Inferring secretory and metabolic pathway activity from omic data with secCellFie
Helen O. Masson(University of California San Diego), Nathan E. Lewis(University of Georgia), Km Shams Ud Doha(Sanford Burnham Prebys Medical Discovery Institute), Vijay Tejwani(SUNY Polytechnic Institute), Linus Weiß(Boehringer Ingelheim (Germany)), Caressa M. Robinson(University of California, San Diego), Susan T. Sharfstein(SUNY Polytechnic Institute), Alex Campos(Sanford Burnham Prebys Medical Discovery Institute), Mojtaba Samoudi(Novo Nordisk Foundation), Björn G. Voldborg(Novo Nordisk Foundation), Bradley Robasky(University of Denver), Hussain Dahodwala(SUNY Polytechnic Institute), Chih-Chung Kuo(University of California San Diego), P Ménard(Novo Nordisk Foundation)
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