An important application of Synthetic Biology is the engineering of the host cell system to yield useful products. However, an increase in the scale of the host system leads to huge design space and requires a large number of validation trials with high experimental costs. A comprehensible machine learning approach that efficiently explores the hypothesis space and guides experimental design is urgently needed for the Design-Build-Test-Learn (DBTL) cycle of the host cell system. We introduce a novel machine learning framework ILP-iML1515 based on Inductive Logic Programming (ILP) that performs abductive logical reasoning and actively learns from training examples. In contrast to numerical models, ILP-iML1515 is built on comprehensible logic...
Modeling and computational tools are proven to be extremely successful in streamlining the design an...
Through advanced mechanistic modeling and the generation of large high-quality datasets, machine lea...
Increasingly, experimental data on biological systems are obtained from several sources and computat...
The design of synthetic gene networks (SGNs) has advanced to the extent that novel genetic circuits ...
Techniques for detecting synthetic lethal mutations in double gene deletion experiments are emerging...
We aim to partially automate some aspects of scientific work, namely the processes of forming hypoth...
Advances in genome sequencing and high-throughput technologies have boosted the development of Synth...
This work was supported by an EMBO Long-term fellowship, ALTF 606–2018. This funding source did not ...
Genome-Scale Metabolic Models (GEMMs) are powerful reconstructions of biological systems that help m...
Biological studies are data-intensive by nature. We have witnessed a rapid accumulation of various t...
Along with the rapid scale-up of biological knowledge bases, mechanistic models, especially metaboli...
Biocomputing uses molecular biology parts as the hardware to implement computational devices. By fol...
Synthetic gene circuits allow programming in DNA the expression of a phenotype at a given environmen...
Optimization of biological networks is often limited by wet lab labor and cost, and the lack of conv...
The increasing availability of large-scale, complex data has made research into how human genomes de...
Modeling and computational tools are proven to be extremely successful in streamlining the design an...
Through advanced mechanistic modeling and the generation of large high-quality datasets, machine lea...
Increasingly, experimental data on biological systems are obtained from several sources and computat...
The design of synthetic gene networks (SGNs) has advanced to the extent that novel genetic circuits ...
Techniques for detecting synthetic lethal mutations in double gene deletion experiments are emerging...
We aim to partially automate some aspects of scientific work, namely the processes of forming hypoth...
Advances in genome sequencing and high-throughput technologies have boosted the development of Synth...
This work was supported by an EMBO Long-term fellowship, ALTF 606–2018. This funding source did not ...
Genome-Scale Metabolic Models (GEMMs) are powerful reconstructions of biological systems that help m...
Biological studies are data-intensive by nature. We have witnessed a rapid accumulation of various t...
Along with the rapid scale-up of biological knowledge bases, mechanistic models, especially metaboli...
Biocomputing uses molecular biology parts as the hardware to implement computational devices. By fol...
Synthetic gene circuits allow programming in DNA the expression of a phenotype at a given environmen...
Optimization of biological networks is often limited by wet lab labor and cost, and the lack of conv...
The increasing availability of large-scale, complex data has made research into how human genomes de...
Modeling and computational tools are proven to be extremely successful in streamlining the design an...
Through advanced mechanistic modeling and the generation of large high-quality datasets, machine lea...
Increasingly, experimental data on biological systems are obtained from several sources and computat...