Liquid-biopsy proteomics combined with AI identifies cellular drivers of eye aging and disease in vivo
Julian Wolf(Palo Alto University), Vinit B. Mahajan(Stanford University), Peter H. Tang(University of Minnesota), Elena Wang(Palo Alto University), Young Joo Sun(Palo Alto University), Artis A. Montague(Smith-Kettlewell Eye Research Institute), Jennifer T. Vu(Palo Alto University), Nima Aghaeepour(Stanford Medicine), Camilo Espinosa(Stanford University), Alexander G. Bassuk(University of Iowa), Prithvi Mruthyunjaya(Smith-Kettlewell Eye Research Institute), Ditte K. Rasmussen(Palo Alto University), Antoine Dufour(University of Calgary), Fabio Bigini(Palo Alto University), Robert T. Chang(Smith-Kettlewell Eye Research Institute)
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