Estimating real cell size distribution from cross-section microscopy imaging

MOTIVATION Microscopy imaging is an essential tool for medical diagnosis and molecular biology. It is particularly useful for extracting information about disease states, tissue heterogeneity and cell specific parameters such as cell type or cell size from biological specimens. However, the information obtained from the images is likely to be subjected to sampling and observational bias with respect to the underlying cell size/type distributions. RESULTS We present an algorithm, Estimate Tissue Cell Size/Type Distribution (EstiTiCS), for the adjustment of the underestimation of the number of small cells and the size of measured cells while accounting for the section thickness independent of the tissue type. We introduce the sources of bias under different tissue distributions and their effect on the measured values with simulation experiments. Furthermore, we demonstrate our method on histological sections of paraffin-embedded adipose tissue sample images from 57 people from a dietary intervention study. This data consists of measured cell size and its distribution over the dietary intervention period at four time points. Adjusting for the bias with EstiTiCS results in a closer fit to the true/expected adipocyte size distribution with earlier studies. Therefore, we conclude that our method is suitable as the final step in estimating the tissue wide cell type/size distribution from microscopy imaging pipeline. AVAILABILITY AND IMPLEMENTATION Source code and its documentation are available at https://github.com/michaelLenz/EstiTiCS The whole pipeline of our method is implemented in R and makes use of the 'nloptr' package. Adipose tissue data used for this study are available on request. CONTACT Michael.Lenz@Maastrichtuniversity.nl, Gokhan.Ertaylan@Maastrichtuniversity.nl.

[1]  Joanne L. Selway,et al.  A novel automated image analysis method for accurate adipocyte quantification , 2013, Adipocyte.

[2]  P Dempster,et al.  A new air displacement method for the determination of human body composition. , 1995, Medicine and science in sports and exercise.

[3]  A. Tchernof,et al.  Hypertrophy and hyperplasia of abdominal adipose tissues in women , 2008, International Journal of Obesity.

[4]  A. del Sol,et al.  Stemness of the hybrid Epithelial/Mesenchymal State in Breast Cancer and Its Association with Poor Survival , 2015, PloS one.

[5]  A. J. North,et al.  Seeing is believing? A beginners' guide to practical pitfalls in image acquisition , 2006, The Journal of cell biology.

[6]  JULES S. JAFFE,et al.  Three-Dimensional Probability Density Functions via Tomographic Inversion , 2005, SIAM J. Appl. Math..

[7]  P. Clarke An unbiased correction factor for cell counts in histological sections , 1993, Journal of Neuroscience Methods.

[8]  V. Periwal,et al.  Waves of Adipose Tissue Growth in the Genetically Obese Zucker Fatty Rat , 2010, PloS one.

[9]  M. Rodbell METABOLISM OF ISOLATED FAT CELLS. I. EFFECTS OF HORMONES ON GLUCOSE METABOLISM AND LIPOLYSIS. , 1964, The Journal of biological chemistry.

[10]  J Hirsch,et al.  Methods for the determination of adipose cell size in man and animals. , 1968, Journal of lipid research.

[11]  Tom Britton,et al.  Dynamics of fat cell turnover in humans , 2008, Nature.

[12]  Yuanyuan Wu,et al.  Adipose tissue heterogeneity: implication of depot differences in adipose tissue for obesity complications. , 2013, Molecular aspects of medicine.

[13]  M. Abercrombie Estimation of nuclear population from microtome sections , 1946, The Anatomical record.

[14]  K. Cianflone,et al.  Adipocyte size as a determinant of metabolic disease and adipose tissue dysfunction , 2015, Critical reviews in clinical laboratory sciences.

[15]  Nadia J. T. Roumans,et al.  The effect of rate of weight loss on long‐term weight regain in adults with overweight and obesity , 2016, Obesity.

[16]  S. Bernard,et al.  Adipocyte Turnover: Relevance to Human Adipose Tissue Morphology , 2009, Diabetes.

[17]  Bernhard M. Schuldt,et al.  PhysioSpace: Relating Gene Expression Experiments from Heterogeneous Sources Using Shared Physiological Processes , 2013, PloS one.

[18]  K. Friedl,et al.  Lower limit of body fat in healthy active men. , 1994, Journal of applied physiology.

[19]  A. del Sol,et al.  Gene regulatory network analysis reveals differences in site-specific cell fate determination in mammalian brain , 2014, Front. Cell. Neurosci..

[20]  Hiroyuki Mori,et al.  Quantifying size and number of adipocytes in adipose tissue. , 2014, Methods in enzymology.