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1.
Nature ; 588(7836): 83-88, 2020 12.
Artigo em Inglês | MEDLINE | ID: mdl-33049755

RESUMO

Training algorithms to computationally plan multistep organic syntheses has been a challenge for more than 50 years1-7. However, the field has progressed greatly since the development of early programs such as LHASA1,7, for which reaction choices at each step were made by human operators. Multiple software platforms6,8-14 are now capable of completely autonomous planning. But these programs 'think' only one step at a time and have so far been limited to relatively simple targets, the syntheses of which could arguably be designed by human chemists within minutes, without the help of a computer. Furthermore, no algorithm has yet been able to design plausible routes to complex natural products, for which much more far-sighted, multistep planning is necessary15,16 and closely related literature precedents cannot be relied on. Here we demonstrate that such computational synthesis planning is possible, provided that the program's knowledge of organic chemistry and data-based artificial intelligence routines are augmented with causal relationships17,18, allowing it to 'strategize' over multiple synthetic steps. Using a Turing-like test administered to synthesis experts, we show that the routes designed by such a program are largely indistinguishable from those designed by humans. We also successfully validated three computer-designed syntheses of natural products in the laboratory. Taken together, these results indicate that expert-level automated synthetic planning is feasible, pending continued improvements to the reaction knowledge base and further code optimization.


Assuntos
Inteligência Artificial , Produtos Biológicos/síntese química , Técnicas de Química Sintética/métodos , Química Orgânica/métodos , Software , Inteligência Artificial/normas , Automação/métodos , Automação/normas , Benzilisoquinolinas/síntese química , Benzilisoquinolinas/química , Técnicas de Química Sintética/normas , Química Orgânica/normas , Indanos/síntese química , Indanos/química , Alcaloides Indólicos/síntese química , Alcaloides Indólicos/química , Bases de Conhecimento , Lactonas/síntese química , Lactonas/química , Macrolídeos/síntese química , Macrolídeos/química , Reprodutibilidade dos Testes , Sesquiterpenos/síntese química , Sesquiterpenos/química , Software/normas , Tetra-Hidroisoquinolinas/síntese química , Tetra-Hidroisoquinolinas/química
2.
Proc Natl Acad Sci U S A ; 117(24): 13261-13266, 2020 06 16.
Artigo em Inglês | MEDLINE | ID: mdl-32482866

RESUMO

Modern organic reaction discovery and development relies on the rapid assessment of large arrays of hypothesis-driven experiments. The time-intensive nature of reaction analysis presents the greatest practical barrier for the execution of this iterative process that underpins the development of new bioactive agents. Toward addressing this critical bottleneck, we report herein a high-throughput analysis (HTA) method of reaction mixtures by photocapture on a 384-spot diazirine-terminated self-assembled monolayer, and self-assembled monolayers for matrix-assisted laser desorption/ionization mass spectrometry (SAMDI-MS) analysis. This analytical platform has been applied to the identification of a single-electron-promoted reductive coupling of acyl azolium species.


Assuntos
Ensaios de Triagem em Larga Escala/métodos , Espectrometria de Massas por Ionização e Dessorção a Laser Assistida por Matriz/métodos , Benzimidazóis/síntese química , Benzimidazóis/química , Diazometano/química , Oxirredução , Raios Ultravioleta
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