OPTIMAL ESTIMATION OF CELL-MOVEMENT INDEXES FROM THE STATISTICAL-ANALYSIS OF CELL TRACKING DATA

被引:125
作者
DICKINSON, RB
TRANQUILLO, RT
机构
[1] Dept. of Chemical Engineering and Materials Science, University of Minnesota, Minneapolis, Minnesota
关键词
D O I
10.1002/aic.690391210
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Active cell migration is essential in many physiological processes and in the function of some bioartificial tissues. Therefore, several investigators have recently attempted to quantitatively characterize random cell movement on isotropic substrata in vitro. A popular approach is to fit a theoretical expression for mean-squared cell displacement deriving from correlated random walk models to cell tracking data, yielding three objective cell movement indices: root-mean-squared speed, directional persistence time, and random motility coefficient (analogous to a molecular diffusion coefficient). The data are obtained typically by averaging cell displacements over a cell track composed of cell positions measured at equal time increments and frequently by further pooling such displacement data from tracks of different cells from the same population. We identify pitfalls introduced if an ordinary nonlinear least-squares regression analysis is used to fit the theoretical expression to the data as is commonly done and propose a generalized least-squares regression analysis as a remedy. This method estimates the cell movement indices and associated uncertainties much more accurately. It also predicts the precision of the indices based on their assumed true values and provides a means to address such issues as optimal sampling methods for data acquisition from cell tracks and handling errors associated with measuring cell position.
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页码:1995 / 2010
页数:16
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