Decoupling global biases and local interactions between cell biological variables

作者:Zaritsky Assaf; Obolski Uri; Gan Zhuo; Reis Carlos R; Kadlecova Zuzana; Du Yi; Schmid Sandra L; Danuser Gaudenz
来源:eLife, 2017, 6: e22321.
DOI:10.7554/eLife.22323

摘要

Analysis of coupled variables is a core concept of cell biological inference, with co-localization of two molecules as a proxy for protein interaction being a ubiquitous example. However, external effectors may influence the observed co-localization independently from the local interaction of two proteins. Such global bias, although biologically meaningful, is often neglected when interpreting co-localization. Here, we describe DeBias, a computational method to quantify and decouple global bias from local interactions between variables by modeling the observed co-localization as the cumulative contribution of a global and a local component. We showcase four applications of DeBias in different areas of cell biology, and demonstrate that the global bias encapsulates fundamental mechanistic insight into cellular behavior. The DeBias software package is freely accessible online via a web-server at https://debias.biohpc.swmed.edu.

  • 出版日期2017-3-13