BlueMemeと九州大学、量子AIを活用した先進的ゲノム解析技術の研究成果が国際学術誌に掲載
2025-12-02 九州大学
<関連情報>
- https://www.kyushu-u.ac.jp/ja/researches/view/1373
- https://www.kyushu-u.ac.jp/f/64123/25_1202_03.pdf
- https://academic.oup.com/bib/article/26/6/bbaf604/8343189
QTFPred: 塩基分解能で主要および協調的転写因子の結合を予測する堅牢な高性能量子機械学習モデリング QTFPred: robust high-performance quantum machine learning modeling that predicts main and cooperative transcription factor bindings with base resolution
Taichi Matsubara,Shuto Machida,Samuel Papa Kwesi Owusu ,Akihiro Asakura ,Hiroki Hashimoto,Masanori Matsuoka,Masao Nagasaki
Briefings in Bioinformatics Published:26 November 2025
DOI:https://doi.org/10.1093/bib/bbaf604
Abstract
Deep learning has become an essential tool for identifying transcription factor (TF) binding sites, yet conventional approaches often struggle with limited training data for specific TFs. Here, we introduce QTFPred (Quantum-based TF Predictor), a quantum-classical hybrid framework that integrates quantum convolutional layers within neural networks to predict TF binding at base resolution. By leveraging the exponential feature space offered by quantum circuits and training from scratch via GPU simulation, QTFPred achieves robust performance even in data-sparse scenarios. In benchmarks on 49 Encyclopedia of DNA elements ChIP-seq datasets, QTFPred delivered state-of-the-art accuracy in 92% of binary prediction and 96% of signal prediction tasks, outperforming conventional models in precision and stability. Moreover, the method reveals underlying TF motif representations, offering insights into cooperative binding mechanisms. These results highlight the potential of quantum machine learning to overcome the limitations of traditional deep learning in genomics modeling.


