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ord-data

DOI

Cloning with Git LFS

We use Git LFS to efficiently store the Dataset records that make up the ORD. To view these files locally, you'll need to install Git LFS before cloning the repository.

Contributing

Please see the Submission Workflow documentation. Make sure to review the license and terms of use.

DOIs covered by ORD

Citation Dataset Description Reactions
Dreher, S. D. & Krska, S. W. Chemistry Informer Libraries: Conception, Early Experience, and Role in the Future of Cheminformatics. Accounts of Chemical Research 54, 1586–1596 (2021). doi: 10.1021/acs.accounts.0c00760 Nano CN PhotoChemistry Informers Library https://doi.org/10.1021/acs.accounts.0c00760Data from Figure S12. Data from experiment 2. Yields of products calculated by UPLC-MS using product standards. 1728
Mdluli, V. et al. High-throughput Synthesis and Screening of Iridium(III) Photocatalysts for the Fast and Chemoselective Dehalogenation of Aryl Bromides. ACS Catalysis 10, 6977–6987 (2020). doi: 10.1021/acscatal.0c02247 Photodehalogenation_HTE_estimated_conv_at_5hr Ref: Bernhard, S. et al "High-throughput Synthesis and Screening of Iridium(III) Photocatalysts for the Fast and Chemoselective Dehalogenation of Aryl Bromides"  ACS Catal. 2020, 10, 6977−6987. https://dx.doi.org/10.1021/acscatal.0c02247 1152
Stadler, A. & Kappe, C. O. Automated Library Generation Using Sequential Microwave-Assisted Chemistry. Application toward the Biginelli Multicomponent Condensation. Journal of Combinatorial Chemistry 3, 624–630 (2001). doi: 10.1021/cc010044j Microwave-assisted Biginelli Condensation Dataset 48-member library of Biginelli products from microwave screening paper, https://pubs.acs.org/doi/full/10.1021/cc010044j 48
Gioiello, A., Rosatelli, E., Teofrasti, M., Filipponi, P. & Pellicciari, R. Building a Sulfonamide Library by Eco-Friendly Flow Synthesis. ACS Combinatorial Science 15, 235–239 (2013). doi: 10.1021/co400012m 39 compound library from "Building a Sulfonamide Library by Eco-Friendly Flow Synthesis" Library generated in DOI 10.1021/co400012m (Table 2) 39
Kutchukian, P. S. et al. Chemistry informer libraries: a chemoinformatics enabled approach to evaluate and advance synthetic methods. Chem. Sci. 7, 2604–2613 (2016). doi: 10.1039/c5sc04751j link 90
Pd_CN_Coupling_Informer_Library Ref: Chem. Sci., 2016, 7, 2604.doi: 10.1039/c5sc04751jThis palladium catalyzed C-N cross coupling dataset is the first 8 rows of Figure 4D 264
Coley, C. W. et al. A graph-convolutional neural network model for the prediction of chemical reactivity. Chemical Science 10, 370–377 (2019). doi: 10.1039/c8sc04228d Test data from https://doi.org/10.1039/C8SC04228D 40000 reaction SMILES downloaded from https://github.com/connorcoley/rexgen_direct 40000
Validation data from https://doi.org/10.1039/C8SC04228D 30000 reaction SMILES downloaded from https://github.com/connorcoley/rexgen_direct 30000
Training data from https://doi.org/10.1039/C8SC04228D 409035 reaction SMILES downloaded from https://github.com/connorcoley/rexgen_direct 409035
Christensen, M. et al. Development of an automated kinetic profiling system with online HPLC for reaction optimization. Reaction Chemistry & Engineering 4, 1555–1558 (2019). doi: 10.1039/c9re00086k Development of an automated kinetic profiling system with online HPLC for reaction optimization Reactions from DOI: 10.1039/c9re00086k 7
Zuo, Z. et al. Merging photoredox with nickel catalysis: Coupling of  -carboxyl sp3-carbons with aryl halides. Science 345, 437–440 (2014). doi: 10.1126/science.1255525 Coupling of α-carboxyl sp3-carbons with aryl halides Substrate scopes (Figure 3 and 4A) from https://science.sciencemag.org/content/345/6195/437 24
Buitrago Santanilla, A. et al. Nanomole-scale high-throughput chemistry for the synthesis of complex molecules. Science 347, 49–53 (2014). doi: 10.1126/science.1259203 HTE Pd-catalyzed cross-coupling screen Reactions from Experiment 2 of DOI: 10.1126/science.1259203 1536
Perera, D. et al. A platform for automated nanomole-scale reaction screening and micromole-scale synthesis in flow. Science 359, 429–434 (2018). doi: 10.1126/science.aap9112 link 5760
Ahneman, D. T., Estrada, J. G., Lin, S., Dreher, S. D. & Doyle, A. G. Predicting reaction performance in C–N cross-coupling using machine learning. Science 360, 186–190 (2018). doi: 10.1126/science.aar5169 Ahneman C-N cross-coupling reactions from 10.1126/science.aar5169 4312
Huffman, M. A. et al. Design of an in vitro biocatalytic cascade for the manufacture of islatravir. Science 366, 1255–1259 (2019). doi: 10.1126/science.aay8484 synthesis of islatravir by biocatalytic cascade 3
Liu, R. Copper-Catalyzed Enantioselective Hydroamination of Alkenes. Organic Syntheses 95, 80–96 (2018). doi: 10.15227/orgsyn.095.0080 Copper-Catalyzed Enantioselective Hydroamination of Alkenes Reaction data from Org. Synth. 2018, 95, 80-96 (DOI: 10.15227/orgsyn.095.0080) 3
Newman-Stonebraker, S. et al. Linking Mechanistic Analysis of Catalytic Reactivity Cliffs to Ligand Classification. (2021). doi:10.26434/chemrxiv.14388557.v1 doi: 10.26434/chemrxiv.14388557.v1 link 450
Lowe, D. Chemical reactions from US patents (1976-Sep2016). (2017) doi:10.6084/M9.FIGSHARE.5104873.V1. doi: 10.6084/m9.figshare.5104873.v1 uspto-grants-2016 93834
uspto-grants-2002 46455
uspto-grants-1979 11576
uspto-grants-1981 14847
uspto-grants-2013 141950
uspto-grants-1999 32954
uspto-grants-1978 15442
uspto-grants-1986 12870
uspto-grants-2007 53107
uspto-grants-1996 28237
uspto-grants-1998 33841
uspto-grants-1977 16777
uspto-grants-1983 11026
uspto-grants-2000 33605
uspto-grants-1988 15279
uspto-grants-1987 15001
uspto-grants-2015 146889
uspto-grants-2006 54763
uspto-grants-1980 13739
uspto-grants-1991 19332
uspto-grants-1984 12743
uspto-grants-2003 43484
uspto-grants-2004 37039
uspto-grants-1993 22567
uspto-grants-1990 18641
uspto-grants-2010 91348
uspto-grants-1989 19790
uspto-grants-2009 70725
uspto-grants-1982 11340
uspto-grants-2014 147957
uspto-grants-2001 42483
uspto-grants-1992 20159
uspto-grants-1985 13628
uspto-grants-2012 119695
uspto-grants-2011 100264
uspto-grants-1995 20177
uspto-grants-1997 37068
uspto-grants-2005 36478
uspto-grants-2008 56453
uspto-grants-1994 19599
uspto-grants-1976 17855
(None) link 256
Imidazopyridines dataset Data form a 3 component reaction approach towards diverse imidazopyridines 384
link 288
link 1728

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