Statistical and economical efficiency in assessment of liver regeneration using defined sample size and selection in combination with a fully automated image analysis system

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Abstract

Quantification of liver regeneration is frequently based on determining the 5-bromo-2-deoxyuridine labeling index (BrdU-LI). The quantitative result is influenced by preanalytical, analytical, and postanalytical variables such as the region of interest (ROI). We aimed to present our newly developed and validated automatic computer-based image analysis system (AnalySIS-Macro), and to standardize the selection and sample size of ROIs. Images from BrdU-labeled and immunohistochemically stained liver sections were analyzed conventionally and with the newly developed AnalySIS-Macro and used for validation of the system. Automatic quantification correlated well with the manual counting result (r=0.9976). Validation of our AnalySIS-Macro revealed its high sensitivity (>90%) and specificity. The BrdU-LI ranged from11% to 57% within the same liver (32.96 ± 11.94%), reflecting the highly variable spatial distribution of hepatocyte proliferation. At least 2000 hepatocytes (10 images at 200x magnification) per lobe were required as sample size for achieving a representative BrdU-LI. Furthermore, the number of pericentral areas should be equal to that of periportal areas. The combination of our AnalySIS-Macro with rules for the selection and size of ROIs represents an accurate, sensitive, specific, and efficient diagnostic tool for the determination of the BrdU-LI and the spatial distribution of proliferating hepatocytes. © The Histochemical Society, Inc.

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Deng, M., Kleinert, R., Huang, H., He, Q., Madrahimova, F., Dirsch, O., & Dahmen, U. (2009). Statistical and economical efficiency in assessment of liver regeneration using defined sample size and selection in combination with a fully automated image analysis system. Journal of Histochemistry and Cytochemistry, 57(11), 1075–1085. https://doi.org/10.1369/jhc.2009.953869

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