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  •   University of Thessaly Institutional Repository
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  • Επιστημονικές Δημοσιεύσεις Μελών ΠΘ (ΕΔΠΘ)
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A Bayesian model for the prediction and early diagnosis of Alzheimer's disease

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Author
Alexiou A., Mantzavinos V.D., Greig N.H., Kamal M.A.
Date
2017
Language
en
DOI
10.3389/fnagi.2017.00077
Keyword
biological marker
adult
age
aged
Alzheimer disease
Article
Bayes theorem
controlled study
disease classification
early diagnosis
human
Monte Carlo method
prognosis
Frontiers Research Foundation
Metadata display
Abstract
Alzheimer's disease treatment is still an open problem. The diversity of symptoms, the alterations in common pathophysiology, the existence of asymptomatic cases, the different types of sporadic and familial Alzheimer's and their relevance with other types of dementia and comorbidities, have already created a myth-fear against the leading disease of the twenty first century. Many failed latest clinical trials and novel medications have revealed the early diagnosis as the most critical treatment solution, even though scientists tested the amyloid hypothesis and few related drugs. Unfortunately, latest studies have indicated that the disease begins at the very young ages thus making it difficult to determine the right time of proper treatment. By taking into consideration all these multivariate aspects and unreliable factors against an appropriate treatment, we focused our research on a non-classic statistical evaluation of the most known and accepted Alzheimer's biomarkers. Therefore, in this paper, the code and few experimental results of a computational Bayesian tool have being reported, dedicated to the correlation and assessment of several Alzheimer's biomarkers to export a probabilistic medical prognostic process. This new statistical software is executable in the Bayesian software Winbugs, based on the latest Alzheimer's classification and the formulation of the known relative probabilities of the various biomarkers, correlated with Alzheimer's progression, through a set of discrete distributions. A user-friendly web page has been implemented for the supporting of medical doctors and researchers, to upload Alzheimer's tests and receive statistics on the occurrence of Alzheimer's disease development or presence, due to abnormal testing in one or more biomarkers. © 2017 Alexiou, Mantzavinos, Greig and Kamal.
URI
http://hdl.handle.net/11615/70417
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