The 64th JSAP Spring Meeting, 2017

Presentation information

Oral presentation

12 Organic Molecules and Bioelectronics » 12.6 Nanobiotechnology

[17a-F206-1~12] 12.6 Nanobiotechnology

Fri. Mar 17, 2017 9:00 AM - 12:15 PM F206 (F206)

Ryugo Tero(Toyohashi Univ. of Tech.), Tomohiro Hayashi(Titech)

11:00 AM - 11:15 AM

[17a-F206-8] Automated analyses and knowledge derivations of fragment molecular orbital calculations

Yuji Mochizuki1,2, Yuto Komeiji3, Mayu Fujimoto1, Sona Saitou1, Jun Iijima1, Hideo Doi1, Tsuyoshi Iyama1, Akira Okusawa4, Takeshi Makimura4, Takaya Nakanishi4, Kaori Fukuzawa5, Shigenori Tanaka6 (1.Rikkyo Univ., 2.Univ. Tokyo, 3.AIST, 4.Knowledge Communication Co Ltd, 5.Hoshi Univ., 6.Kobe Univ.)

Keywords:Fragment Molecular Orbital (FMO) calculations, Machine Learning

The inter-fragment interaction energies (IFIEs) are of the most useful quantity to grasp the nature of interactions among amino acid residues in the target protein calculated by the fragment molecular orbital (FMO) method. When the number of sample structure grows, the manual understanding of IFIE should become hard. Thus, we have been developing the machine learning-assisted automatic characterization with the MS Azure environment. Furthermore, Google’s TensorFlow as a representative deep-learning tool has been used to analyze the IFIE-map which is a two-dimensional visualization of IFIE values. In this presentation, we will present a summary of these researches and address the future directions.