Literature DB >> 19309176

Prediction of HPLC retention index using artificial neural networks and IGroup E-state indices.

Daniel R Albaugh1, L Mark Hall, Dennis W Hill, Tzipporah M Kertesz, Marc Parham, Lowell H Hall, David F Grant.   

Abstract

A back-propagation artificial neural network (ANN) was used to create a 10-fold leave-10%-out cross-validated ensemble model of high performance liquid chromatography retention index (HPLC-RI) for a data set of 498 diverse druglike compounds. A 10-fold multiple linear regression (MLR) ensemble model of the same data was developed for comparison. Molecular structure was described using IGroup E-state indices, a novel set of structure-information representation (SIR) descriptors, along with molecular connectivity chi and kappa indices and other SIR descriptors previously reported. The same input descriptors were used to develop models by both learning algorithms. The MLR model yielded marginally acceptable statistics with training correlation r(2) = 0.65, mean absolute error (MAE) = 83 RI units. External validation of 104 compounds not used for model development yielded validation v(2) = 0.49 and MAE = 73 RI units. The distribution of residuals for the fit and validate data sets suggest a nonlinear relationship between retention index and molecular structure as described by the SIR indices. Not surprisingly, the ANN model was significantly more accurate for both training and validation with training set r(2) = 0.93, MAE = 30 RI units and validation v(2) = 0.84, MAE = 41 RI units. For the ANN model, a total of 91% of validation predictions were within 100 RI units of the experimental value.

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Year:  2009        PMID: 19309176     DOI: 10.1021/ci9000162

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  8 in total

1.  CE50: quantifying collision induced dissociation energy for small molecule characterization and identification.

Authors:  Tzipporah M Kertesz; Lowell H Hall; Dennis W Hill; David F Grant
Journal:  J Am Soc Mass Spectrom       Date:  2009-06-21       Impact factor: 3.109

2.  Optimizing artificial neural network models for metabolomics and systems biology: an example using HPLC retention index data.

Authors:  L Mark Hall; Dennis W Hill; Lochana C Menikarachchi; Ming-Hui Chen; Lowell H Hall; David F Grant
Journal:  Bioanalysis       Date:  2015       Impact factor: 2.681

3.  Development of Ecom₅₀ and retention index models for nontargeted metabolomics: identification of 1,3-dicyclohexylurea in human serum by HPLC/mass spectrometry.

Authors:  L Mark Hall; Lowell H Hall; Tzipporah M Kertesz; Dennis W Hill; Thomas R Sharp; Edward Z Oblak; Ying W Dong; David S Wishart; Ming-Hui Chen; David F Grant
Journal:  J Chem Inf Model       Date:  2012-04-27       Impact factor: 4.956

4.  MolFind: a software package enabling HPLC/MS-based identification of unknown chemical structures.

Authors:  Lochana C Menikarachchi; Shannon Cawley; Dennis W Hill; L Mark Hall; Lowell Hall; Steven Lai; Janine Wilder; David F Grant
Journal:  Anal Chem       Date:  2012-10-23       Impact factor: 6.986

5.  Advances in structure elucidation of small molecules using mass spectrometry.

Authors:  Tobias Kind; Oliver Fiehn
Journal:  Bioanal Rev       Date:  2010-08-21

Review 6.  Chemical structure identification in metabolomics: computational modeling of experimental features.

Authors:  Lochana C Menikarachchi; Mai A Hamdalla; Dennis W Hill; David F Grant
Journal:  Comput Struct Biotechnol J       Date:  2013-03-01       Impact factor: 7.271

7.  Development of Database Assisted Structure Identification (DASI) Methods for Nontargeted Metabolomics.

Authors:  Lochana C Menikarachchi; Ritvik Dubey; Dennis W Hill; Daniel N Brush; David F Grant
Journal:  Metabolites       Date:  2016-05-31

8.  The WEIZMASS spectral library for high-confidence metabolite identification.

Authors:  Nir Shahaf; Ilana Rogachev; Uwe Heinig; Sagit Meir; Sergey Malitsky; Maor Battat; Hilary Wyner; Shuning Zheng; Ron Wehrens; Asaph Aharoni
Journal:  Nat Commun       Date:  2016-08-30       Impact factor: 14.919

  8 in total

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