n-(n-(3-carboxyoxirane-2-carbonyl)leucyl)isoamylamine has been researched along with 6-bromo-2-(4-methylphenyl)-N-[(1-methyl-4-pyrazolyl)methyl]-4-quinolinecarboxamide in 3 studies
Studies (n-(n-(3-carboxyoxirane-2-carbonyl)leucyl)isoamylamine) | Trials (n-(n-(3-carboxyoxirane-2-carbonyl)leucyl)isoamylamine) | Recent Studies (post-2010) (n-(n-(3-carboxyoxirane-2-carbonyl)leucyl)isoamylamine) | Studies (6-bromo-2-(4-methylphenyl)-N-[(1-methyl-4-pyrazolyl)methyl]-4-quinolinecarboxamide) | Trials (6-bromo-2-(4-methylphenyl)-N-[(1-methyl-4-pyrazolyl)methyl]-4-quinolinecarboxamide) | Recent Studies (post-2010) (6-bromo-2-(4-methylphenyl)-N-[(1-methyl-4-pyrazolyl)methyl]-4-quinolinecarboxamide) |
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79 | 1 | 16 | 9 | 0 | 4 |
Protein | Taxonomy | n-(n-(3-carboxyoxirane-2-carbonyl)leucyl)isoamylamine (IC50) | 6-bromo-2-(4-methylphenyl)-N-[(1-methyl-4-pyrazolyl)methyl]-4-quinolinecarboxamide (IC50) |
---|---|---|---|
photoreceptor-specific nuclear receptor | Homo sapiens (human) | 2.992 | |
nuclear receptor corepressor 2 isoform 2 | Homo sapiens (human) | 1.56 | |
peroxisome proliferator-activated receptor gamma isoform 2 | Homo sapiens (human) | 1.56 |
Timeframe | Studies, this research(%) | All Research% |
---|---|---|
pre-1990 | 0 (0.00) | 18.7374 |
1990's | 0 (0.00) | 18.2507 |
2000's | 0 (0.00) | 29.6817 |
2010's | 2 (66.67) | 24.3611 |
2020's | 1 (33.33) | 2.80 |
Authors | Studies |
---|---|
Jadhav, A; Kerns, E; Nguyen, K; Shah, P; Sun, H; Xu, X; Yan, Z; Yu, KR | 1 |
Kabir, M; Kerns, E; Nguyen, K; Shah, P; Sun, H; Wang, Y; Xu, X; Yu, KR | 1 |
Kabir, M; Kerns, E; Neyra, J; Nguyen, K; Nguyễn, ÐT; Shah, P; Siramshetty, VB; Southall, N; Williams, J; Xu, X; Yu, KR | 1 |
3 other study(ies) available for n-(n-(3-carboxyoxirane-2-carbonyl)leucyl)isoamylamine and 6-bromo-2-(4-methylphenyl)-N-[(1-methyl-4-pyrazolyl)methyl]-4-quinolinecarboxamide
Article | Year |
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Highly predictive and interpretable models for PAMPA permeability.
Topics: Artificial Intelligence; Caco-2 Cells; Cell Membrane Permeability; Humans; Models, Biological; Organic Chemicals; Regression Analysis; Support Vector Machine | 2017 |
Predictive models of aqueous solubility of organic compounds built on A large dataset of high integrity.
Topics: Drug Discovery; Organic Chemicals; Pharmaceutical Preparations; Solubility | 2019 |
Retrospective assessment of rat liver microsomal stability at NCATS: data and QSAR models.
Topics: Animals; Computer Simulation; Databases, Factual; Drug Discovery; High-Throughput Screening Assays; Liver; Machine Learning; Male; Microsomes, Liver; National Center for Advancing Translational Sciences (U.S.); Pharmaceutical Preparations; Quantitative Structure-Activity Relationship; Rats; Rats, Sprague-Dawley; Retrospective Studies; United States | 2020 |