Literature DB >> 31916049

Deep neural network affinity model for BACE inhibitors in D3R Grand Challenge 4.

Bo Wang1, Ho-Leung Ng2.   

Abstract

Drug Design Data Resource (D3R) Grand Challenge 4 (GC4) offered a unique opportunity for designing and testing novel methodology for accurate docking and affinity prediction of ligands in an open and blinded manner. We participated in the beta-secretase 1 (BACE) Subchallenge which is comprised of cross-docking and redocking of 20 macrocyclic ligands to BACE and predicting binding affinity for 154 macrocyclic ligands. For this challenge, we developed machine learning models trained specifically on BACE. We developed a deep neural network (DNN) model that used a combination of both structure and ligand-based features that outperformed simpler machine learning models. According to the results released by D3R, we achieved a Spearman's rank correlation coefficient of 0.43(7) for predicting the affinity of 154 ligands. We describe the formulation of our machine learning strategy in detail. We compared the performance of DNN with linear regression, random forest, and support vector machines using ligand-based, structure-based, and combining both ligand and structure-based features. We compared different structures for our DNN and found that performance was highly dependent on fine optimization of the L2 regularization hyperparameter, alpha. We also developed a novel metric of ligand three-dimensional similarity inspired by crystallographic difference density maps to match ligands without crystal structures to similar ligands with known crystal structures. This report demonstrates that detailed parameterization, careful data training and implementation, and extensive feature analysis are necessary to obtain strong performance with more complex machine learning methods. Post hoc analysis shows that scoring functions based only on ligand features are competitive with those also using structural features. Our DNN approach tied for fifth in predicting BACE-ligand binding affinities.

Entities:  

Keywords:  BACE; Beta-secretase 1; Binding affinity; D3R; Deep neural network; Docking; Machine learning; Structure-based drug design

Mesh:

Substances:

Year:  2020        PMID: 31916049     DOI: 10.1007/s10822-019-00275-z

Source DB:  PubMed          Journal:  J Comput Aided Mol Des        ISSN: 0920-654X            Impact factor:   3.686


  29 in total

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Journal:  Science       Date:  2018-07-26       Impact factor: 47.728

4.  D3R Grand Challenge 2: blind prediction of protein-ligand poses, affinity rankings, and relative binding free energies.

Authors:  Zied Gaieb; Shuai Liu; Symon Gathiaka; Michael Chiu; Huanwang Yang; Chenghua Shao; Victoria A Feher; W Patrick Walters; Bernd Kuhn; Markus G Rudolph; Stephen K Burley; Michael K Gilson; Rommie E Amaro
Journal:  J Comput Aided Mol Des       Date:  2017-12-04       Impact factor: 3.686

5.  KDEEP: Protein-Ligand Absolute Binding Affinity Prediction via 3D-Convolutional Neural Networks.

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6.  Beta-secretase cleavage of Alzheimer's amyloid precursor protein by the transmembrane aspartic protease BACE.

Authors:  R Vassar; B D Bennett; S Babu-Khan; S Kahn; E A Mendiaz; P Denis; D B Teplow; S Ross; P Amarante; R Loeloff; Y Luo; S Fisher; J Fuller; S Edenson; J Lile; M A Jarosinski; A L Biere; E Curran; T Burgess; J C Louis; F Collins; J Treanor; G Rogers; M Citron
Journal:  Science       Date:  1999-10-22       Impact factor: 47.728

7.  Lessons learned in empirical scoring with smina from the CSAR 2011 benchmarking exercise.

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8.  AutoDockFR: Advances in Protein-Ligand Docking with Explicitly Specified Binding Site Flexibility.

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Review 10.  Molecular docking and structure-based drug design strategies.

Authors:  Leonardo G Ferreira; Ricardo N Dos Santos; Glaucius Oliva; Adriano D Andricopulo
Journal:  Molecules       Date:  2015-07-22       Impact factor: 4.411

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  3 in total

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Review 3.  Pepsin-like aspartic proteases (PAPs) as model systems for combining biomolecular simulation with biophysical experiments.

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Journal:  RSC Adv       Date:  2021-03-17       Impact factor: 3.361

  3 in total

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