Massively Parallel Selection of NanoCluster Beacons (Adv. Mater. 41/2022)

Fluorescent Nanomaterials By repurposing next‐generation sequencing chips, millions of fluorescent NanoCluster Beacons (NCBs) can be screened in a single experiment. Combining this high‐throughput screening platform with machine‐learning algorithms, in article number 2204957, Hsin‐Chih Yeh and co‐wo...

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Bibliographic Details
Published in:Advanced materials (Weinheim) Vol. 34; no. 41
Main Authors: Kuo, Yu‐An, Jung, Cheulhee, Chen, Yu‐An, Kuo, Hung‐Che, Zhao, Oliver S., Nguyen, Trung D., Rybarski, James R., Hong, Soonwoo, Chen, Yuan‐I, Wylie, Dennis C., Hawkins, John A., Walker, Jada N., Shields, Samuel W. J., Brodbelt, Jennifer S., Petty, Jeffrey T., Finkelstein, Ilya J., Yeh, Hsin‐Chih
Format: Journal Article
Language:English
Published: Weinheim Wiley Subscription Services, Inc 01-10-2022
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Summary:Fluorescent Nanomaterials By repurposing next‐generation sequencing chips, millions of fluorescent NanoCluster Beacons (NCBs) can be screened in a single experiment. Combining this high‐throughput screening platform with machine‐learning algorithms, in article number 2204957, Hsin‐Chih Yeh and co‐workers establish a pipeline to design bright and multicolor NCBs in silico.
ISSN:0935-9648
1521-4095
DOI:10.1002/adma.202270286