先進診断システム探索研究部門
基本情報
- 所属
- 藤田医科大学 医学部 医学科 講師名古屋大学 大学院医学系研究科 客員研究員
- ORCID ID
https://orcid.org/0000-0001-6505-1130- J-GLOBAL ID
- 202201013905778353
- researchmap会員ID
- R000032383
経歴
8-
2026年4月 - 現在
-
2026年4月 - 現在
-
2023年4月 - 2024年10月
-
2024年10月 - 2026年3月
-
2022年4月 - 2023年3月
論文
5-
2025年4月16日Abstract Artificially designed proteins are widely used in applications such as optogenetics and biosensing. While experimental optimization of these proteins is effective, it is also costly and labor-intensive. To address this challenge, computational approaches have been developed, primarily relying on sequence-based features. However, protein function is inherently tied to its three-dimensional (3D) structure, and incorporating structural information could enable more accurate predictions and provide deeper biological interpretability. Here, we proposed a structure-based analysis framework called ‘Foldinsight’ for predicting protein functionalities. In our framework, we first predict protein structures from sequences using AlphaFold2 and then utilize these structures to predict protein properties. Since proteins vary in the number of atoms and lack direct atomic correspondence, we applied molecular field mapping, which captures the energy states surrounding a protein and converts them into fixed-length numerical vectors. This transformation enables the application of machine learning, allowing protein properties to be predicted from structure-derived features. Applying this framework to channelrhodopsin mutants, we achieved predictive performance comparable to sequence-based models. Additionally, our structure-based analysis successfully identified key structural regions contributing to functional differences, highlighting the advantage of incorporating structural data into predictive modeling.
-
Journal of General Physiology 154(9) 2022年9月5日
-
Journal of Controlled Release 352 2022年
-
PLoS ONE 16(8 August) 2021年
-
Journal of Infection and Chemotherapy 25(9) 2019年
共同研究・競争的資金等の研究課題
2-
日本学術振興会 科学研究費助成事業 2024年4月 - 2026年3月
-
日本学術振興会 科学研究費助成事業 2020年4月 - 2022年3月