/PGII was less than 12.11 and that of sTim-3 was greater than 14.30 ng/mL, the positive rate of the control group was reduced to 0%, and the positive detection rate of GC was 54.47%. In addition, in post-operative patients, serum sTim-3 levels in the recurrence group (33.56 +/- 4.91 ng/mL) were significantly higher than those in the no recurrence group (11.95 +/- 5.16 ng/mL). Conclusion: sTim-3 levels in BGD and GC sera were significantly higher than those in the control group sera. Additionally, sTim-3 serum levels can predict recurrence in post-operative patients. Compared with PG alone, the combined detection of serum PG and sTim-3 can significantly improve the detection sensitivity and specificity of BGD and GC.
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T cell immunoglobulin and mucin domain molecule 3, time-resolved fluorescence immunoassay, biomarker, gastric cancer
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