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Special Issue: Computational models for Neurodegeneration

Guest Editor

Prof. Panagiotis Vlamos
Department of Informatics, Ionian University, Greece
Email: vlamos@ionio.gr


Manuscript Topics

Data mining aims to extract results that we are not able to obtain through traditional computing tools. The emerging field of computational biomarkers can be seen as an extension of computational neuroscience. The creation of computational models will be able to contribute to the early diagnosis of diseases and to their proper treatment. Computational models serve to understand the course of the disease and offer the ability to monitor the progression of the disease. Such models will provide insights into the relationships between biomarkers that affect specific diseases and will incorporate dynamic biomarker levels allowing us to study the evolution of biomarkers over time. So far, researchers have been able to create and utilise mathematical models for a variety of purposes such as further examination of neurodegenerative disorders.


This special issue will focus on computational models and neurodegenerative diseases for early disease prediction in order to establish better treatment standards. The contribution work should involve topics regarding: (i) the application of computational models in neurodegenerative diseases, (ii) computational tools that model neuronal loss biomarkers as well as cognitive impairment and include amyloid-dependent and nondependent neurodegenerative cascades and (iii) computational models that demonstrate the first appearance of biomarkers in neurodegenerative diseases. Relevant topics are also welcomed.


Instructions for authors
https://www.aimspress.com/mbe/news/solo-detail/instructionsforauthors
Please submit your manuscript to online submission system
https://aimspress.jams.pub/


Paper Submission

All manuscripts will be peer-reviewed before their acceptance for publication. The deadline for manuscript submission is 01 December 2021

Published Papers(1)