Data Mining of Fractured Experimental Data Using Neurofuzzy Logic–Discovering and Integrating Knowledge Hidden in Multiple Formulation Databases for a Fluid-Ded Granulation Process
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Abstract
In the pharmaceutical field, current practice in gaining process understanding by
data analysis or knowledge discovery has generally focused on dealing with single
experimental databases. This limits the level of knowledge extracted in the situation
where data from a number of sources, so called fractured data, contain interrelated
information. This situation is particularly relevant for complex processes involving
a number of operating variables, such as a fluid-bed granulation. This study investigated
three data mining strategies to discover and integrate knowledge "hidden" in a number
of small experimental databases for a fluid-bed granulation process using neurofuzzy
logic technology. Results showed that more comprehensive domain knowledge was discovered
from multiple databases via an appropriate data mining strategy. This study also demonstrated
that the textual information excluded in individual databases was a critical parameter
and often acted as the precondition for integrating knowledge extracted from different
databases. Consequently generic knowledge of the domain was discovered, leading to
an improved understanding of the granulation process.