Correction: QSAR without borders.
Eugene N. Muratov,Eugene N. Muratov,Jürgen Bajorath,Robert P. Sheridan,Igor V. Tetko,Dmitry Filimonov,Vladimir Poroikov,Tudor I. Oprea,Tudor I. Oprea,Tudor I. Oprea,Igor I. Baskin,Igor I. Baskin,Alexandre Varnek,Alexandre Varnek,Adrian E. Roitberg,Olexandr Isayev,Stefano Curtarolo,Denis Fourches,Yoram Cohen,Alán Aspuru-Guzik,David A. Winkler,Dimitris K. Agrafiotis,Artem Cherkasov,Alexander Tropsha +23 more
TL;DR: This research presents a novel probabilistic procedure called QSAR without borders, which can be used to assess the severity of the impact of natural disasters on the response of the immune system.
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Abstract: Correction for ‘QSAR without borders’ by Eugene N. Muratov et al., Chem. Soc. Rev., 2020, DOI: 10.1039/d0cs00098a.
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