Functional genomic hypothesis generation and experimentation by a robot scientist
Top Cited Papers
- 1 January 2004
- journal article
- research article
- Published by Springer Nature in Nature
- Vol. 427 (6971) , 247-252
- https://doi.org/10.1038/nature02236
Abstract
The question of whether it is possible to automate the scientific process is of both great theoretical interest and increasing practical importance because, in many scientific areas, data are being generated much faster than they can be effectively analysed. We describe a physically implemented robotic system that applies techniques from artificial intelligence to carry out cycles of scientific experimentation. The system automatically originates hypotheses to explain observations, devises experiments to test these hypotheses, physically runs the experiments using a laboratory robot, interprets the results to falsify hypotheses inconsistent with the data, and then repeats the cycle. Here we apply the system to the determination of gene function using deletion mutants of yeast (Saccharomyces cerevisiae) and auxotrophic growth experiments. We built and tested a detailed logical model (involving genes, proteins and metabolites) of the aromatic amino acid synthesis pathway. In biological experiments that automatically reconstruct parts of this model, we show that an intelligent experiment selection strategy is competitive with human performance and significantly outperforms, with a cost decrease of 3-fold and 100-fold (respectively), both cheapest and random-experiment selection.Keywords
This publication has 15 references indexed in Scilit:
- MIPS: a database for genomes and protein sequencesNucleic Acids Research, 2002
- The computational support of scientific discoveryInternational Journal of Human-Computer Studies, 2000
- Abduction and InductionPublished by Springer Nature ,2000
- KEGG: Kyoto Encyclopedia of Genes and GenomesNucleic Acids Research, 2000
- Discovery tools for science appsCommunications of the ACM, 1999
- Active training of backpropagation neural networks using the learning by experimentation methodologyAnnals of Operations Research, 1997
- Active Learning with Statistical ModelsJournal of Artificial Intelligence Research, 1996
- Structure-activity relationships derived by machine learning: the use of atoms and their bond connectivities to predict mutagenicity by inductive logic programming.Proceedings of the National Academy of Sciences, 1996
- Scientific DiscoveryPublished by MIT Press ,1987
- Genetic Control of Biochemical Reactions in NeurosporaProceedings of the National Academy of Sciences, 1941