Frontiers in Plant Science (Mar 2016)

Predicting in vitro culture medium macro-nutrients composition for pear rootstocks using regression analysis and neural network models

  • S. eJamshidi,
  • A. eYadollahi,
  • H. eAhmadi,
  • M.M. eArab,
  • Maliheh eEftekhari

DOI
https://doi.org/10.3389/fpls.2016.00274
Journal volume & issue
Vol. 7

Abstract

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Two modeling techniques [artificial neural network-genetic algorithm (ANN-GA) and stepwise regression analysis] were used to predict the effect of medium macro-nutrients on in vitro performance of pear rootstocks (OHF and Pyrodwarf). The ANN-GA described associations between investigating 8 macronutrients (NO3-, NH4+, Ca2+, K+, Mg2+, PO42-, SO42- and Cl-) and explant growth parameters [proliferation rate (PR), shoot length (SL), shoot tip necrosis (STN), chlorosis (Chl) and vitrification (Vitri)]. ANN-GA revealed a substantially higher accuracy of prediction than for regression models. According to the ANN-GA results, among the input variables concentrations (mM), NH4+ (301.7) and NO3-, NH4+ (64), SO42- (54.1), K+ (40.4) and NO3- (35.1) in OHF and Ca2+ (23.7), NH4+ (10.7), NO3- (9.1), NH4+ (317.6) and NH4+ (79.6) in Pyrodwarf had the highest values of VSR in data set, respectively, for PR, SL, STN, Chl and Vitri. The ANN-GA showed that media containing (mM) 62.5 NO3-, 5.7 NH4+, 2.7 Ca2+, 31.5 K+, 3.3 Mg2+, 2.6 PO42-, 5.6 SO42- and 3.5 Cl- could lead to optimal PR for OHF and optimal PR for Pyrodwarf may be obtained with media containing 25.6 NO3-, 13.1 NH4+, 5.5 Ca2+, 35.7 K+, 1.5 Mg2+, 2.1 PO42-, 3.6 SO42- and 3 Cl-.

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