2,256 research outputs found
BindingDB in 2015: A public database for medicinal chemistry, computational chemistry and systems pharmacology.
BindingDB, www.bindingdb.org, is a publicly accessible database of experimental protein-small molecule interaction data. Its collection of over a million data entries derives primarily from scientific articles and, increasingly, US patents. BindingDB provides many ways to browse and search for data of interest, including an advanced search tool, which can cross searches of multiple query types, including text, chemical structure, protein sequence and numerical affinities. The PDB and PubMed provide links to data in BindingDB, and vice versa; and BindingDB provides links to pathway information, the ZINC catalog of available compounds, and other resources. The BindingDB website offers specialized tools that take advantage of its large data collection, including ones to generate hypotheses for the protein targets bound by a bioactive compound, and for the compounds bound by a new protein of known sequence; and virtual compound screening by maximal chemical similarity, binary kernel discrimination, and support vector machine methods. Specialized data sets are also available, such as binding data for hundreds of congeneric series of ligands, drawn from BindingDB and organized for use in validating drug design methods. BindingDB offers several forms of programmatic access, and comes with extensive background material and documentation. Here, we provide the first update of BindingDB since 2007, focusing on new and unique features and highlighting directions of importance to the field as a whole
Statistical mechanics of geomagnetic orientation in sediment bacteria
Also published as: Biological Bulletin 159 (1980): 459-460Last year we reported on time-of-transit experiments in which magnetically
orienting bacteria crossed a 1-mm stretch in the direction of a uniform
magnetic field. The bacteria were found to behave as tiny self-propelled
compass needles subject both to magnetic field alignment and to the randomizing
effect of thermal agitation. In strong fields, magnetic bacteria are
held in tight aligment; in weaker fields, their swimming paths meander more
and transit times are greater. Paul Langevin derived an expression for the distribution of orientation in
an ensemble of free-moving dipole particles as a function of ambient field
strength. His theory becomes applicable to our experiments when bacterial
migration is analyzed as a sequence of short steps during each of which the
cell swims in a direction randomly selected from the Langevin distribution .
The duration of each step, Δt, is actually a time constant of the cell's loss
of directionality due to thermal agitation. By thus treating the migration
as a process of random walk with drift, we are able to predict the mean and
variance of the time of transit across a 1-mm stretch.Prepared for the Office of Naval Research under Contract
N00014-79-C-0071
Creditor Control in Financially Distressed Firms: Empirical Evidence
In this Article we present the results of empirical research that examines how creditor control is manifested in financially troubled firms that have to renegotiate their debt contracts
Rollins Alumni Record, Summer 1977
Dean Charles A. Welch Retire
Target-Free Compound Activity Prediction via Few-Shot Learning
Predicting the activities of compounds against protein-based or phenotypic
assays using only a few known compounds and their activities is a common task
in target-free drug discovery. Existing few-shot learning approaches are
limited to predicting binary labels (active/inactive). However, in real-world
drug discovery, degrees of compound activity are highly relevant. We study
Few-Shot Compound Activity Prediction (FS-CAP) and design a novel neural
architecture to meta-learn continuous compound activities across large
bioactivity datasets. Our model aggregates encodings generated from the known
compounds and their activities to capture assay information. We also introduce
a separate encoder for the unknown compound. We show that FS-CAP surpasses
traditional similarity-based techniques as well as other state of the art
few-shot learning methods on a variety of target-free drug discovery settings
and datasets.Comment: 9 pages, 2 figure
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