Literature DB >> 20090389

The 'Tyranny of choices' in the ingestion-controlling network.

Michael Myslobodsky1.   

Abstract

BACKGROUND: Currently used antiobesity remedies offer only a modest weight reduction, and have untoward effects that can complicate treatment efforts. Motivated by the needs of the pharmacotherapy of obesity, the study explored the role of neuropeptide Y, leptin, and corticotrophin-releasing hormone.
METHOD: The study used Ingenuity Pathway Analysis which is a tool for automated discovery and visualization of molecular interactions.
RESULTS: In ingestion-controlling networks, neuropeptide Y, leptin, and corticotrophin-releasing hormone molecules are commonly combined into the units designated as 'maximal motifs'. The analysis of this triad allowed suggesting that maximal motifs are not more than a compendium of admission rules and transmission alternatives of their nodes catalogued in the dataset. Nonetheless, these options seem to endow them with the flexibility needed to respond dynamically as a functional unit to changing internal (metabolic) conditions or environmental challenges.
CONCLUSION: Thus far, each peptide represents a separate target for pharmaceutical interventions (as judged by US patents scanned). The study concludes with predictions regarding designs of 'multitargeted' antiobesity agents since only by hitting a combination of targets can an appropriate therapeutic effect be achieved. Copyright 2009 S. Karger AG, Basel.

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Year:  2009        PMID: 20090389      PMCID: PMC2878589          DOI: 10.1159/000260906

Source DB:  PubMed          Journal:  Obes Facts        ISSN: 1662-4025            Impact factor:   3.942


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