Computational enrichment of physicochemical data for the development of a ζ-potential read-across predictive model with Isalos Analytics Platform

NanoImpact - Tập 22 - Trang 100308 - 2021
Anastasios G. Papadiamantis1,2, Antreas Afantitis1, Andreas Tsoumanis1, Eugenia Valsami-Jones2, Iseult Lynch2, Georgia Melagraki1
1NovaMechanics Ltd., 1065 Nicosia, Cyprus
2School of Geography, Earth and Environmental Sciences, University of Birmingham, B15 2TT Birmingham, United Kingdom

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