Iterative screening has emerged as a promising approach to increase the efficiency of screening campaigns compared to traditional high throughput approaches. By learning from a subset of the compound library, inferences on what compounds to screen next can be made by predictive models, resulting in more efficient screening. One way to evaluate screening is to consider the cost of screening compared to the gain associated with finding an active compound. In this work, we introduce a conformal predictor coupled with a gain-cost function with the aim to maximise gain in iterative screening. Using this setup we were able to show that by evaluating the predictions on the training data, very accurate predictions on what settings will produce the ...
High Throughput Screening (HTS) is a common approach in life science to discover chemical matter tha...
<p>High throughput and high content screening involve determination of the effect of many compounds ...
BACKGROUND: Docking and scoring large libraries of ligands against target proteins forms the basis o...
Iterative screening has emerged as a promising approach to increase the efficiency of screening camp...
High-throughput screening, where thousands of molecules rapidly can be assessed for activity against...
The choice of how much money and resources to spend to understand certain problems is of high intere...
Despite the usefulness of high-throughput screening (HTS) in drug discovery, for some systems, low a...
Despite the usefulness of high-throughput screening (HTS) in drug discovery, for some systems, low a...
Additional file 2. Information about the applied datasets, performance of the predictive models, and...
Iterative screening is a process in which screening is done in batches, with each batch filled by us...
The versatility of similarity searching and quantitative structure-activity relationships to model t...
Machine learning is widely used in drug development to predict activity in biological assays based o...
Additional file 1. Plots showing the results of the gain-cost function for each dataset using three ...
Modern high-throughput screening (HTS) is a well-established approach for hit finding in drug discov...
With increased automation and larger compound collections, the development of high-throughput screen...
High Throughput Screening (HTS) is a common approach in life science to discover chemical matter tha...
<p>High throughput and high content screening involve determination of the effect of many compounds ...
BACKGROUND: Docking and scoring large libraries of ligands against target proteins forms the basis o...
Iterative screening has emerged as a promising approach to increase the efficiency of screening camp...
High-throughput screening, where thousands of molecules rapidly can be assessed for activity against...
The choice of how much money and resources to spend to understand certain problems is of high intere...
Despite the usefulness of high-throughput screening (HTS) in drug discovery, for some systems, low a...
Despite the usefulness of high-throughput screening (HTS) in drug discovery, for some systems, low a...
Additional file 2. Information about the applied datasets, performance of the predictive models, and...
Iterative screening is a process in which screening is done in batches, with each batch filled by us...
The versatility of similarity searching and quantitative structure-activity relationships to model t...
Machine learning is widely used in drug development to predict activity in biological assays based o...
Additional file 1. Plots showing the results of the gain-cost function for each dataset using three ...
Modern high-throughput screening (HTS) is a well-established approach for hit finding in drug discov...
With increased automation and larger compound collections, the development of high-throughput screen...
High Throughput Screening (HTS) is a common approach in life science to discover chemical matter tha...
<p>High throughput and high content screening involve determination of the effect of many compounds ...
BACKGROUND: Docking and scoring large libraries of ligands against target proteins forms the basis o...