DocumentCode :
3069456
Title :
Investigation of stochasticity in TRAIL signaling cancer model
Author :
Piras, V. ; Hayashi, K. ; Tomita, Masaru ; Selvarajoo, K.
Author_Institution :
Inst. for Adv. Biosci., Keio Univ., Tsuruoka, Japan
fYear :
2012
fDate :
1-4 July 2012
Firstpage :
609
Lastpage :
614
Abstract :
In cancer, apoptosis or programmed cell death has been demonstrated through the tumor necrosis factor related apoptosis-inducing ligand (TRAIL) signal transduction. As a result, TRAIL-based therapies have been widely investigated to fight cancers. However, several malignant cancer types still remain resistant to TRAIL. Recently, we developed a dynamic computational model to investigate the resistance mechanisms in TRAIL-stimulated human fibrosarcoma (HT1080) cells. The macroscopic average-cell response model, based on the law of mass action and signaling flux conservation, successfully simulates the semi-quantitative temporal profiles of cell survival (IκB, JNK, p38) and apoptotic (caspase-8 and -3) molecules in wildtype and several mutants (FADD, RIP1 and TRAF2 knockdowns or KD). However, cancer populations are known to be highly heterogeneous, and various studies have demonstrated the importance of stochasticity and variability for phenotypic diversity between identical cells. Here, we extend our original model to investigate the effect of such fluctuations on TRAIL signaling response by adopting probabilities of signaling reactions through the Gillespie algorithm. Notably, when we stimulated the model 1000 times to indicate the variability of 1000 single cell responses in all 4 experimental conditions with different levels of stochasticity, we notice that TRAF2 KD produced the most variable signaling response. This variance subsequently affected the level of cellular apoptosis analysed through the cell-survival metric (CSM). Our work highlights the necessity to understand variable responses of cell signaling reactions to different levels of stochasticity. Thus, prior to the actual development of potential drug targets for killing cancer cells, the effect of stochastic variance could be investigated through dynamic models.
Keywords :
cancer; cellular biophysics; drugs; fluctuations; macromolecules; molecular biophysics; patient treatment; probability; stochastic processes; tumours; Gillespie algorithm; HTl080 cells; TRAF2 KD; TRAIL signaling cancer model; TRAIL signaling response; TRAIL-based therapies; TRAIL-stimulated human fibrosarcoma cells; apoptotic molecules; cancer cells; cancer populations; cell signaling reactions; cell survival; cell-survival metric; cellular apoptosis analysis; dynamic computational model; dynamic models; macroscopic average-cell response model; malignant cancer types; phenotypic diversity; potential drug targets; probabilities; programmed cell death; semiquantitative temporal profiles; signaling flux conservation; signaling reactions; single cell responses; stochastic variance; stochasticity; tumor necrosis factor related apoptosis-inducing ligand signal transduction; Biological system modeling; Cancer; Computational modeling; Lead; Surface waves; Cell signaling; cancer; computational model; stochasticity;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Complex Medical Engineering (CME), 2012 ICME International Conference on
Conference_Location :
Kobe
Print_ISBN :
978-1-4673-1617-0
Type :
conf
DOI :
10.1109/ICCME.2012.6275648
Filename :
6275648
Link To Document :
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