| Literature DB >> 23056289 |
Xi Zeng1, Juanjuan Xiang, Minghua Wu, Wei Xiong, Hailin Tang, Min Deng, Xiayu Li, Qianjin Liao, Bo Su, Zhaohui Luo, Yanhong Zhou, Ming Zhou, Zhaoyang Zeng, Xiaoling Li, Shourong Shen, Cijun Shuai, Guiyuan Li, Jiasheng Fang, Shuping Peng.
Abstract
BACKGROUND: MicroRNAs have been considered as a kind of potential novel biomarker for cancer detection due to their remarkable stability in the blood and the characteristics of their expression profile in many diseases.Entities:
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Year: 2012 PMID: 23056289 PMCID: PMC3466268 DOI: 10.1371/journal.pone.0046367
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Demographic and clinical features of NPC patients and non-cancerous subjects.
| Variable | NPC(n = 160) | Control(n = 143) | p-value(NPC vs. Control) | |
| Average ages(years) | ||||
|
| 46.41±10.74 | 46.85±12.92 | 0.746 | |
|
|
| 98 | 82 | 0.489 |
|
| 62 | 61 | ||
|
| Squamous carcinoma | |||
|
| I | 2 | ||
| II | 25 | |||
| III | 55 | |||
| IV | 64 | |||
|
| 14 |
Age and sex constitution of 20 NPC patients and 20 non-cancerous volunteers from whose serum collected used for TLDA miRNA array.
| NPC | Non-cancerous controls | ||
| Sex | Age | Sex | Age |
| M | 40 | M | 62 |
| F | 31 | M | 38 |
| M | 43 | F | 55 |
| M | 47 | M | 38 |
| F | 52 | M | 46 |
| F | 29 | F | 49 |
| M | 36 | F | 52 |
| M | 49 | F | 50 |
| M | 51 | M | 22 |
| M | 66 | F | 52 |
| M | 47 | M | 46 |
| F | 53 | F | 42 |
| M | 61 | F | 56 |
| M | 51 | M | 52 |
| M | 24 | F | 37 |
| M | 54 | M | 42 |
| F | 55 | M | 32 |
| F | 53 | M | 61 |
| F | 45 | M | 57 |
| F | 44 | M | 45 |
Figure 1Expression of miR-17, miR-20a, miR-29c and miR-223 selected with miRNA array by a real-time quantitative Polymerase Chain Reaction (RT-qPCR), showing differentially expressed between NPC and non-cancerous group.
Figure 2Expression distribution of miR-17, miR-20a, miR-29c and miR-223 in 60 serum samples (Left: scatter; Right: Box) by RT-qPCR.
The levels of these miRNAs are a bit overlapping between NPC patients and non-cancerous controls though they are differentially expressed.
Figure 3A: miR-17, miR-20a, miR-29c and miR-223 cluster analysis by Cluster 3.0 in 60 cases serum of NPC patients and non-cancerous control; B: A value distribution in 60 serum sample (Left: scatter; Right: Box).
This shows that A value ( = 3.3) could discriminate the NPC patients and non-cancerous control well.
Validation of the serum 4-miRNA based diagnosis model in 131 cases of serum samples.
| Group | Correctly Classified | Healthy | NPC |
| Non-cancerous Controls | 96.50% | 55 | 2 |
| NPC | 97.30% | 72 | 2 |
Figure 4Kaplan-Meier survival curve analysis of miR-20a (Left: total survival curve; right: disease-free survival curve).
Log Rank value = 0.010 and 0.000, respectively, analyzed by Software SPSS.