期刊
ACS NANO
卷 12, 期 8, 页码 8240-8247出版社
AMER CHEMICAL SOC
DOI: 10.1021/acsnano.8b03404
关键词
DNA; metal cluster; fluorescence; high-throughput; machine learning
类别
资金
- NIH-NEI [5-R24-EY14799]
- National Nuclear Security Administration of the U.S. Department of Energy [DE-AC52-06NA25396]
- [NSF-DGE-1144085]
- [NSF-DMR-1309410]
- Direct For Mathematical & Physical Scien [1309410] Funding Source: National Science Foundation
DNA nucleobase sequence controls the size of DNA-stabilized silver clusters, leading to their well-known yet little understood sequence-tuned colors. The enormous space of possible DNA sequences for templating clusters has challenged the understanding of how sequence selects cluster properties and has limited the design of applications that employ these clusters. We investigate the genomic role of DNA sequence for fluorescent silver clusters using a data-driven approach. Employing rapid parallel silver cluster synthesis and fluorimetry, we determine the fluorescence spectra of silver cluster products stabilized by 1432 distinct DNA oligomers. By applying pattern recognition algorithms to this large experimental data set, we discover certain DNA base patterns, or motifs, that correlate to silver clusters with similar fluorescence spectra. These motifs are employed in machine learning classifiers to predictively design DNA template sequences for specific fluorescence color bands. Our method improves selectivity of templates by 330% for silver clusters with peak emission wavelengths beyond 660 nm. The discovered base motifs also provide physical insights into how DNA sequence controls silver cluster size and color. This predictive design approach for color of DNA-stabilized silver clusters exhibits the potential of machine learning and data mining to increase the precision and efficiency of nanomaterials design, even for a soft-matter-inorganic hybrid system characterized by an extremely large parameter space.
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