Dry eye is matched by increased intrasubject variability in tear osmolarity as confirmed by machine learning approach
Cristián Cartes(Universidad de La Frontera), Leonidas Traipe(Clínica Las Condes), Ana Fuentes(Universidad de Los Andes, Chile), Nicole L. Lanza(University of Miami), C. Alarcón, Natacha Quezada Pérez(University of Chile), Christian Segovia(University of Chile), Rigoberto Solı́s(University of Chile), Pablo Zegers(Universidad de Los Andes, Chile), Victor L. Perez(University of Miami), Diego A Lopez(Clínica Las Condes), C. Ahumada(Facultad Latinoamericana de Ciencias Sociales), D. Salinas(Clínica Las Condes), Felipe Valenzuela(Fundación Chile)
Archivos de la Sociedad Española de Oftalmología (English Edition)
May 23, 2019
Cited by 6
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