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Identification of the protein targets of hit molecules is essential in the drug discovery process. Target prediction with machine learning algorithms can help accelerate this search, limiting the number of required experiments. However, Drug-Target Interactions databases used for training present high statistical bias, leading to a high number of false positives, thus increasing time and cost of experimental validation campaigns. To minimize the number of false positives among predicted targets, we propose a new scheme for choosing negative examples, so that each protein and each drug appears an equal number of times in positive and negative examples. We artificially reproduce the process of target identification for three specific drugs, and more globally for 200 approved drugs. For the detailed three drug examples, and for the larger set of 200 drugs, training with the proposed scheme for the choice of negative examples improved target prediction results: the average number of false positives among the top ranked predicted targets decreased, and overall, the rank of the true targets was improved.Our method corrects databases' statistical bias and reduces the number of false positive predictions, and therefore the number of useless experiments potentially undertaken.
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http://dx.doi.org/10.3390/ijms22105118 | DOI Listing |
Steroids
September 2025
Department of Chemical Sciences, University of Naples Federico II, Naples I-80126, Italy.
Antimicrobial resistance is currently one of the most serious and alarming threats to human health; therefore, the identification of novel antimicrobial agents is a compelling need. Recently, we identified the heterocyclic steroid PYED-1 as a novel promising antibacterial and antibiofilm agent. In an effort to broaden the repertoire of active compounds and elucidate the structural features responsible for their antibacterial activity, two novel derivatives of PYED-1 have been conceived herein.
View Article and Find Full Text PDFPediatr Dev Pathol
September 2025
The Hospital for Sick Children, Division of Pathology, Toronto, Canada.
Background: Rhabdomyosarcoma (RMS) is the most common soft tissue sarcoma of childhood. For stratification purposes, rhabdomyosarcoma is classified into fusion-positive RMS (alveolar rhabdomyosarcoma) and fusion-negative RMS (embryonal or spindle cell/sclerosing, FN-RMS) subtypes according to its fusion status. This study aims to highlight the pathologic and molecular characteristics of a cohort of FN-RMS using a targeted NGS RNA-Seq assay.
View Article and Find Full Text PDFAvian Pathol
September 2025
Department of Animal Medicine, Production and Health (MAPS), University of Padua, Legnaro (PD), Italy.
Infectious bursal disease virus (IBDV) is a highly contagious, economically relevant immunosuppressive pathogen of chickens. Despite belonging to a single serotype, virulent IBDVs display a remarkable heterogeneity in genetic and functional features. Traditionally, strains are categorized into classical, variant and very virulent viruses, but many atypical IBDVs have been recently identified.
View Article and Find Full Text PDFRapid Commun Mass Spectrom
September 2025
Département Médicaments et Technologies pour la Santé (DMTS), MetaboHUB, Université Paris-Saclay, CEA, INRAE, Gif sur Yvette, France.
Rationale: Electrospray (ESI), the most popular desorption/ionization technique used in mass spectrometry-based metabolomics, generates both protonated and deprotonated molecules, as well as adduct ions, sodium being the most frequent monoatomic cation entering their composition. With the spread and generalization of untargeted data-dependent and independent tandem mass spectrometry experiments, considering product ion spectra of sodium-containing entities appears relevant to complement fragmentation information of their protonated and deprotonated counterparts.
Methods: Solutions of pure standards, mainly amino and organic acids, were prepared at 1 μg/mL and injected either by direct infusion or by flow-injection prior to ESI-MS/MS analysis.
Front Biosci (Landmark Ed)
August 2025
Department of Biological Sciences, Louisiana State University, Baton Rouge, LA 70803, USA.
CysB is a member of the large bacterial LysR-type transcriptional regulator (LTTR) protein family. Like the majority of LTTRs, CysB functions as a homotetramer in which each subunit has an N-terminal winged-helix-turn-helix (wHTH) DNA-binding domain connected to an effector-binding domain by a helical hinge region. CysB is best known for its role in regulating the expression of genes associated with sulfur uptake and biosynthesis of cysteine in Gram-negative species such as and .
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