Raman image-activated cell sorting

The advent of image-activated cell sorting and imaging-based cell picking has advanced our knowledge and exploitation of biological systems in the last decade. Unfortunately, they generally rely on fluorescent labeling for cellular phenotyping, an indirect measure of the molecular landscape in the cell, which has critical limitations. Here we demonstrate Raman image-activated cell sorting by directly probing chemically specific intracellular molecular vibrations via ultrafast multicolor stimulated Raman scattering (SRS) microscopy for cellular phenotyping. Specifically, the technology enables real-time SRS-image-based sorting of single live cells with a throughput of up to ~100 events per second without the need for fluorescent labeling. To show the broad utility of the technology, we show its applicability to diverse cell types and sizes. The technology is highly versatile and holds promise for numerous applications that are previously difficult or undesirable with fluorescence-based technologies. Most current cell sorting methods are based on fluorescence detection with no imaging capability. Here the authors generate and use Raman image-activated cell sorting with a throughput of around 100 events per second, providing molecular images with no need for labeling.

Fumihito Arai | Yusuke Kasai | Shinya Sakuma | Takuya Asai | Dino Di Carlo | Yasuyuki Ozeki | Hirofumi Kobayashi | Keisuke Goda | Shunji Tanaka | Keiji Numata | Tomohisa Hasunuma | Satoshi Matsusaka | Yoichiroh Hosokawa | Yoshitaka Shirasaki | Kiyotaka Shiba | Minoru Oikawa | Hideharu Mikami | Shunnosuke Ueno | Nao Nitta | Takuro Ito | Takanori Iino | Yu Hoshino | Takeaki Sugimura | Hiroshi Watarai | Mai Yamagishi | Sotaro Uemura | Yuichi Kato | Takashi Yamano | Akihiro Isozaki | Yasutaka Kitahama | Yuta Suzuki | Hiroshi Tezuka | Dinghuan Deng | Hideya Fukuzawa | Misa Hase | Takeshi Hayakawa | Kei Hiraki | Kotaro Hiramatsu | Mary Inaba | Yuki Inoue | Masataka Kajikawa | Hiroshi Karakawa | Cheng Lei | Atsuhiro Nakagawa | Tadataka Ota | Takeichiro Sekiya | Nobutake Suzuki | Masayuki Yazawa | Yusuke Yonamine | H. Fukuzawa | F. Arai | M. Inaba | K. Hiraki | S. Sakuma | H. Tezuka | K. Goda | D. Di Carlo | K. Numata | T. Hasunuma | Nao Nitta | Y. Ozeki | S. Uemura | Minoru Oikawa | A. Nakagawa | Masataka Kajikawa | Yuta Suzuki | Takuro Ito | K. Shiba | H. Kobayashi | Cheng Lei | M. Yamagishi | D. Deng | S. Matsusaka | T. Hayakawa | A. Isozaki | Shunji Tanaka | Y. Kasai | Misa Hase | T. Sugimura | Y. Hosokawa | Y. Shirasaki | H. Mikami | T. Ota | M. Yazawa | H. Watarai | K. Hiramatsu | Yuichi Kato | Yusuke Yonamine | Yuta Hoshino | Y. Kitahama | Hiroshi Karakawa | Takashi Yamano | Takuya Asai | Yasuyuki Ozeki | T. Iino | N. Suzuki | Yuki Inoue | Takeichiro Sekiya | Shunnosuke Ueno | Yusuke Hoshino | Yuta Suzuki | S. Matsusaka

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