Translation Microscopy (TRAM) for super-resolution imaging

نویسندگان

  • Zhen Qiu
  • Rhodri S Wilson
  • Yuewei Liu
  • Alison R Dun
  • Rebecca S Saleeb
  • Dongsheng Liu
  • Colin Rickman
  • Margaret Frame
  • Rory R Duncan
  • Weiping Lu
چکیده

Super-resolution microscopy is transforming our understanding of biology but accessibility is limited by its technical complexity, high costs and the requirement for bespoke sample preparation. We present a novel, simple and multi-color super-resolution microscopy technique, called translation microscopy (TRAM), in which a super-resolution image is restored from multiple diffraction-limited resolution observations using a conventional microscope whilst translating the sample in the image plane. TRAM can be implemented using any microscope, delivering up to 7-fold resolution improvement. We compare TRAM with other super-resolution imaging modalities, including gated stimulated emission deletion (gSTED) microscopy and atomic force microscopy (AFM). We further developed novel 'ground-truth' DNA origami nano-structures to characterize TRAM, as well as applying it to a multi-color dye-stained cellular sample to demonstrate its fidelity, ease of use and utility for cell biology.

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عنوان ژورنال:

دوره 6  شماره 

صفحات  -

تاریخ انتشار 2016