Literature DB >> 16433028

Simulating soft data to make soft data applicable to simulation.

Mathias Wagner1, Malgorzata Zamelczyk-Pajewska, Constantin Landes, Holger Sudhoff, Joanna Kosmider, Tereza Richards, Ulrike-Marie Krause, Robin Stark, Andreas Groh, Frank Weichert, Roland Linder.   

Abstract

BACKGROUND: Biomedical processes are often influenced by measures considered "non-crisp", "soft" or "subjective". Despite the growing awareness of the importance of such measures, they are rarely considered in biomedical simulation. This study introduces an input generator for soft data (input generator SD) that makes soft data applicable to simulation.
MATERIALS AND METHODS: Machine learning approaches and standard regression techniques were applied to simulate odour intensity ratings.
RESULTS: The performance of all the applied methods was satisfactory and the results can be used to modify systems biological mathematical models.
CONCLUSION: Soft data should no longer be discounted in systems biological simulations. Exemplarily, it can be demonstrated that the input generator SD produces results that are similar to those that the simulated system can generate. Machine learning and/or appropriate conventional mathematical approaches may be applied to simulate noncrisp processes that can be used to modify mathematical models of any granularity.

Mesh:

Year:  2006        PMID: 16433028

Source DB:  PubMed          Journal:  In Vivo        ISSN: 0258-851X            Impact factor:   2.155


  1 in total

1.  [Analysis of histological datasets by signal processing methods].

Authors:  F Weichert; A Groh; A Shamaa; T Richards; S Awd; R Linder; C A Landes; M Wagner
Journal:  Pathologe       Date:  2008-11       Impact factor: 1.011

  1 in total

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