Optimal nano-descriptors as translators of eclectic data into prediction of the cell membrane damage by means of nano metal-oxides
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Jerzy Leszczynski | Emilio Benfenati | Danuta Leszczynska | Andrey A Toropov | Alla P Toropova | Rafi Korenstein | E. Benfenati | R. Korenstein | J. Leszczynski | D. Leszczyńska | A. Toropova | A. Toropov
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