Title :
Global Strategy of Active Machine Learning for Complex Systems: Embryogenesis Application on Cell Division Detection
Author :
Faure, Emmanuel ; Taramasco, Carla ; Demongeot, Jacques ; Duloquin, Louise ; Lombardot, Benoît ; Peyrieras, Nadine ; Bourgine, Paul
Author_Institution :
Centre de Rech. en Epistemologie Appl., Ecole Polytech., Paris, France
Abstract :
The intrinsic complexity of biological systems creates huge amounts of unlabeled experimental data. The exploitation of such data can be achieved by performing active machine learning accompanied by a high-level symbolic expert who defines categories and their best boundaries using as little data as possible. We present a global strategy for designing active machine learning methods suited for the observation and analysis of complex systems, such as embryonic development. We developed a procedure that uses all available knowledge, whether gathered manually or automatically, and is able to readjust when new data is provided. We show that it is a powerful method for the investigation of the morphogenetic features of embryogenesis and specifically mitosis detection. It will make possible to properly reconstruct the in vivo cell morphodynamics, a main challenge of the post-genomic era.
Keywords :
biology computing; large-scale systems; learning (artificial intelligence); active machine learning methods; cell division detection; cell morphodynamics; complex systems; embryogenesis application; embryogenesis morphogenetic features; global strategy; high-level symbolic expert; mitosis detection; Animal structures; Biological systems; Cancer; Conferences; Drugs; Embryo; Learning systems; Machine learning; Microscopy; Phase detection; Active machine learning; Complex Systems; Mitosis detection;
Conference_Titel :
Advanced Information Networking and Applications Workshops (WAINA), 2010 IEEE 24th International Conference on
Conference_Location :
Perth, WA
Print_ISBN :
978-1-4244-6701-3
DOI :
10.1109/WAINA.2010.80