Entropy-based adaptive nuclear texture features are independent prognostic markers in a total population of uterine sarcomas.

Cytometry A

Institute for Cancer Genetics and Informatics, Oslo University Hospital, Oslo, Norway; Centre for Cancer Biomedicine, University of Oslo, Oslo, Norway.

Published: April 2015

AI Article Synopsis

  • Nuclear texture analysis evaluates the arrangement of pixel gray levels in microscopic images of cell nuclei and shows promise for cancer prognosis, particularly in uterine sarcomas.
  • A study involving 354 patients revealed that higher entropy-based adaptive nuclear texture features were associated with significantly better 5-year survival rates (72% vs. 36% for low values).
  • Combining DNA ploidy classification with texture feature values allowed for the stratification of patients into three risk groups, emphasizing the potential of these texture features as independent prognostic markers in clinical settings.

Article Abstract

Nuclear texture analysis measures the spatial arrangement of the pixel gray levels in a digitized microscopic nuclear image and is a promising quantitative tool for prognosis of cancer. The aim of this study was to evaluate the prognostic value of entropy-based adaptive nuclear texture features in a total population of 354 uterine sarcomas. Isolated nuclei (monolayers) were prepared from 50 µm tissue sections and stained with Feulgen-Schiff. Local gray level entropy was measured within small windows of each nuclear image and stored in gray level entropy matrices, and two superior adaptive texture features were calculated from each matrix. The 5-year crude survival was significantly higher (P < 0.001) for patients with high texture feature values (72%) than for patients with low feature values (36%). When combining DNA ploidy classification (diploid/nondiploid) and texture (high/low feature value), the patients could be stratified into three risk groups with 5-year crude survival of 77, 57, and 34% (Hazard Ratios (HR) of 1, 2.3, and 4.1, P < 0.001). Entropy-based adaptive nuclear texture was an independent prognostic marker for crude survival in multivariate analysis including relevant clinicopathological features (HR = 2.1, P = 0.001), and should therefore be considered as a potential prognostic marker in uterine sarcomas.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4409852PMC
http://dx.doi.org/10.1002/cyto.a.22601DOI Listing

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