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Title

Identification in silico and experimental validation of novel phosphodiesterase 7 inhibitors with efficacy in experimental autoimmune encephalomyelitis mice

AuthorsRedondo, Miriam ; Palomo Ruiz, Valle; Pérez Fernández, Daniel Ignacio ; Martín-Álvarez, Rocío ; Pérez, Concepción; Paul-Fernández, Nuria ; Conde, Santiago ; Mengod Los Arcos, Guadalupe ; Martínez, Ana ; Gil, Carmen ; Campillo, Nuria E.
Issue Date2012
PublisherAmerican Chemical Society
CitationACS Chemical Neuroscience 3(10): 793-803 (2012)
AbstractA neural network model has been developed to predict the inhibitory capacity of any chemical structure to be a phosphodiesterase 7 (PDE7) inhibitor, a new promising kind of drugs for the treatment of neurological disorders. The numerical definition of the structures was achieved using CODES program. Through the validation of this neural network model, a novel family of 5-imino-1,2,4-thiadiazoles (ITDZs) has been identified as inhibitors of PDE7. Experimental extensive biological studies have demonstrated the ability of ITDZs to inhibit PDE7 and to increase intracellular levels of cAMP. Among them, the derivative 15 showed a high in vitro potency with desirable pharmacokinetic profile (safe genotoxicity and blood brain barrier penetration). Administration of ITDZ 15 in an experimental autoimmune encephalomyelitis (EAE) mouse model results in a significant attenuation of clinical symptoms, showing the potential of ITDZs, especially compound 15, for the effective treatment of multiple sclerosis. © 2012 American Chemical Society.
DescriptionEl pdf del artículo es el manuscrito de autor.-- et al.
Publisher version (URL)http://dx.doi.org/10.1021/cn300105c
URIhttp://hdl.handle.net/10261/73551
DOI10.1021/cn300105c
Identifiersdoi: 10.1021/cn300105c
issn: 1948-7193
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