Title |
Protein Dynamics in Individual Human Cells: Experiment and Theory
|
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Published in |
PLOS ONE, April 2009
|
DOI | 10.1371/journal.pone.0004901 |
Pubmed ID | |
Authors |
Ariel Aharon Cohen, Tomer Kalisky, Avi Mayo, Naama Geva-Zatorsky, Tamar Danon, Irina Issaeva, Ronen Benjamine Kopito, Natalie Perzov, Ron Milo, Alex Sigal, Uri Alon |
Abstract |
A current challenge in biology is to understand the dynamics of protein circuits in living human cells. Can one define and test equations for the dynamics and variability of a protein over time? Here, we address this experimentally and theoretically, by means of accurate time-resolved measurements of endogenously tagged proteins in individual human cells. As a model system, we choose three stable proteins displaying cell-cycle-dependant dynamics. We find that protein accumulation with time per cell is quadratic for proteins with long mRNA life times and approximately linear for a protein with short mRNA lifetime. Both behaviors correspond to a classical model of transcription and translation. A stochastic model, in which genes slowly switch between ON and OFF states, captures measured cell-cell variability. The data suggests, in accordance with the model, that switching to the gene ON state is exponentially distributed and that the cell-cell distribution of protein levels can be approximated by a Gamma distribution throughout the cell cycle. These results suggest that relatively simple models may describe protein dynamics in individual human cells. |
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