Application of artificial neural networks to describe the combined effect of pH and NaCl on the heat resistance of Bacillus stearothermophilus.
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P. Periago | A. Esnoz | A. Palop | R. Conesa | P M Periago | R Conesa | A Esnoz | A Palop
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