Complex systems made simple
Just as the name implies, complex systems are difficult to tease apart. An organism's genome, a bioÂchemÂical reacÂtion, or even a social network all contain many interdependent components—and changing any one of them can have perÂvaÂsive effects on all the others. In the case of a very large system, like the human genome, which contains 20,000 interÂconÂnected genes, it's impossible to monitor the whole system at once.
But that may not matter anymore. In a paper published in the prestigious multidisciplinary journal Proceedings of the National Academy of Science, NorthÂeastern network scientific have developed an algorithm capable of idenÂtiÂfying the subset of components—or nodes—that are necÂesÂsary to reveal a complex system's overall nature.
The approach takes advanÂtage of the interÂdeÂpenÂdent nature of comÂplexity to devise a method for observing sysÂtems that are othÂerÂwise beyond quanÂtiÂtaÂtive scrutiny.
"ConÂnectÂedÂness is the essence of complex systems," said Albert-​​László Barabási, one of the paper's authors and a Distinguished Professor of Âé¶¹ÒùÔºics with joint appointments in biology and the ColÂlege of ComÂputer and InforÂmaÂtion SciÂence. "Thanks to the links between comÂpoÂnents, inforÂmaÂtion is disÂtribÂuted throughout a netÂwork. Hence I do not need to monÂitor everyone to have a full sense of what the system does."
Barabási's colÂlabÂoÂraÂtors comÂprise Jean-​​Jacques SloÂtine of M.I.T. and Yang-​​Yu Liu, lead author and research assoÂciate proÂfessor in Northeastern's Center for ComÂplex NetÂwork Research, for which Barabási is the founding director.
Using their novel approach, the researchers first idenÂtify all the mathÂeÂmatÂical equaÂtions that describe the system's dynamics. For example, in a bioÂchemÂical reacÂtion system, sevÂeral smaller reacÂtions between periphÂerÂally related molÂeÂcules may colÂlecÂtively account for the final product. By looking at how the variÂables are affected by each of the reacÂtions, the researchers can then draw a graphÂical map of the system. The nodes that form the founÂdaÂtion of the map reveal themÂselves as indisÂpenÂsible to underÂstanding any other part of the whole.
"What surÂprised me," said Liu, "was that the necÂesÂsary nodes are also sufÂfiÂcient in most cases." That is, the indisÂpenÂsible nodes can tell the whole story without drawing on any of the other components.
The metaÂbolic system of any organism is a colÂlecÂtion of hunÂdreds of molÂeÂcules involved in thouÂsands of bioÂchemÂical reacÂtions. The new method, which comÂbines experÂtise from conÂtrol theory, graph theory, and netÂwork sciÂence, reduces large comÂplex sysÂtems like this to a set of essenÂtial "sensor nodes."
In the case of metabÂoÂlism, the researchers' algoÂrithm could simÂplify the process of idenÂtiÂfying bioÂmarkers, which are molÂeÂcules in the blood that tell clinÂiÂcians whether an indiÂvidual is healthy or sick. "Most of the curÂrent bioÂmarkers were selected almost by chance," said Barabási. "Chemists and docÂtors found that they happen to work. ObservÂability offers a rational way to choose bioÂmarkers, if we know the system we need to monitor."
More information:
Journal information: Proceedings of the National Academy of Sciences
Provided by Northeastern University