VYŠKOVSKÝ, Roman, Eva JANOUŠOVÁ a Daniel SCHWARZ. Artificial Neural Networks for First-episode Schizophrenia Classification Based on MRI Data. In ISCAMI 2016 Book of Abstracts. 2016.
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Základní údaje
Originální název Artificial Neural Networks for First-episode Schizophrenia Classification Based on MRI Data
Autoři VYŠKOVSKÝ, Roman, Eva JANOUŠOVÁ a Daniel SCHWARZ.
Vydání ISCAMI 2016 Book of Abstracts, 2016.
Další údaje
Originální jazyk angličtina
Typ výsledku Konferenční abstrakt
Obor 20200 2.2 Electrical engineering, Electronic engineering, Information engineering
Stát vydavatele Česká republika
Utajení není předmětem státního či obchodního tajemství
Organizační jednotka Lékařská fakulta
Klíčová slova česky umělé neuronové sítě; diagnostika schizofrenie
Klíčová slova anglicky artificial neural networks; schizophrenia diagnostics
Příznaky Mezinárodní význam
Změnil Změnil: RNDr. Roman Vyškovský, Ph.D., učo 370313. Změněno: 14. 7. 2016 08:41.
Anotace
Diagnostics of schizophrenia is based on self-report, manifestation of symptoms, psychiatrist's experience and interview with patient's family. No objective diagnostic tool is available and therefore there is a demand for computer-aided tools that would help in recognition of schizophrenia in the first episode. Early detection could accelerate deployment of antipsychotics and improve prognosis of patients suffering from this severe mental disorder. In this study, we applied several types of artificial neural networks - multilayer perceptron, radial basis function network (RBF) and learning vector quantization network - and explored the influence of their parameters such as number of input or hidden neurons on the classification performance. Our dataset consisted of 104 T1-weighted magnetic resonance images (52 patients and 52 control subjects) processed with the use of optimized voxel based morphometry. We selected only the most significant voxels as the features based on two-sample t-test. To ensure a methodologically appropriate framework, both the feature selection step and the classification step were validated using leave-one-out cross-validation. The highest accuracy among the proposed classifiers was 76% and it was achieved by RBF network.
VytisknoutZobrazeno: 18. 9. 2024 23:58