DocumentCode :
1760430
Title :
Accounting for randomness in measurement and sampling in studying cancer cell population dynamics
Author :
Ghavami, Siavash ; Wolkenhauer, Olaf ; Lahouti, Farshad ; Ullah, Mukhtar ; Linnebacher, Michael
Author_Institution :
Center for Wireless Multimedia Commun., Univ. of Tehran, Tehran, Iran
Volume :
8
Issue :
5
fYear :
2014
fDate :
41913
Firstpage :
230
Lastpage :
241
Abstract :
Knowing the expected temporal evolution of the proportion of different cell types in sample tissues gives an indication about the progression of the disease and its possible response to drugs. Such systems have been modelled using Markov processes. We here consider an experimentally realistic scenario in which transition probabilities are estimated from noisy cell population size measurements. Using aggregated data of FACS measurements, we develop MMSE and ML estimators and formulate two problems to find the minimum number of required samples and measurements to guarantee the accuracy of predicted population sizes. Our numerical results show that the convergence mechanism of transition probabilities and steady states differ widely from the real values if one uses the standard deterministic approach for noisy measurements. This provides support for our argument that for the analysis of FACS data one should consider the observed state as a random variable. The second problem we address is about the consequences of estimating the probability of a cell being in a particular state from measurements of small population of cells. We show how the uncertainty arising from small sample sizes can be captured by a distribution for the state probability.
Keywords :
Gaussian distribution; biomedical measurement; cancer; cellular biophysics; convergence of numerical methods; fluorescence; hidden Markov models; maximum likelihood estimation; mean square error methods; random processes; tumours; Gaussian distributions; MMSE; Markov process; cancer cell population dynamics; cell population size measurement; convergence mechanism; disease; drugs; fluorescence-activated cell sorting measurement; hidden Markov model; malignant tumours; maximum likelihood estimator; minimum mean square error estimator; noise distributions; noisy measurement; normal tissue cells; random variable; standard deterministic approach; state transition probability; stochastic phenomena; tissue samples; transition probability matrix;
fLanguage :
English
Journal_Title :
Systems Biology, IET
Publisher :
iet
ISSN :
1751-8849
Type :
jour
DOI :
10.1049/iet-syb.2013.0031
Filename :
6915831
Link To Document :
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