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Dive into the research topics where David J. Wilton is active.

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Featured researches published by David J. Wilton.


Journal of Chemical Information and Computer Sciences | 2004

Comparison of fingerprint-based methods for virtual screening using multiple bioactive reference structures

Jérôme Hert; Peter Willett; David J. Wilton; Pierre Acklin; Kamal Azzaoui; Edgar Jacoby; Ansgar Schuffenhauer

Fingerprint-based similarity searching is widely used for virtual screening when only a single bioactive reference structure is available. This paper reviews three distinct ways of carrying out such searches when multiple bioactive reference structures are available: merging the individual fingerprints into a single combined fingerprint; applying data fusion to the similarity rankings resulting from individual similarity searches; and approximations to substructural analysis. Extended searches on the MDL Drug Data Report database suggest that fusing similarity scores is the most effective general approach, with the best individual results coming from the binary kernel discrimination technique.


Organic and Biomolecular Chemistry | 2004

Comparison of topological descriptors for similarity-based virtual screening using multiple bioactive reference structures

Jérôme Hert; Peter Willett; David J. Wilton; Pierre Acklin; Kamal Azzaoui; Edgar Jacoby; Ansgar Schuffenhauer

This paper reports a detailed comparison of a range of different types of 2D fingerprints when used for similarity-based virtual screening with multiple reference structures. Experiments with the MDL Drug Data Report database demonstrate the effectiveness of fingerprints that encode circular substructure descriptors generated using the Morgan algorithm. These fingerprints are notably more effective than fingerprints based on a fragment dictionary, on hashing and on topological pharmacophores. The combination of these fingerprints with data fusion based on similarity scores provides both an effective and an efficient approach to virtual screening in lead-discovery programmes.


Journal of Molecular Graphics & Modelling | 1997

Comparison of algorithms for dissimilarity-based compound selection

Michael Snarey; Nicholas K. Terrett; Peter Willett; David J. Wilton

Dissimilarity-based compound selection has been suggested as an effective method for selecting structurally diverse subsets of chemical databases. This article reports a comparison of several maximum-dissimilarity and sphere-exclusion algorithms for dissimilarity-based selection. The effectiveness of the algorithms is quantified by the numbers of biological activity classes identified in subsets selected from the World Drugs Index database, and by the numbers of active compounds identified in feedback searches of this database. The experiments demonstrate the general effectiveness and efficiency of the MaxMin algorithm.


Journal of Chemical Information and Modeling | 2006

New Methods for Ligand-Based Virtual Screening: Use of Data Fusion and Machine Learning to Enhance the Effectiveness of Similarity Searching

Jérôme Hert; Peter Willett; David J. Wilton; Pierre Acklin; Kamal Azzaoui; Edgar Jacoby; Ansgar Schuffenhauer

Similarity searching using a single bioactive reference structure is a well-established technique for accessing chemical structure databases. This paper describes two extensions of the basic approach. First, we discuss the use of group fusion to combine the results of similarity searches when multiple reference structures are available. We demonstrate that this technique is notably more effective than conventional similarity searching in scaffold-hopping searches for structurally diverse sets of active molecules; conversely, the technique will do little to improve the search performance if the actives are structurally homogeneous. Second, we make the assumption that the nearest neighbors resulting from a similarity search, using a single bioactive reference structure, are also active and use this assumption to implement approximate forms of group fusion, substructural analysis, and binary kernel discrimination. This approach, called turbo similarity searching, is notably more effective than conventional similarity searching.


Journal of Chemical Information and Computer Sciences | 2003

Comparison of Ranking Methods for Virtual Screening in Lead-Discovery Programs

David J. Wilton; Peter Willett; Kevin Lawson; Graham Mullier

This paper discusses the use of several rank-based virtual screening methods for prioritizing compounds in lead-discovery programs, given a training set for which both structural and bioactivity data are available. Structures from the NCI AIDS data set and from the Syngenta corporate database were represented by two types of fragment bit-string and by sets of high-level molecular features. These representations were processed using binary kernel discrimination, similarity searching, substructural analysis, support vector machine, and trend vector analysis, with the effectiveness of the methods being judged by the extent to which active test set molecules were clustered toward the top of the resultant rankings. The binary kernel discrimination approach yielded consistently superior rankings and would appear to have considerable potential for chemical screening applications.


Journal of Computer-aided Molecular Design | 2004

Generation of multiple pharmacophore hypotheses using multiobjective optimisation techniques.

Simon J. Cottrell; Valerie J. Gillet; Robin Taylor; David J. Wilton

SummaryPharmacophore methods provide a way of establishing a structure--activity relationship for a series of known active ligands. Often, there are several plausible hypotheses that could explain the same set of ligands and, in such cases, it is important that the chemist is presented with alternatives that can be tested with different synthetic compounds. Existing pharmacophore methods involve either generating an ensemble of conformers and considering each conformer of each ligand in turn or exploring conformational space on-the-fly. The ensemble methods tend to produce a large number of hypotheses and require considerable effort to analyse the results, whereas methods that vary conformation on-the-fly typically generate a single solution that represents one possible hypothesis, even though several might exist. We describe a new method for generating multiple pharmacophore hypotheses with full conformational flexibility being explored on-the-fly. The method is based on multiobjective evolutionary algorithm techniques and is designed to search for an ensemble of diverse yet plausible overlays which can then be presented to the chemist for further investigation.


Nucleic Acids Research | 2008

Structural change in a B-DNA helix with hydrostatic pressure

David J. Wilton; Mahua Ghosh; K. V. A. Chary; Kazuyuki Akasaka; Michael P. Williamson

Study of the effects of pressure on macromolecular structure improves our understanding of the forces governing structure, provides details on the relevance of cavities and packing in structure, increases our understanding of hydration and provides a basis to understand the biology of high-pressure organisms. A study of DNA, in particular, helps us to understand how pressure can affect gene activity. Here we present the first high-resolution experimental study of B-DNA structure at high pressure, using NMR data acquired at pressures up to 200 MPa (2 kbar). The structure of DNA compresses very little, but is distorted so as to widen the minor groove, and to compress hydrogen bonds, with AT pairs compressing more than GC pairs. The minor groove changes are suggested to lead to a compression of the hydration water in the minor groove.


Journal of Chemical Information and Modeling | 2006

Virtual screening using binary kernel discrimination : Analysis of pesticide data

David J. Wilton; Robert F. Harrison; Peter Willett; John S. Delaney; Kevin Lawson; Graham Mullier

This paper discusses the use of binary kernel discrimination (BKD) for identifying potential active compounds in lead-discovery programs. BKD was compared with established virtual screening methods in a series of experiments using pesticide data from the Syngenta corporate database. It was found to be superior to methods based on similarity searching and substructural analysis but inferior to a support vector machine. Similar conclusions resulted from application of the methods to a pesticide data set for which categorical activity data were available.


Proceedings of the Royal Society A: Mathematical, Physical and Engineering Sciences | 2014

A century of variation in the dependence of Greenland iceberg calving on ice sheet surface mass balance and regional climate change

Grant R. Bigg; Hua-Liang Wei; David J. Wilton; Yifan Zhao; Stephen A. Billings; Edward Hanna; Visakan Kadirkamanathan

Iceberg calving is a major component of the total mass balance of the Greenland ice sheet (GrIS). A century-long record of Greenland icebergs comes from the International Ice Patrols record of icebergs (I48N) passing latitude 48° N, off Newfoundland. I48N exhibits strong interannual variability, with a significant increase in amplitude over recent decades. In this study, we show, through a combination of nonlinear system identification and coupled ocean–iceberg modelling, that I48Ns variability is predominantly caused by fluctuation in GrIS calving discharge rather than open ocean iceberg melting. We also demonstrate that the episodic variation in iceberg discharge is strongly linked to a nonlinear combination of recent changes in the surface mass balance (SMB) of the GrIS and regional atmospheric and oceanic climate variability, on the scale of the previous 1–3 years, with the dominant causal mechanism shifting between glaciological (SMB) and climatic (ocean temperature) over time. We suggest that this is a change in whether glacial run-off or under-ice melting is dominant, respectively. We also suggest that GrIS calving discharge is episodic on at least a regional scale and has recently been increasing significantly, largely as a result of west Greenland sources.


Journal of Chemical Information and Modeling | 2006

Virtual Screening Using Binary Kernel Discrimination: Effect of Noisy Training Data and the Optimization of Performance

Beining Chen; Robert F. Harrison; Kitsuchart Pasupa; Peter Willett; David J. Wilton; David Wood; Xiao Qing Lewell

Binary kernel discrimination (BKD) uses a training set of compounds, for which structural and qualitative activity data are available, to produce a model that can then be applied to the structures of other compounds in order to predict their likely activity. Experiments with the MDL Drug Data Report database show that the optimal value of the smoothing parameter, and hence the predictive power of BKD, is crucially dependent on the number of false positives in the training set. It is also shown that the best results for BKD are achieved using one particular optimization method for the determination of the smoothing parameter that lies at the heart of the method and using the Jaccard/Tanimoto coefficient in the kernel function that is used to compute the similarity between a test set molecule and the members of the training set.

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Marielle Saunois

Centre national de la recherche scientifique

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P. Bousquet

Centre national de la recherche scientifique

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Philippe Ciais

Centre national de la recherche scientifique

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Josep G. Canadell

Commonwealth Scientific and Industrial Research Organisation

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