Comparing Alzheimer's and Parkinson's diseases networks using graph communities structure

Recent advances in large datasets analysis offer new insights to modern biology allowing system-level investigation of pathologies. Here we describe a novel computational method that exploits the ever-growing amount of "omics" data to shed light on Alzheimer's and Parkinson's dis...

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Veröffentlicht in:BMC systems biology 2016-03, Vol.10 (14), p.25-25, Article 25
Hauptverfasser: Calderone, Alberto, Formenti, Matteo, Aprea, Federica, Papa, Michele, Alberghina, Lilia, Colangelo, Anna Maria, Bertolazzi, Paola
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container_issue 14
container_start_page 25
container_title BMC systems biology
container_volume 10
creator Calderone, Alberto
Formenti, Matteo
Aprea, Federica
Papa, Michele
Alberghina, Lilia
Colangelo, Anna Maria
Bertolazzi, Paola
description Recent advances in large datasets analysis offer new insights to modern biology allowing system-level investigation of pathologies. Here we describe a novel computational method that exploits the ever-growing amount of "omics" data to shed light on Alzheimer's and Parkinson's diseases. Neurological disorders exhibit a huge number of molecular alterations due to a complex interplay between genetic and environmental factors. Classical reductionist approaches are focused on a few elements, providing a narrow overview of the etiopathogenic complexity of multifactorial diseases. On the other hand, high-throughput technologies allow the evaluation of many components of biological systems and their behaviors. Analysis of Parkinson's Disease (PD) and Alzheimer's Disease (AD) from a network perspective can highlight proteins or pathways common but differently represented that can be discriminating between the two pathological conditions, thus highlight similarities and differences. In this work we propose a strategy that exploits network community structure identified with a state-of-the-art network community discovery algorithm called InfoMap, which takes advantage of information theory principles. We used two similarity measurements to quantify functional and topological similarities between the two pathologies. We built a Similarity Matrix to highlight similar communities and we analyzed statistically significant GO terms found in clustered areas of the matrix and in network communities. Our strategy allowed us to identify common known and unknown processes including DNA repair, RNA metabolism and glucose metabolism not detected with simple GO enrichment analysis. In particular, we were able to capture the connection between mitochondrial dysfunction and metabolism (glucose and glutamate/glutamine). This approach allows the identification of communities present in both pathologies which highlight common biological processes. Conversely, the identification of communities without any counterpart can be used to investigate processes that are characteristic of only one of the two pathologies. In general, the same strategy can be applied to compare any pair of biological networks.
doi_str_mv 10.1186/s12918-016-0270-7
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subjects Alzheimer Disease - genetics
Alzheimer Disease - metabolism
Alzheimer Disease - pathology
Alzheimer's disease
Care and treatment
Complications and side effects
Computer Graphics
Development and progression
DNA Repair
Glucose - metabolism
Humans
Methodology
Mitochondria - metabolism
Parkinson Disease - genetics
Parkinson Disease - metabolism
Parkinson Disease - pathology
RNA - metabolism
Signal Transduction
Systems Biology - methods
title Comparing Alzheimer's and Parkinson's diseases networks using graph communities structure
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