2016
DOI: 10.12955/cbup.v4.845
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An Artificial Neural Network Design for Determination of Hashimoto’s Thyroiditis Sub-Groups

Abstract: Abstract:In this study, an artificial neural network was developed for estimating Hashimoto's Thyroiditis subgroups. Medical analysis and measurements from 75 patients were used to determine the parameters most effective on disease sub-groups. The study used statistical analyses and an artificial neural network that was trained by the determined parameters. The neural network had four inputs: thyroid stimulating hormone, free thyroxine (fT4), right lobe size (RLS), and RLS 2 -fT4 4 , and two outputs for three … Show more

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