Systems Biology-Derived Genetic Signatures of Mastitis in Dairy Cattle: A New Avenue for Drug Repurposing

Mastitis, a disease with high incidence worldwide, is the most prevalent and costly disease in the dairy industry. Gram-negative bacteria such as ( ) are assumed to be among the leading agents causing acute severe infection with clinical signs. , environmental mastitis pathogens, are the primary eti...

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Veröffentlicht in:Animals (Basel) 2021-12, Vol.12 (1), p.29
Hauptverfasser: Sharifi, Somayeh, Lotfi Shahreza, Maryam, Pakdel, Abbas, Reecy, James M, Ghadiri, Nasser, Atashi, Hadi, Motamedi, Mahmood, Ebrahimie, Esmaeil
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Sprache:eng
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Zusammenfassung:Mastitis, a disease with high incidence worldwide, is the most prevalent and costly disease in the dairy industry. Gram-negative bacteria such as ( ) are assumed to be among the leading agents causing acute severe infection with clinical signs. , environmental mastitis pathogens, are the primary etiological agents of bovine mastitis in well-managed dairy farms. Response to infection has a complex pattern affected by genetic and environmental parameters. On the other hand, the efficacy of antibiotics and/or anti-inflammatory treatment in mastitis is still a topic of scientific debate, and studies on the treatment of clinical cases show conflicting results. Unraveling the bio-signature of mastitis in dairy cattle can open new avenues for drug repurposing. In the current research, a novel, semi-supervised heterogeneous label propagation algorithm named Heter-LP, which applies both local and global network features for data integration, was used to potentially identify novel therapeutic avenues for the treatment of mastitis. Online data repositories relevant to known diseases, drugs, and gene targets, along with other specialized biological information for mastitis, including critical genes with robust bio-signatures, drugs, and related disorders, were used as input data for analysis with the Heter-LP algorithm. Our research identified novel drugs such as Glibenclamide, Ipratropium, Salbutamol, and Carbidopa as possible therapeutics that could be used against mastitis. Predicted relationships can be used by pharmaceutical scientists or veterinarians to find commercially efficacious medicines or a combination of two or more active compounds to treat this infectious disease.
ISSN:2076-2615
2076-2615
DOI:10.3390/ani12010029