01950nas a2200217 4500000000100000008004100001260001200042653001700054653002500071653002500096653002000121100001600141700001200157700001400169245007800183856008300261300000800344490000900352520135700361022001401718 2023 d c01/202310aMicrobiology10aApplied Microbiology10aMedical Microbiology10aSystems Biology1 aBannerman B1 aOarga A1 aJĂșlvez J00aMycobacterial metabolic model development for drug target identification. uhttps://www.ncbi.nlm.nih.gov/pmc/articles/PMC10154535/pdf/gigabyte-2023-80.pdf a1-60 v20233 a

Antibiotic resistance is increasing at an alarming rate, and three related mycobacteria are sources of widespread infections in humans. According to the World Health Organization, , which causes leprosy, is still endemic in tropical countries; is the second leading infectious killer worldwide after COVID-19; and , a group of non-tuberculous mycobacteria, causes lung infections and other healthcare-associated infections in humans. Due to the rise in resistance to common antibacterial drugs, it is critical that we develop alternatives to traditional treatment procedures. Furthermore, an understanding of the biochemical mechanisms underlying pathogenic evolution is important for the treatment and management of these diseases.

In this study, metabolic models have been developed for two bacterial pathogens, and , and a new computational tool has been used to identify potential drug targets, which are referred to as bottleneck reactions. The genes, reactions, and pathways in each of these organisms have been highlighted; the potential drug targets can be further explored as broad-spectrum antibacterials and the unique drug targets for each pathogen are significant for precision medicine initiatives. The models and associated datasets described in this paper are available in GigaDB, Biomodels, and PatMeDB repositories.

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