2022
DOI: 10.1002/advs.202201988
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Machine Learning Guides Peptide Nucleic Acid Flow Synthesis and Sequence Design

Abstract: Peptide nucleic acids (PNAs) are potential antisense therapies for genetic, acquired, and viral diseases. Efficiently selecting candidate PNA sequences for synthesis and evaluation from a genome containing hundreds to thousands of options can be challenging. To facilitate this process, this work leverages machine learning (ML) algorithms and automated synthesis technology to predict PNA synthesis efficiency and guide rational PNA sequence design. The training data is collected from individual fluorenylmethylox… Show more

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Cited by 7 publications
(4 citation statements)
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“…23 For monitoring of liquid phase peptide synthesis, Livingston's team have reported a powerful advance in UHPLC-MS. 24 Gómez-Bombarelli and Pentelute have demonstrated the value of UV-vis analysis of in-ow Fmoc deprotection reactions to generate data-rich input to build predictive deep learning insights for Fmoc deprotection efficiency. 15,25 Otake and co-workers have demonstrated the value of in-line near infrared (NIR) ow cells as a means of tracking liquid phase peptide synthesis in ow. 26 We used our recently-developed imaging kinetics soware, Kineticolor, 27,28 to provide camera-enabled ex situ (non-contact) reaction monitoring (Fig.…”
Section: Monitoring Methods For Solid Phase Peptide Synthesis (Spps)mentioning
confidence: 99%
“…23 For monitoring of liquid phase peptide synthesis, Livingston's team have reported a powerful advance in UHPLC-MS. 24 Gómez-Bombarelli and Pentelute have demonstrated the value of UV-vis analysis of in-ow Fmoc deprotection reactions to generate data-rich input to build predictive deep learning insights for Fmoc deprotection efficiency. 15,25 Otake and co-workers have demonstrated the value of in-line near infrared (NIR) ow cells as a means of tracking liquid phase peptide synthesis in ow. 26 We used our recently-developed imaging kinetics soware, Kineticolor, 27,28 to provide camera-enabled ex situ (non-contact) reaction monitoring (Fig.…”
Section: Monitoring Methods For Solid Phase Peptide Synthesis (Spps)mentioning
confidence: 99%
“…14 Consequently, machine learning has been widely used in structure determination, performance prediction and new material discovery. 15,16 Bhowmik et al employed Decision Tree and principal component analysis methods to successfully predict the specific heat capacity of polymers using various structural descriptors, including bonds, angles, atoms and molecular weights. 17 Joo et al developed prediction models for the physical properties of polypropylene composites, employing three machine learning methods: multiple linear regression, deep neural network and Random Forest.…”
Section: Introductionmentioning
confidence: 99%
“…16 Machine learning (ML) tools can be applied to solve many problems in chemical science and materials science, including mapping structure and property relationships, [19][20][21][22] discovering new compounds and materials, [23][24][25][26][27][28][29][30] recommending feasible chemical synthesis pathways, [31][32][33] and guiding automated experiments. [34][35][36] ML tools are data-driven; therefore, highquality, diverse, and well-organized data are the foundation of these studies. 8,37 However, the sparse, small, and difficult-toextract nature of polymer data severely restricts the application of these tools and even the development of polymer informatics.…”
Section: Introductionmentioning
confidence: 99%