Document details

An artificial intelligence approach to Bacillus amyloliquefaciens CCMI 1051 cul...

Author(s): Caldeira, A. Teresa cv logo 1 ; Arteiro, José cv logo 2 ; Roseiro, José cv logo 3 ; Neves, José cv logo 4 ; Vicente, Henrique cv logo 5

Date: 2011

Persistent ID: http://hdl.handle.net/10174/3449

Origin: Repositório Científico da Universidade de Évora

Subject(s): Bacillus amiloliquefaciens; Spore formation; Anti-fungal activity; Neural networks


Description
The combined effect of incubation time (IT) and aspartic acid concentration (AA) on the predicted biomass concentration (BC), Bacillus sporulation (BS) and anti-fungal activity of compounds (AFA) produced by Bacillus amyloliquefaciens CCMI 1051, was studied using Artificial Neural Networks (ANNs). The values predicted by ANN were in good agreement with experimental results, and were better than those obtained when using Response Surface Methodology. The database used to train and validate ANNs contains experimental data of B. amyloliquefaciens cultures (AFA, BS and BC) with different incubation times (1–9 days) using aspartic acid (3–42 mM) as nitrogen source. After the training and validation stages, the 2–7-6–3 neural network results showed that maximum AFA can be achieved with 19.5 mM AA on day 9; however, maximum AFA can also be obtained with an incubation time as short as 6 days with 36.6 mM AA. Furthermore, the model results showed two distinct behaviors for AFA, depending on IT.
Document Type Article
Language English
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