Biological state-evaluating apparatus, biological state-evaluating method, biological state-evaluating system, biological state-evaluating program and recording medium


Ontology type: sgo:Patent     


Patent Info

DATE

2010-11-04T00:00

AUTHORS

Mitsuo Takahashi , Toshihiko Ando

ABSTRACT

An object is to provide a biological state-evaluating apparatus, a biological state-evaluating method, a biological state-evaluating system, a biological state-evaluating program, and a recording medium that can evaluate a biological state with high accuracy by using the concentrations of amino acids in blood. According to the present invention, a Bayesian network method is performed by using previously obtained amino acid concentration data on the concentration values of amino acids and previously obtained biological state data on the numerical value indicative of the biological state so that a Bayesian network model that includes, as explanatory variables, the concentration values of amino acids and the numerical value indicative of the biological state is created, and the biological state of the subject is evaluated by using the created Bayesian network model and the previously obtained amino acid concentration data on the subject. More... »

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