| Literature DB >> 25880806 |
Christine How1, Melania Pintilie2, Jeff P Bruce1, Angela B Y Hui3, Blaise A Clarke4, Philip Wong5, Shaoming Yin6, Rui Yan6, Daryl Waggott6, Paul C Boutros7, Anthony Fyles8, David W Hedley9, Richard P Hill1, Michael Milosevic8, Fei-Fei Liu10.
Abstract
Cervical cancer remains the third most frequently diagnosed and fourth leading cause of cancer death in women worldwide. We sought to develop a micro-RNA signature that was prognostic for disease-free survival, which could potentially allow tailoring of treatment for cervical cancer patients. A candidate prognostic 9-micro-RNA signature set was identified in the training set of 79 frozen specimens. However, three different approaches to validate this signature in an independent cohort of 87 patients with formalin-fixed paraffin-embedded (FFPE) specimens, were unsuccessful. There are several challenges and considerations associated with developing a prognostic micro-RNA signature for cervical cancer, namely: tumour heterogeneity, lack of concordance between frozen and FFPE specimens, and platform selection for global micro-RNA expression profiling in this disease. Our observations provide an important cautionary tale for future miRNA signature studies for cervical cancer, which can also be potentially applicable to miRNA profiling studies involving other types of human malignancies.Entities:
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Year: 2015 PMID: 25880806 PMCID: PMC4399941 DOI: 10.1371/journal.pone.0123946
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Clinical parameters of patients in the training and validation cohorts.
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| Age (years) | P = 0.95 | ||
| Median | 48 | 48 | |
| Range | 26–84 | 19–83 | |
| Tumour size | P = 0.29 | ||
| ≤ 5 cm | 48 (61%) | 43 (52%) | |
| > 5 cm | 31 (39%) | 39 (48%) | |
| FIGO stage | P = 0.28 | ||
| IB | 24 (30%) | 22 (25%) | |
| IIA | 2 (3%) | 5 (6%) | |
| IIB | 35 (44%) | 31 (36%) | |
| IIIA | 0 | 2 (2%) | |
| IIIB | 18 (23%) | 27 (31%) | |
| Pelvic or para-aortic node involvement | P = 0.91 | ||
| Positive | 25 (32%) | 29 (33%) | |
| Equivocal | 15 (19%) | 18 (21%) | |
| Negative | 39 (49%) | 40 (46%) | |
| Overall survival | P = 0.94 | ||
| Deaths | 24 (31%) | 26 (30%) | |
| Disease-free survival | P = 0.74 | ||
| Relapses or deaths | 28 (35%) | 33 (38%) | |
| Follow-up (years) | |||
| Median | 6.0 | 5.3 | |
| Range | 0.7–10.6 | 1.0–10.5 | |
Fig 1Kaplan-Meier analysis of DFS according to 9-miRNA signature.
A risk score was calculated for each patient in the training cohort (n = 79) using our 9-miRNA signature for DFS in cervical cancer. The median risk score was used to divide patients into the high vs. low risk groups. HR; hazard ratio, DFS; disease-free survival, CI; 95% confidence interval.
Fig 2Application of 9-miRNA signature to validation cohort.
Kaplan-Meier analysis of DFS. A risk score was calculated for each patient in the validation cohort, by applying our 9-miRNA signature for DFS to the miRNA expression data generated using A) TLDA, B) NanoString, and C) individual qRT-PCR. The same cut-off point from the training set was used. HR; hazard ratio, DFS; disease-free survival, CI; 95% confidence interval.
Fig 3Kaplan-Meier analysis of DFS according to Hu et al. 2-miRNA signature.
Using the Hu et al. 2-miRNA signature, a risk score was calculated for each patient from: A) TLDA frozen cohort (n = 79), B) TLDA FFPE cohort (n = 87), and C) NanoString FFPE cohort (n = 87). HR; hazard ratio, DFS; disease-free survival, CI; 95% confidence interval.