Upregulated lncRNA-PCAT1 is closely related to clinical diagnosis of multiple myeloma as a predictive biomarker in serum

Xianjuan Shen(Affiliated Hospital of Nantong University), Yan Zhang(Nantong University), Xian Wu(Yancheng Central Blood Station), Yuehua Guo(Nantong University), Wei Shi(Nantong University), Jing Qi(Nantong University), Hui Cong(Nantong University), Xudong Wang(Nantong University), Xinhua Wu(Affiliated Hospital of Nantong University), Shaoqing Ju(Nantong University)
Cancer Biomarkers
January 10, 2017
Cited by 77Open Access
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Abstract

OBJECTIVE: The purpose of this study was to explore serum PCAT-1 expression in multiple myeloma (MM) and examine the potential usefulness of this molecule as a biomarker for diagnosis in MM. METHODS: Serum samples were collected from 60 newly diagnosed untreated MM patients, and 48 healthy controls. Serum PCAT-1 expression levels were detected by RT-qPCR. In addition, correlations between the relative expression of serum PCAT-1 and the concentrations of lactic acid dehydrogenase (LDH), β2M, λ light chain and κ light chain were assessed. RESULTS: It was found that the relative expression of serum PCAT-1 in MM patients (81.02 ± 136.9) was higher than that in healthy controls (3.17 ± 5.75) (U= 307.0, P< 0.0001) and was significantly correlated with β2M concentration (r= 0.461, P= 0.0002), but not with LDH, κ light and λ light chain concentration (r= 0.061, P= 0.641; r= 0.007, P= 0.956; r=-0.090, P= 0.499 respectively). Additionally, it was significantly correlated with different isotype of MM (H= 7.464, P= 0.024). The AUC of the ROC curve of serum PCAT-1 was 0.892 (95% CI 0.833-0.950), which was higher than other markers. Combining PCAT-1 and β2M together, the sensitivity was highest compared with other markers alone, or combined. CONCLUSION: The expression levels of serum PCAT-1 in MM patients were significantly higher than that in healthy controls, suggesting that it may be useful in the auxiliary diagnosis of MM.


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