A Physicochemical Property Estimation System with Automatic Route Selection.
نویسندگان
چکیده
منابع مشابه
Differentiating physicochemical property: Chemical composition
BBB blood-brain barrier BMEC brain microvascular (capillary) endothelial cells CBSA cationic bovine serum albumin CdTe cadmium tellurium CTAB trimethylammonium bromide DRG dorsal root ganglia HSA human serum albumin ip intraperitoneal iv intravenous MWCNT multi-walled carbon nanotube PAMAM poly(amidoamine) PBCA polybutylcyanoacrylate PEG polyethylene glycol PLA poly(lactide) PLGA poly(lactic-co...
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ژورنال
عنوان ژورنال: Journal of The Japan Petroleum Institute
سال: 1995
ISSN: 0582-4664
DOI: 10.1627/jpi1958.38.1