Title of article :
Relationship between preparation of cells for therapy and cell quality using artificial neural network analysis
Author/Authors :
Dhondalay، نويسنده , , Gopal Krishna and Lawrence، نويسنده , , Katherine Nora Ward، نويسنده , , Stephen and Ball، نويسنده , , Graham and Hoare، نويسنده , , Michael، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
AbstractObjective
ccessful preparation of cells for therapy depends on the characterization of causal factors affecting cell quality. Ultra scale-down methods are used to characterize cells in terms of their response to process engineering causal factors of hydrodynamic shear stress and time. This response is in turn characterized in terms of causal factors relating to variations as may naturally occur during cell preparation, i.e., passage number, generation number, time of the final passage stage and hold time in formulation medium.
s
estigate the influence of all of these causal factors we have adopted a non-linear, multivariate predictive artificial neural network (ANN) based modeling approach to help create clearer insights into their effect on cell membrane integrity and surface marker content. A prostate cancer cell line candidate for cancer therapy (P4E6) was used and cell surface markers CD9, CD147 and HLA A-C were investigated.
s
usal factors studied were found to be significant in establishing an ANN model for the prediction of cell quality parameters with the extent of exposure to shear stress being the most significant and then passage number (range 57–66) and generation number (range 10–19) determining most strongly the cells’ resistance to shear stress. Both the operation of the final cell passage and the hold time of the cells in a formulation buffer also determine the cells’ resistance to shear stress. The processing parameters related to cell handling after preparation, i.e., shear stress and time of exposure were found to be the most influential affecting cell quality.
sion
rface marker loss was the most sensitive indicator of the effects of shear stress followed by loss of membrane integrity and then HLA A-C, while CD147 remained unaffected by shear stress or even prone to increase. Also greater stability of cell surface marker presence was noted for cells generated at greater passage numbers or generation numbers or for reduction in hold time in formulation buffer.
Keywords :
Surface markers , Ultra scale-down , Cells for therapy , Bioprocessing , Artificial neural networks , Membrane integrity
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine