Highly Efficient Capture of Circulating Tumor Cells by Using Nanostructured Silicon Substrates with Integrated Chaotic Micromixers

Shutao Wang(California NanoSystems Institute), Kan Liu(California NanoSystems Institute), Jian Liu(Cedars-Sinai Medical Center), Zeta Tak For Yu(California NanoSystems Institute), Xiaowen Xu(California NanoSystems Institute), Libo Zhao(California NanoSystems Institute), Tom Lee(California NanoSystems Institute), Eun Kyung Lee(California NanoSystems Institute), Jean Reiss(University of California, Los Angeles), Yi‐Kuen Lee(Hong Kong University of Science and Technology), Leland W.K. Chung(Cedars-Sinai Medical Center), Jiaoti Huang(University of California, Los Angeles), Matthew B. Rettig(University of California, Los Angeles), David B. Seligson(University of California, Los Angeles), Kumaran N. Duraiswamy(California NanoSystems Institute), Clifton Kwang-Fu Shen(California NanoSystems Institute), Hsian‐Rong Tseng(California NanoSystems Institute)
Angewandte Chemie International Edition
March 4, 2011
Cited by 618Open Access
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Abstract

Finding a needle in a haystack: A new technology is demonstrated to enrich circulating tumor cells (CTCs) with high efficiency by integrating an antibody-coated silicon nanopillar (SiNP, see picture; gray) substrate with an overlaid polydimethylsiloxane (PDMS) microfluidic chaotic mixer (turquoise). It shows significantly improved sensitivity in detecting rare CTCs from whole blood, thus providing an alternative for monitoring cancer progression. Detailed facts of importance to specialist readers are published as ”Supporting Information”. Such documents are peer-reviewed, but not copy-edited or typeset. They are made available as submitted by the authors. Please note: The publisher is not responsible for the content or functionality of any supporting information supplied by the authors. Any queries (other than missing content) should be directed to the corresponding author for the article.


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