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Artificial neural network modeling of apoptosis in...
Journal article

Artificial neural network modeling of apoptosis in gammairradiated human lymphocytes

Abstract

PURPOSE: To develop an artificial neural network (ANN) model of apoptotic response in gamma irradiated human lymphocytes. To assess the feasibility of training ANN radiobiological models using data collected with flow cytometry. MATERIALS AND METHODS: Irradiated isolated human lymphocytes were labelled with Annexin V-Fluorescein Isothiocyanate (FITC) and 7-Amino-Actinomycin D (7AAD) then analysed using flow cytometry. Twenty-four dose responses per donor from 14 donors were collected from a flow cytometer and used in model development as the training and cross-validation datasets. The general ANN model architecture was a multi-layer perceptron using the mean squared error of a cross validation dataset as the objective function. The ANN model was optimized by varying the number of hidden layers and the number of processing elements per layer. The optimized model constituted of three hidden layers with 80, 40, and 10 hidden layers in the first, second, and third layers respectively. RESULTS: The optimized model was used to simulate dose responses at the training doses of 0, 2, 4 and 8 Gray. A strong agreement between the model and measured dose responses was observed. The model was also used to simulate a dose response at 0.1 Gray and results were compared to the measured dose response from a donor not used in model development. Again, strong agreement between the model and the observed dose response was found. CONCLUSIONS: This study shows that artificial neural networks can be trained to provide high resolution, high accuracy models of multivariate radiobiological data collected by flow cytometry.

Authors

Liberda JJ; Schnarr K; Coulibaly P; Boreham DR

Journal

International Journal of Radiation Biology, Vol. 81, No. 11, pp. 827–840

Publisher

Taylor & Francis

Publication Date

November 1, 2005

DOI

10.1080/09553000600554283

ISSN

0955-3002

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