Molecular prognosticators of complex karyotype soft tissue sarcoma outcome: A tissue microarray-based study

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Abstract

Background: Molecular markers are currently being utilized as sensitive prognosticators of cancer patient outcome. We sought to identify prognostic biomarkers for complex karyotype soft tissue sarcoma (STS). Materials and methods: A large (n = 205) clinically annotated tissue microarray (TMA) was constructed and immunostained for several tumor-related markers. Staining was scored via an automated Ariol image analysis system; data were statistically analyzed to evaluate the correlation of clinicopathological and molecular variables with overall survival (OS) and local recurrence. Results: Multivariable analysis identified older age [hazard ratio (HR) 1.62, P < 0.0001], nonextremity location (HR 2.95, P = 0.001), high tumor grade (HR 2.5, P = 0.02), and increased matrix metalloproteinase (MMP) 2 expression (HR 1.74, P = 0.04) as predictors for poor OS. Similarly, older age (HR 1.51, P = 0.008), nonextremity location (HR 4.09, P = 0.001), and increased MMP2 expression (HR 6.28, P = 0.006) were all found to correlate with shorter local recurrence-free interval. High nuclear p53 expression was associated with shorter STS local recurrence-free interval, with a trend toward significance. Conclusions: Data presented indicate that a clinically annotated TMA can be utilized to identify STS-related prognostic markers. Specifically, MMP2 and nuclear p53 should be further evaluated for their potential inclusion in complex karyotype STS staging systems. © The Author 2009. Published by Oxford University Press.

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Lahat, G., Tuvin, D., Wei, C., Wang, W. L., Pollock, R. E., Anaya, D. A., … Lev, D. (2009). Molecular prognosticators of complex karyotype soft tissue sarcoma outcome: A tissue microarray-based study. Annals of Oncology, 21(5), 1112–1120. https://doi.org/10.1093/annonc/mdp459

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