Literature DB >> 19860726

The I.F.A.S.T. model allows the prediction of conversion to Alzheimer disease in patients with mild cognitive impairment with high degree of accuracy.

M Buscema1, E Grossi, M Capriotti, C Babiloni, P Rossini.   

Abstract

This paper presents the results obtained with the innovative use of special types of artificial neural networks (ANNs) assembled in a novel methodology named IFAST (implicit function as squashing time) capable of compressing the temporal sequence of electroencephalographic (EEG) data into spatial invariants. The aim of this study is to test the potential of this parallel and nonlinear EEG analysis technique in providing an automatic classification of mild cognitive impairment (MCI) subjects who will convert to Alzheimer's disease (AD) with a high degree of accuracy. Eyes-closed resting EEG data (10-20 electrode montage) were recorded in 143 amnesic MCI subjects. Based on 1-year follow up, the subjects were retrospectively classified to MCI converted to AD and MCI stable. The EEG tracks were successively filtered according to four different frequency ranges, in order to evaluate the hypotheses that a specific range, corresponding to specific brain wave type, could provide a better classification (0.12 Hz, 12.2 - 29.8 Hz; 30.2 - 40 Hz, and finally Notch Filter 48 - 50 Hz). The spatial content of the EEG voltage was extracted by IFAST step-wise procedure using ANNs. The data input for the classification operated by ANNs were not the EEG data, but the connections weights of a nonlinear auto-associative ANN trained to reproduce the recorded EEG tracks. These weights represented a good model of the peculiar spatial features of the EEG patterns at scalp surface. The classification based on these parameters was binary and performed by a supervised ANN. The best results distinguishing between MCI stable and MCI/AD reached to 85.98%.(012 Hz band). And confirmed the working hypothesis that a correct automatic classification can be obtained extracting spatial information content of the resting EEG voltage by ANNs and represent the basis for research aimed at integrating spatial and temporal information content of the EEG. These results suggest that this low-cost procedure can reliably distinguish eyes-closed resting EEG data in individual MCI subjects who will have different prognosis at 1-year follow up, and is promising for a large-scale periodic screening of large populations at amnesic MCI subjects at risk of AD.

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Year:  2010        PMID: 19860726     DOI: 10.2174/156720510790691137

Source DB:  PubMed          Journal:  Curr Alzheimer Res        ISSN: 1567-2050            Impact factor:   3.498


  12 in total

1.  Sensory evoked and event related oscillations in Alzheimer's disease: a short review.

Authors:  Görsev G Yener; Erol Başar
Journal:  Cogn Neurodyn       Date:  2010-10-21       Impact factor: 5.082

Review 2.  Functional magnetic resonance imaging of semantic memory as a presymptomatic biomarker of Alzheimer's disease risk.

Authors:  Michael A Sugarman; John L Woodard; Kristy A Nielson; Michael Seidenberg; J Carson Smith; Sally Durgerian; Stephen M Rao
Journal:  Biochim Biophys Acta       Date:  2011-10-04

3.  Pregnancy risk factors in autism: a pilot study with artificial neural networks.

Authors:  Enzo Grossi; Federica Veggo; Antonio Narzisi; Angelo Compare; Filippo Muratori
Journal:  Pediatr Res       Date:  2015-11-02       Impact factor: 3.756

Review 4.  Measures of resting state EEG rhythms for clinical trials in Alzheimer's disease: Recommendations of an expert panel.

Authors:  Claudio Babiloni; Xianghong Arakaki; Hamed Azami; Karim Bennys; Katarzyna Blinowska; Laura Bonanni; Ana Bujan; Maria C Carrillo; Andrzej Cichocki; Jaisalmer de Frutos-Lucas; Claudio Del Percio; Bruno Dubois; Rebecca Edelmayer; Gary Egan; Stephane Epelbaum; Javier Escudero; Alan Evans; Francesca Farina; Keith Fargo; Alberto Fernández; Raffaele Ferri; Giovanni Frisoni; Harald Hampel; Michael G Harrington; Vesna Jelic; Jaeseung Jeong; Yang Jiang; Maciej Kaminski; Voyko Kavcic; Kerry Kilborn; Sanjeev Kumar; Alice Lam; Lew Lim; Roberta Lizio; David Lopez; Susanna Lopez; Brendan Lucey; Fernando Maestú; William J McGeown; Ian McKeith; Davide Vito Moretti; Flavio Nobili; Giuseppe Noce; John Olichney; Marco Onofrj; Ricardo Osorio; Mario Parra-Rodriguez; Tarek Rajji; Petra Ritter; Andrea Soricelli; Fabrizio Stocchi; Ioannis Tarnanas; John Paul Taylor; Stefan Teipel; Federico Tucci; Mitchell Valdes-Sosa; Pedro Valdes-Sosa; Marco Weiergräber; Gorsev Yener; Bahar Guntekin
Journal:  Alzheimers Dement       Date:  2021-04-15       Impact factor: 16.655

5.  Outcome predictors in autism spectrum disorders preschoolers undergoing treatment as usual: insights from an observational study using artificial neural networks.

Authors:  Antonio Narzisi; Filippo Muratori; Massimo Buscema; Sara Calderoni; Enzo Grossi
Journal:  Neuropsychiatr Dis Treat       Date:  2015-06-30       Impact factor: 2.570

6.  Application of artificial neural networks to investigate one-carbon metabolism in Alzheimer's disease and healthy matched individuals.

Authors:  Fabio Coppedè; Enzo Grossi; Massimo Buscema; Lucia Migliore
Journal:  PLoS One       Date:  2013-08-12       Impact factor: 3.240

7.  Systematic Review on Resting-State EEG for Alzheimer's Disease Diagnosis and Progression Assessment.

Authors:  Raymundo Cassani; Mar Estarellas; Rodrigo San-Martin; Francisco J Fraga; Tiago H Falk
Journal:  Dis Markers       Date:  2018-10-04       Impact factor: 3.434

8.  Back propagation artificial neural network for community Alzheimer's disease screening in China.

Authors:  Jun Tang; Lei Wu; Helang Huang; Jiang Feng; Yefeng Yuan; Yueping Zhou; Peng Huang; Yan Xu; Chao Yu
Journal:  Neural Regen Res       Date:  2013-01-25       Impact factor: 5.135

9.  Atrophy of amygdala and abnormal memory-related alpha oscillations over posterior cingulate predict conversion to Alzheimer's disease.

Authors:  Laura Prieto Del Val; Jose L Cantero; Mercedes Atienza
Journal:  Sci Rep       Date:  2016-08-22       Impact factor: 4.379

10.  Prediction of Cognitive Decline in Temporal Lobe Epilepsy and Mild Cognitive Impairment by EEG, MRI, and Neuropsychology.

Authors:  Yvonne Höller; Kevin H G Butz; Aljoscha C Thomschewski; Elisabeth V Schmid; Christoph D Hofer; Andreas Uhl; Arne C Bathke; Wolfgang Staffen; Raffaele Nardone; Fabian Schwimmbeck; Markus Leitinger; Giorgi Kuchukhidze; Marlene Derner; Jürgen Fell; Eugen Trinka
Journal:  Comput Intell Neurosci       Date:  2020-05-20
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