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ID (OMDB) ⇅ ID (COD) ⇅ Formula ⇅ Space group H-M ⇅ Space group IT ↑ Publication details Publisher ⇅
29210 2230379 C20 H24 N2 O6 P 1 21/c 1 14 (E,E)-1,2-Bis(2,4,5-trimethoxybenzylidene)hydrazine Acta Crystallographica Section E, 2011, vol: 67, page: o1526
1750 4020934 C16 H16 Se4 P 1 21/c 1 14 Cyclic Tetra- and Hexaynes Containing 1,4-Donor-Substituted Butadiyne Units: Synthesis and Supramolecular Organization Journal of Organic Chemistry, 2004, vol: 69, page: 2945
2186 4021059 C13 H10 N4 O P 1 21/c 1 14 Cocyclotrimerization of 6-Alkynylpurines with \a,\w-Diynes as a Novel Approach to Biologically Active 6-Arylpurines Journal of Organic Chemistry, 2004, vol: 69, page: 9224
30131 2236287 C10 H10 Br2 N2 P 1 21/c 1 14 Redetermination of 2,2'-bipyridine-1,1'-diium dibromide Acta Crystallographica Section E, 2012, vol: 68, page: o3033
16811 4116822 C6 H3 F3 I 1 2/a 1 15 C-H...F Interactions in the Crystal Structures of Some Fluorobenzenes Journal of the American Chemical Society, 1998, vol: 120, page: 8702
32466 2223676 C6 H10 N4 O6 C 1 2/c 1 15 1,3-Phenylenediammonium dinitrate Acta Crystallographica Section E, 2009, vol: 65, page: o2601
26570 7111221 C8 H10 O2 S P 21 21 21 19 Enzyme-catalysed oxygenation and deoxygenation routes to chiral thiosulfinates Chemical Communications, 2002, page: 1452
34367 4100438 C11 H12 O4 P 21 21 21 19 Journal of the American Chemical Society, 2005
34559 4118233 C9 H15 Br O2 P 21 21 21 19 Bifunctional Catalyst Promotes Highly Enantioselective Bromolactonizations To Generate Stereogenic C-Br Bonds Journal of the American Chemical Society, 2012, vol: 134, page: 11128
32658 2226213 C6 H11 F O5 P 21 21 21 19 6-Deoxy-6-fluoro-D-galactose Acta Crystallographica Section E, 2010, vol: 66, page: o1315

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