Ghost cytometry

Sadao Ota(Japan Science and Technology Agency), Ryoichi Horisaki(Japan Science and Technology Agency), Yōko Kawamura(The University of Tokyo), Masashi Ugawa(The University of Tokyo), Issei Sato(Nihon University), Kazuki Hashimoto(Japan Aerospace Exploration Agency), Ryosuke Kamesawa(The University of Tokyo), Kotaro Setoyama(The University of Tokyo), Satoko Yamaguchi(The University of Tokyo), Katsuhito Fujiu(The University of Tokyo), Kayo Waki(The University of Tokyo), Hiroyuki Noji(Government of Japan)
Science
June 14, 2018
Cited by 246

Abstract

Ghost imaging is a technique used to produce an object's image without using a spatially resolving detector. Here we develop a technique we term "ghost cytometry," an image-free ultrafast fluorescence "imaging" cytometry based on a single-pixel detector. Spatial information obtained from the motion of cells relative to a static randomly patterned optical structure is compressively converted into signals that arrive sequentially at a single-pixel detector. Combinatorial use of the temporal waveform with the intensity distribution of the random pattern allows us to computationally reconstruct cell morphology. More importantly, we show that applying machine-learning methods directly on the compressed waveforms without image reconstruction enables efficient image-free morphology-based cytometry. Despite a compact and inexpensive instrumentation, image-free ghost cytometry achieves accurate and high-throughput cell classification and selective sorting on the basis of cell morphology without a specific biomarker, both of which have been challenging to accomplish using conventional flow cytometers.


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