Abstract
Genetic programming (GP) is used to classify tumours based on 1H nuclear magnetic resonance (NMR) spectra of biopsy extracts. Analysis of such data would ideally give not only a classification result but also indicate which parts of the spectra are driving the classification (i.e. feature selection). Experiments on a database of variables derived from 1H NMR spectra from human brain tumour extracts (n = 75) are reported, showing GP's classification abilities and comparing them with that of a neural network. GP successfully classified the data into meningioma and non-meningioma classes. The advantage over the neural network method was that it made use of simple combinations of a small group of metabolites, in particular glutamine, glutamate and alanine. This may help in the choice of the most informative NMR spectroscopy methods for future non-invasive studies in patients.
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Gray, H. F., Maxwell, R. J., Martínez-Pérez, I., Arús, C., & Cerdán, S. (1998). Genetic programming for classification and feature selection: Analysis of 1H nuclear magnetic resonance spectra from human brain tumour biopsies. NMR in Biomedicine, 11(4–5), 217–224. https://doi.org/10.1002/(SICI)1099-1492(199806/08)11:4/5<217::AID-NBM512>3.0.CO;2-4
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