<p>This example illustrates the GNN's mode of action in computer-assisted peptide design: In the training set, the model is taught the properties of the current peptides (biological activity, stability) and the adopted cells build virtual peptides that are evaluated in the genetic algorithm-based optimization. The peptide optimization process is organized in multiple consecutive cycles. The start population of peptides is based on experts' knowledge concerning the target, e.g. natural ligands, known analogs or compounds that bind to similar targets. The trained GNN is used as a fitness function in a genetic algorithm. Newly generated sequences then have to be synthesized and analyzed in biological assays, before the next GNN training is ini...
<div><p>The discovery of peptides possessing high biological activity is very challenging due to the...
The discovery of peptide substrates for enzymes with exclusive, selective activities is a central go...
The terms phenotypic and genotypic learning refer to naturally inspired adaptive algo-rithms, based ...
<div><p>Peptide ligands of G protein-coupled receptors constitute valuable natural lead structures f...
Computer algorithms help in the identification and optimization of peptides with desired structure a...
A technique for systematic peptide variation by a combination of rational and evolutionary approache...
As an advanced approach to identify suitable targeting molecules required for various diagnostic and...
<p>depiction of EC<sub>50</sub> values of the receptor activating potency (A) and of the metabolic s...
<p>The process is divided into three cycles, an internal, genetic algorithm (GA)-like cycle 1, a gen...
A method for the rational design of locally encoded amino acid sequence features using artificial ne...
©1995 Massachusetts Institute of Technology PressPresented at Evolutionary Programming IV: Proceedi...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
The prominence of endogenous peptide ligands targeted to receptors makes peptides with the desired b...
The probabilistic neural network (PNN) is a neural network architecture that approximates the functi...
This pap er presents exp erimental results ob-tained during the training of an analog hard-ware neur...
<div><p>The discovery of peptides possessing high biological activity is very challenging due to the...
The discovery of peptide substrates for enzymes with exclusive, selective activities is a central go...
The terms phenotypic and genotypic learning refer to naturally inspired adaptive algo-rithms, based ...
<div><p>Peptide ligands of G protein-coupled receptors constitute valuable natural lead structures f...
Computer algorithms help in the identification and optimization of peptides with desired structure a...
A technique for systematic peptide variation by a combination of rational and evolutionary approache...
As an advanced approach to identify suitable targeting molecules required for various diagnostic and...
<p>depiction of EC<sub>50</sub> values of the receptor activating potency (A) and of the metabolic s...
<p>The process is divided into three cycles, an internal, genetic algorithm (GA)-like cycle 1, a gen...
A method for the rational design of locally encoded amino acid sequence features using artificial ne...
©1995 Massachusetts Institute of Technology PressPresented at Evolutionary Programming IV: Proceedi...
Novel protein sequences arise through mutation. These mutations may be deleterious, beneficial, or n...
The prominence of endogenous peptide ligands targeted to receptors makes peptides with the desired b...
The probabilistic neural network (PNN) is a neural network architecture that approximates the functi...
This pap er presents exp erimental results ob-tained during the training of an analog hard-ware neur...
<div><p>The discovery of peptides possessing high biological activity is very challenging due to the...
The discovery of peptide substrates for enzymes with exclusive, selective activities is a central go...
The terms phenotypic and genotypic learning refer to naturally inspired adaptive algo-rithms, based ...