%0 Journal Article %T Single Particle, Passive Microrheology in Biological Fluids with Drift %A John W. R. Mellnik %A Martin Lysy %A Paula A. Vasquez %A Natesh S. Pillai %A David B. Hill %A Jeremy Crib %A Scott A. McKinley %A M. Gregory Forest %J Statistics %D 2015 %I arXiv %X Volume limitations and low yield thresholds of biological fluids have led to widespread use of passive microparticle rheology. The mean-squared-displacement (MSD) statistics of bead position time series (bead paths) are transformed to determine dynamic storage and loss moduli [Mason and Weitz (1995)]. A prevalent hurdle arises when there is a non-diffusive experimental drift in the data. Commensurate with the magnitude of drift relative to diffusive mobility, quantified by a P\'eclet number, the MSD statistics are distorted, and thus the path data must be "corrected" for drift. The standard approach is to estimate and subtract the drift from particle paths, and then calculate MSD statistics. We present an alternative, parametric approach using maximum likelihood estimation (MLE) that simultaneously fits drift and diffusive model parameters from the path data; the MSD statistics (and dynamic moduli) then follow directly from the best-fit model. We illustrate and compare both methods on simulated path data over a range of P\'eclet numbers, where exact answers are known. We choose fractional Brownian motion as the numerical model because it affords tunable, sub-diffusive MSD statistics consistent with several biological fluids. Finally, we apply and compare both methods on data from human bronchial epithelial cell culture mucus. %U http://arxiv.org/abs/1509.03261v1