4.6 Article

SYBA: Bayesian estimation of synthetic accessibility of organic compounds

Journal

JOURNAL OF CHEMINFORMATICS
Volume 12, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s13321-020-00439-2

Keywords

Synthetic accessibility; Bayesian analysis; Bernoulli naive Bayes

Funding

  1. Ministry of Education of the Czech Republic [RVO 68378050-KAV-NPUI, LM2018130]
  2. MSMT [20/2015]
  3. project Center for Tumor Ecology-Research of the Cancer Microenvironment Supporting Cancer Growth and Spread within the Operational Programme Research, Development and Education [CZ.02.1.01/0.0/0.0/1 6_019/0000785]

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SYBA (SYnthetic Bayesian Accessibility) is a fragment-based method for the rapid classification of organic compounds as easy- (ES) or hard-to-synthesize (HS). It is based on a Bernoulli naive Bayes classifier that is used to assign SYBA score contributions to individual fragments based on their frequencies in the database of ES and HS molecules. SYBA was trained on ES molecules available in the ZINC15 database and on HS molecules generated by the Nonpher methodology. SYBA was compared with a random forest, that was utilized as a baseline method, as well as with other two methods for synthetic accessibility assessment: SAScore and SCScore. When used with their suggested thresholds, SYBA improves over random forest classification, albeit marginally, and outperforms SAScore and SCScore. However, upon the optimization of SAScore threshold (that changes from 6.0 to - 4.5), SAScore yields similar results as SYBA. Because SYBA is based merely on fragment contributions, it can be used for the analysis of the contribution of individual molecular parts to compound synthetic accessibility. SYBA is publicly available at under the GNU General Public License.

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