Synthesis, Characterization, Cytotoxic Activity, and Interactions with CT-DNA and BSA of Cationic Ruthenium(II) Complexes Containing Dppm and Quinoline Carboxylates.
Edinaldo N da SilvaPaulo A B da SilvaAngélica E GraminhaPollyanna F de OliveiraJaqueline L DamascenoDenise C TavaresAlzir A BatistaGustavo Von PoelhsitzPublished in: Bioinorganic chemistry and applications (2017)
The complexes cis-[Ru(quin)(dppm)2]PF6 and cis-[Ru(kynu)(dppm)2]PF6 (quin = quinaldate; kynu = kynurenate; dppm = bis(diphenylphosphino)methane) were prepared and characterized by elemental analysis, electronic, FTIR, 1H, and 31P{1H} NMR spectroscopies. Characterization data were consistent with a cis arrangement for the dppm ligands and a bidentate coordination through carboxylate oxygens of the quin and kynu anions. These complexes were not able to intercalate CT-DNA as shown by circular dichroism spectroscopy. On the other hand, bovine serum albumin (BSA) binding constants and thermodynamic parameters suggest spontaneous interactions with this protein by hydrogen bonds and van der Waals forces. Cytotoxicity assays were carried out on a panel of human cancer cell lines including HepG2, MCF-7, and MO59J and one normal cell line GM07492A. In general, the new ruthenium(II) complexes displayed a moderate to high cytotoxicity in all the assayed cell lines with IC50 ranging from 10.1 to 36 µM and were more cytotoxic than the precursor cis-[RuCl2(dppm)2]. The cis-[Ru(quin)(dppm)2]PF6 were two to three times more active than the reference metallodrug cisplatin in the MCF-7 and MO59J cell lines.
Keyphrases
- single molecule
- computed tomography
- breast cancer cells
- endothelial cells
- circulating tumor
- high resolution
- dual energy
- contrast enhanced
- ionic liquid
- cell free
- magnetic resonance
- energy transfer
- magnetic resonance imaging
- high throughput
- papillary thyroid
- squamous cell carcinoma
- solid state
- molecular docking
- electronic health record
- high intensity
- mass spectrometry
- binding protein
- artificial intelligence
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- induced pluripotent stem cells
- quantum dots
- data analysis
- nucleic acid
- transcription factor