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Showing 1–5 of 5 results
Advanced filters: Author: Alice Soragni Clear advanced filters
  • The use of social media for the dissemination of published and unpublished scientific findings has exploded over the past few years. In this Comment article, Soragni and Maitra explain some of the ways in which Twitter can be used by academics to promote their science.

    • Alice Soragni
    • Anirban Maitra
    Comments & Opinion
    Nature Reviews Cancer
    Volume: 19, P: 479-480
  • Acquired therapeutic resistance is a key contributor to cancer treatment failure, requiring new approaches to address its complex mechanisms. In this Roadmap, Soragni, Knudsen and colleagues discuss the mechanisms of acquired resistance and the models to better study it. Finally, they promote integration of biomarker-driven strategies and cutting-edge technologies to advance predictive and proactive prevention in cancer therapy.

    • Alice Soragni
    • Erik S. Knudsen
    • Himangi Marathe
    Reviews
    Nature Reviews Cancer
    Volume: 25, P: 613-633
  • Nhan Phan et al. present a high-throughput approach to screen tumor organoids by seeding cells in mini-rings. They apply their method to cell lines and patient-derived tumor organoids representing four different cancers, and identified personalized responses for each organoid within a clinically relevant timeline.

    • Nhan Phan
    • Jenny J. Hong
    • Alice Soragni
    ResearchOpen Access
    Communications Biology
    Volume: 2, P: 1-11
  • Traditional 2D cell culture platforms do not accurately reflect the physiology of human tumors. Here, authors combine bioprinting and high-speed live cell interferometry with machine learning to measure drug sensitivity at single-organoid resolution in a label-free manner.

    • Peyton J. Tebon
    • Bowen Wang
    • Alice Soragni
    ResearchOpen Access
    Nature Communications
    Volume: 14, P: 1-16
  • Organoids are cell-based in vitro models derived from stem cells, reconstituting the complex structure and function of the corresponding tissue. In this Primer, Zhao, Chen, Dowbaj, Sljukic, Bratlie, Lin et al. discuss the development of organoids and methods for controlling their cellular environment.

    • Zixuan Zhao
    • Xinyi Chen
    • Hanry Yu
    Reviews
    Nature Reviews Methods Primers
    Volume: 2, P: 1-21