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Home › Dataset Library › Optimizing molecular signatures for prostate cancer recurrence

Dataset: Optimizing molecular signatures for prostate cancer recurrence

The derivation of molecular signatures indicative of disease status and predictive of subsequent behavior could facilitate the optimal...

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The derivation of molecular signatures indicative of disease status and predictive of subsequent behavior could facilitate the optimal choice of treatment for prostate cancer patients. In this study, we conducted a computational analysis of gene expression profile data obtained from 79 cases, 39 of which were classified as having disease recurrence, to investigate whether advanced computational algorithms can derive more accurate prognostic signatures for prostate cancer. At the 90% sensitivity level, a newly derived prognostic genetic signature achieved 85% specificity. This is the first reported genetic signature to outperform a clinically used postoperative nomogram. Furthermore, a hybrid prognostic signature derived by combination of the nomogram and gene expression data significantly outperformed both genetic and clinical signatures, and achieved a specificity of 95%. Our study demonstrates the feasibility of utilizing gene expression information for highly accurate prostate cancer prognosis beyond the current clinical systems, and shows that more advanced computational modeling of tissue-derived microarray data is warranted before clinical application of molecular signatures is considered. mRNA profiling was performed using 79 cases of prostate cancer of known disease recurrence status

Species:
human

Samples:
79

Source:
E-GEOD-25136

PubMed:
19343730

Updated:
Dec.12, 2014

Registered:
Jun.19, 2014


Factors: (via ArrayExpress)
Sample RECURRENCE STATUS
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617659 Recurrent
GSM617654 Non-Recurrent
GSM617654 Non-Recurrent

Tags

  • cancer
  • disease
  • prostate
  • prostate cancer

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