Computer Assisted Synthesis Planning (CASP) has gained considerable interest as of late. Herein we investigate a template-based retrosynthetic planning tool, trained on a variety of datasets consisting of up to 17.5 million reactions. We demonstrate that models trained on datasets such as internal Electronic Laboratory Notebooks (ELN), and the publicly available United States Patent Office (USPTO) extracts, are sufficient for the prediction of full synthetic routes to compounds of interest in medicinal chemistry. As such we have assessed the models on 1731 compounds from 41 virtual libraries for which experimental results were known. Furthermore, we show that accuracy is a misleading metric for assessment of the policy network, and propose ...
The planning of organic syntheses, a critical problem in chemistry, can be directly modeled as resou...
Developments and accessibility of computational methods within machine learning and deep learning ha...
The access to essential medicines remains a problem in many low-income countries for logistic and ex...
Computer Assisted Synthesis Planning (CASP) has gained considerable interest as of late. Herein we i...
Computer Assisted Synthesis Planning (CASP) has gained considerable interest as of late. Herein we i...
Identifying synthetic routes for molecules of interest is a crucial step when discovering new drugs ...
Copyright © 2020 American Chemical Society. This work presents efforts to augment the performance of...
Abstract The need for synthetic route design arises frequently in discovery-oriented chemistry organ...
The drug-like chemical space is estimated to be 10 to the power of 60 molecules, and the largest gen...
Teaching computers to plan multistep syntheses of arbitrary target molecules-including natural produ...
Several tools for the computational planning of synthetic routes have been developed over the last 6...
Computer aided synthesis planning (CASP) is part of a suite of artificial intelligence (AI) based to...
State of the art computer-aided synthesis planning models are naturally biased toward commonly repor...
This electronic version was submitted by the student author. The certified thesis is available in th...
Abstract Modern computer-assisted synthesis planning tools provide strong support for this problem. ...
The planning of organic syntheses, a critical problem in chemistry, can be directly modeled as resou...
Developments and accessibility of computational methods within machine learning and deep learning ha...
The access to essential medicines remains a problem in many low-income countries for logistic and ex...
Computer Assisted Synthesis Planning (CASP) has gained considerable interest as of late. Herein we i...
Computer Assisted Synthesis Planning (CASP) has gained considerable interest as of late. Herein we i...
Identifying synthetic routes for molecules of interest is a crucial step when discovering new drugs ...
Copyright © 2020 American Chemical Society. This work presents efforts to augment the performance of...
Abstract The need for synthetic route design arises frequently in discovery-oriented chemistry organ...
The drug-like chemical space is estimated to be 10 to the power of 60 molecules, and the largest gen...
Teaching computers to plan multistep syntheses of arbitrary target molecules-including natural produ...
Several tools for the computational planning of synthetic routes have been developed over the last 6...
Computer aided synthesis planning (CASP) is part of a suite of artificial intelligence (AI) based to...
State of the art computer-aided synthesis planning models are naturally biased toward commonly repor...
This electronic version was submitted by the student author. The certified thesis is available in th...
Abstract Modern computer-assisted synthesis planning tools provide strong support for this problem. ...
The planning of organic syntheses, a critical problem in chemistry, can be directly modeled as resou...
Developments and accessibility of computational methods within machine learning and deep learning ha...
The access to essential medicines remains a problem in many low-income countries for logistic and ex...