The estimation of ecotoxicity and bioaccumulation of compounds as pesticide
candidates is an important step in the estimation of their potential
practical use. The present study is aimed to form several non-linear
regression models based on artificial neural networks (ANN) for prediction
of bioconcentration factor of a series of 6-chloro-1,3,5-triazine
derivatives and to their ranking and selection based on sum of ranking
differences (SRD) approach. The obtained networks represent quantitative
structure-property relationship (QSPR) models. The input variables were
selected based on hierarchical forward selection procedure and those are the
following molecular descriptors: ATSm5 (autocorrelation descriptor mass
descriptor weighted by scaled atomic mass), minHBa (minimum E-states for
(strong) hydrogen bond acceptors), sumI (sum of the intrinsic state values)
and DELS2 (sum of all atoms intrinsic state differences, measure of total
charge transfer in the molecule). The total number of the established QSPR
models was twelve and all models were validated and confirmed to be of high
statistical quality and significant predictive ability. In order to rank and
select the most suitable networks, the SRD approach was applied based on row
average as the reference ranking.