info:eu-repo/semantics/article
Kohonen classification applying 'missing variables' criterion to evaluate the p-boronophenylalanine human-body-concentration decreasing profile of boron neutron capture therapy patients
Fecha
2011-06Registro en:
Magallanes, Jorge Federico; Garcia Reiriz, Alejandro Gabriel; Líberman, Sara; Zupan, Jure; Kohonen classification applying 'missing variables' criterion to evaluate the p-boronophenylalanine human-body-concentration decreasing profile of boron neutron capture therapy patients; John Wiley & Sons Ltd; Journal of Chemometrics; 25; 6; 6-2011; 340-348
0886-9383
CONICET Digital
CONICET
Autor
Magallanes, Jorge Federico
Garcia Reiriz, Alejandro Gabriel
Líberman, Sara
Zupan, Jure
Resumen
The irradiation dose in tumor and healthy tissue of a boron neutron capture therapy (BNCT) patient depends on the boron concentration in blood. In most treatments, this concentration is experimentally determined before and after irradiation but not while irradiation is being carried out because it is troublesome to take the blood samples when the patient remains isolated in the irradiation room. A few models are used to predict the boron profile during that period, which until now involves a biexponential decay. For the prediction of decay concentration profiles of the p-boronophenylalanine (BPA) in the human body during BNCT treatment, a Kohonen-based neural network method is suggested. The results of various (20×20×40 Kohonen network) models based on different trainings on the data set of 67 concentration sets (profiles) are described and discussed. The prediction ability and robustness of the modeling method were tested by the leave-one-out procedure. The results show that the method is very robust and mostly independent of small variations. It can yield predictions, root mean squared prediction error (RMSPE), with a maximum of 3.30μgg-1 for the present cases. In order to show the abilities and limitations of the method, the best and the few worst results are discussed in detail. It should be emphasized that one of the main advantages of this method is the automatic improvement in the prediction ability and robustness of the model by feeding it with an increasing number of data.