Title of article
Automated classification of brain tumours from short echo time in vivo MRS data using Gaussian Decomposition and Bayesian Neural Networks
Author/Authors
Arizmendi، نويسنده , , Carlos and Sierra، نويسنده , , Daniel A. and Vellido، نويسنده , , Alfredo and Romero، نويسنده , , Enrique، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2014
Pages
12
From page
5296
To page
5307
Abstract
Neuro-oncologists must ultimately rely on their acquired knowledge and accumulated experience to undertake the sensitive task of brain tumour diagnosis. This task strongly depends on indirect, non-invasive measurements, which are the source of valuable data in the form of signals and images. Expert radiologists should benefit from their use as part of an at least partially automated computer-based medical decision support system. This paper focuses on Magnetic Resonance Spectroscopy signal analysis and illustrates a method that combines Gaussian Decomposition, dimensionality reduction by Moving Window with Variance Analysis and classification using adaptively regularized Artificial Neural Networks. The method yields encouraging results in the task of binary classification of human brain tumours, even for tumour types that have seldom been analyzed from this viewpoint.
Keywords
Brain tumour diagnosis , Magnetic resonance spectroscopy , Moving Window and Variance Analysis , Bayesian neural networks
Journal title
Expert Systems with Applications
Serial Year
2014
Journal title
Expert Systems with Applications
Record number
2354922
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