Purpose: The pathophysiological basis of major depression is incompletely understood. Recently, numerous proteomic studies have been performed in rodent models of depression to investigate the molecular underpinnings of depressive-like behaviours with an unbiased approach. The objective of the study is to integrate the results of these proteomic studies in depression models to shed light on the most relevant molecular pathways involved in the disease. Experimental design: Network analysis is performed integrating preexisting proteomic data from rodent models of depression. The IntAct mouse and the HRPD are used as reference protein-protein interaction databases. The functionality analyses of the networks are then performed by testing overrepresented GO biological process terms and pathways. Results: Functional enrichment analyses of the networks revealed an association with molecular processes related to depression in humans, such as those involved in the immune response. Pathways impacted by clinically effective antidepressants are modulated, including glutamatergic signaling and neurotrophic responses. Moreover, dysregulations of proteins regulating energy metabolism and circadian rhythms are implicated. The comparison with protein pathways modulated in depressive patients revealed significant overlapping. Conclusions and clinical relevance: This systems biology study supports the notion that animal models can contribute to the research into the biology and therapeutics of depression.

Systems biology integration of proteomic data in rodent models of depression reveals involvement of the immune response and glutamatergic signaling / Carboni, Lucia; Nguyen, Thanh Phuong; Caberlotto, Laura. - In: PROTEOMICS. CLINICAL APPLICATIONS. - ISSN 1862-8346. - STAMPA. - 10:12(2016), pp. 1254-1263. [10.1002/prca.201500149]

Systems biology integration of proteomic data in rodent models of depression reveals involvement of the immune response and glutamatergic signaling

CARBONI, LUCIA;
2016

Abstract

Purpose: The pathophysiological basis of major depression is incompletely understood. Recently, numerous proteomic studies have been performed in rodent models of depression to investigate the molecular underpinnings of depressive-like behaviours with an unbiased approach. The objective of the study is to integrate the results of these proteomic studies in depression models to shed light on the most relevant molecular pathways involved in the disease. Experimental design: Network analysis is performed integrating preexisting proteomic data from rodent models of depression. The IntAct mouse and the HRPD are used as reference protein-protein interaction databases. The functionality analyses of the networks are then performed by testing overrepresented GO biological process terms and pathways. Results: Functional enrichment analyses of the networks revealed an association with molecular processes related to depression in humans, such as those involved in the immune response. Pathways impacted by clinically effective antidepressants are modulated, including glutamatergic signaling and neurotrophic responses. Moreover, dysregulations of proteins regulating energy metabolism and circadian rhythms are implicated. The comparison with protein pathways modulated in depressive patients revealed significant overlapping. Conclusions and clinical relevance: This systems biology study supports the notion that animal models can contribute to the research into the biology and therapeutics of depression.
2016
Systems biology integration of proteomic data in rodent models of depression reveals involvement of the immune response and glutamatergic signaling / Carboni, Lucia; Nguyen, Thanh Phuong; Caberlotto, Laura. - In: PROTEOMICS. CLINICAL APPLICATIONS. - ISSN 1862-8346. - STAMPA. - 10:12(2016), pp. 1254-1263. [10.1002/prca.201500149]
Carboni, Lucia; Nguyen, Thanh Phuong; Caberlotto, Laura
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/567094
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