2026-01-30 神戸大学

<関連情報>
- https://www.kobe-u.ac.jp/ja/news/article/20260130-67548/
- https://onlinelibrary.wiley.com/doi/10.1002/anie.202526025
PCAベースのデータベースマイニングにより、立体分岐シクロプロパン化のための細菌カルベントランスフェラーゼの発見が可能に PCA-Based Database Mining Enables the Discovery of Bacterial Carbene Transferases for Stereodivergent Cyclopropanation
Shunsuke Kato, Koki Takeuchi, Kohei Umeda, Hisashi Kudo, Tomohisa Hasunuma, Takashi Hayashi
Angewandte Chemie International Edition Published: 28 January 2026
DOI:https://doi.org/10.1002/anie.202526025
ABSTRACT
Protein engineering is a practical approach to providing enzymes with an “abiotic” catalytic activity. However, it remains difficult to explore the full diversity of natural sequence space through the engineering of a single specific protein. As an alternative to these protein engineering approaches, we here demonstrate a database mining approach using a principal component analysis (PCA)-based clustering method to facilitate the identification of promising enzyme candidates. As a proof of concept, we applied this method to the cyclopropanation of styrene, and the sequence space of bacterial globins in the database was extensively investigated. By screening 275 globins from 171 different organisms, we successfully discovered enzymes capable of catalyzing stereodivergent carbene transfer reactions. Furthermore, statistical analyses of sequence data allowed us to detect characteristic structural properties of these globins, which determine the unique stereoselectivity of cyclopropanation. While these bioinformatics tools have primarily been applied to predict enzymes’ natural biological functions, this study demonstrates their applicability to exploring enzyme candidates for abiotic reactions unrelated to their native biological activity. Given the increasing interest in biocatalytic applications beyond natural reactivity, this PCA-based mining approach provides a promising direction for expanding the functional diversity of biocatalysts.


