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7-UP: Generating in silico CODEX from a small set of immunofluorescence markers.

Eric WuAlexandro E TrevinoZhenqin WuKyle SwansonHonesty J KimH Blaize D'AngioRyan PreskaAaron E ChiouGregory W CharvillePiero DalerbaUmamaheswar DuvvuriAlexander D ColevasJelena LeviNikita BediSerena ChangJohn B SunwooAnn Marie EgloffRavindra UppaluriAaron T MayerJames Y Zou
Published in: PNAS nexus (2023)
Multiplex immunofluorescence (mIF) assays multiple protein biomarkers on a single tissue section. Recently, high-plex CODEX (co-detection by indexing) systems enable simultaneous imaging of 40+ protein biomarkers, unlocking more detailed molecular phenotyping, leading to richer insights into cellular interactions and disease. However, high-plex data can be slower and more costly to collect, limiting its applications, especially in clinical settings. We propose a machine learning framework, 7-UP , that can computationally generate in silico 40-plex CODEX at single-cell resolution from a standard 7-plex mIF panel by leveraging cellular morphology. We demonstrate the usefulness of the imputed biomarkers in accurately classifying cell types and predicting patient survival outcomes. Furthermore, 7-UP 's imputations generalize well across samples from different clinical sites and cancer types. 7-UP opens the possibility of in silico CODEX, making insights from high-plex mIF more widely available.
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