| Literature DB >> 25243474 |
Guini Hong1, Beibei Chen2, Hongdong Li1, Wenjing Zhang1, Tingting Zheng1, Shan Li1, Tongwei Shi1, Lu Ao3, Zheng Guo4.
Abstract
BACKGROUND: Many studies try to identify cancer diagnostic biomarkers by comparing peripheral whole blood (PWB) of cancer samples and healthy controls, explicitly or implicitly assuming that such biomarkers are potential candidate biomarkers for distinguishing cancer from nonmalignant inflammation-associated diseases.Entities:
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Year: 2014 PMID: 25243474 PMCID: PMC4171535 DOI: 10.1371/journal.pone.0108104
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Datasets analyzed in this study.
| Phenotype | Dataset | Reference | Case:Control | GEO acc No | Platform | No. of genes |
| Lung | LC60 | Bloom | 8∶52 | GSE42826 | GPL10558 | 30500 |
| LC46 | Bloom | 8∶38 | GSE42830 | GPL10558 | 30500 | |
| LC153 | Rotunno | 73∶80 | GSE20189 | GPL571 | 12790 | |
| Sarcoidosis | SCD68 | Bloom | 16∶52 | GSE42826 | GPL10558 | 30500 |
| SCD55 | Bloom | 17∶38 | GSE42830 | GPL10558 | 30500 | |
| SCD58 | Koth | 38∶20 | GSE19314 | GPL570 | 20283 | |
| Pneumonia | PNU58 | Bloom | 6∶52 | GSE42826 | GPL10558 | 30500 |
| PNU46 | Bloom | 8∶38 | GSE42830 | GPL10558 | 30500 | |
| PNU26 | Koth | 6∶20 | GSE19314 | GPL570 | 20283 | |
| Tuberculosis | TB63 | Bloom | 11∶52 | GSE42826 | GPL10558 | 30500 |
| TB54 | Bloom | 16∶38 | GSE42830 | GPL10558 | 30500 | |
| TB83 | Maertzdorf | 46∶37 | GSE28623 | GPL4133 | 19751 | |
| Leukocyte cells | LEU33 | Allantaz | 13∶20 | GSE28491 | GPL570 | 10698 |
| LEU37 | Allantaz | 17∶20 | GSE28490 | GPL570 | 11241 |
Each dataset is denoted by the following nomenclature: phenotype followed by the sample number,
The number of case and control samples. For leukocyte cells, Case refers to myeloid group; Control refers to lymphoid group,
GEO accession number. All the microarray data are accessible through NCBI's Gene Expression Omnibus (GEO, http://www.ncbi.nlm.nih.gov/geo) with the corresponding GEO accession number.
Consistency of DE gene lists for lung cancer.
| Dataset1 | Dataset2 | DE1 | DE2 | Overlapping DE | Consistent DE | Consistency score | Binomial P |
| LC60 | LC46 | 4078 | 2029 | 1654 | 1654 | 100% | <2.2×10−16 |
| LC60 | LC153 | 2755 | 876 | 389 | 386 | 99.2% | <2.2×10−16 |
| LC46 | LC153 | 1372 | 876 | 258 | 255 | 98.8% | <2.2×10−16 |
The number of DE genes identified from dataset1;
The number of DE genes identified from dataset2;
The number of overlapping DE genes;
The number of consistent DE genes.
Figure 1Boxplot of proportions of myeloid and lymphoid cells in lung cancer and control PWB samples.
The estimated proportions of myeloid and lymphoid cells in lung cancer and healthy PWB samples for each dataset. * denotes statistically significant differences (P<0.05). Abbreviations are same as in Table 1.
Consistency of DE gene lists for each inflammation-associated pulmonary disease.
| Dataset1 | Dataset2 | DE1 | DE2 | Overlapping DE | Consistent DE | Consistency score | Binomial P |
| SCD68 | SCD55 | 2734 | 2336 | 1467 | 1467 | 100% | <2.2×10−16 |
| SCD68 | SCD58 | 2309 | 1749 | 740 | 738 | 99.7% | <2.2×10−16 |
| SCD55 | SCD58 | 1867 | 1749 | 587 | 581 | 99.0% | <2.2×10−16 |
| TB63 | TB54 | 3859 | 18919 | 3014 | 2982 | 98.9% | <2.2×10−16 |
| TB63 | TB83 | 3317 | 1602 | 773 | 771 | 99.7% | <2.2×10−16 |
| TB54 | TB83 | 11504 | 1602 | 1160 | 974 | 84.0% | <2.2×10−16 |
| PNU58 | PNU46 | 4179 | 4117 | 2828 | 2828 | 100% | <2.2×10−16 |
| PNU58 | PNU26 | 3474 | 208 | 74 | 54 | 73.0% | 4.81×10−5 |
| PNU46 | PNU26 | 3292 | 208 | 82 | 60 | 73.2% | 1.62×10−5 |
The number of DE genes identified from dataset1;
The number of DE genes identified from dataset2;
The number of overlapping DE genes;
The number of consistent DE genes.
Figure 2Boxplot of proportions of myeloid and lymphoid cells in inflammation-associated pulmonary disease and control PWB samples.
The estimated proportions of myeloid and lymphoid cells in sarcoidosis, pneumonia and tuberculosis and healthy PWB samples for each dataset. * denotes statistically significant differences (P<0.05). Abbreviations are same as in Table 1.