S. Vineetha, C. Chandra Shekara Bhat, S. M. Idicula
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引用次数: 4
Abstract
The paper presents a multilayered dynamic neural fuzzy network (DNFN) to extract regulatory relationship among genes and reconstruct gene regulatory network for circulating plasma RNA data from colon cancer patients. This method combines the merits of connectionist and fuzzy approaches. It encodes the knowledge learned in the form of fuzzy rules and processes data following fuzzy reasoning principles. While the dynamic aspect of gene regulation was taken into account through the on-line learning of fuzzy rules, the structural learning together with the parameter learning form a fast learning algorithm for building a small, yet powerful, dynamic neural fuzzy network. One of the main advantages of DNFN is that there is no predetermination of hidden nodes, since it can find its optimal structure automatically and quickly. The inferred knowledge using the above network may provide biological insights that can be used to design and interpret further experiments.
In Silico BiologyComputer Science-Computational Theory and Mathematics
CiteScore
2.20
自引率
0.00%
发文量
1
期刊介绍:
The considerable "algorithmic complexity" of biological systems requires a huge amount of detailed information for their complete description. Although far from being complete, the overwhelming quantity of small pieces of information gathered for all kind of biological systems at the molecular and cellular level requires computational tools to be adequately stored and interpreted. Interpretation of data means to abstract them as much as allowed to provide a systematic, an integrative view of biology. Most of the presently available scientific journals focus either on accumulating more data from elaborate experimental approaches, or on presenting new algorithms for the interpretation of these data. Both approaches are meritorious.