TY - GEN
T1 - Scalable Variational Quantum Circuits for Autoencoder-based Drug Discovery
AU - Li, Junde
AU - Ghosh, Swaroop
N1 - Funding Information:
ACKNOWLEDGMENT The work was supported in part by National Science Foundation (OIA-204066 and DGE-2113839) and seed grants from Penn State Institute for Computational and Data Sciences and Penn State Huck Institute of the Life Sciences.
Publisher Copyright:
© 2022 EDAA.
PY - 2022
Y1 - 2022
N2 - The de novo design of drug molecules is recognized as a time-consuming and costly process, and computational approaches have been applied in each stage of the drug discovery pipeline. Variational autoencoder is one of the computer-aided design methods which explores the chemical space based on an existing molecular dataset. Quantum machine learning has emerged as an atypical learning method that may speed up some classical learning tasks because of its strong expressive power. However, near-term quantum computers suffer from limited num-ber of qubits which hinders the representation learning in high dimensional spaces. We present a scalable quantum generative autoencoder (SQ-VAE) for simultaneously reconstructing and sampling drug molecules, and a corresponding vanilla variant (SQ-AE) for better reconstruction. The architectural strategies in hybrid quantum classical networks such as, adjustable quantum layer depth, heterogeneous learning rates, and patched quantum circuits are proposed to learn high dimensional dataset such as, ligand-targeted drugs. Extensive experimental results are reported for different dimensions including 8x8 and 32x32 after choosing suitable architectural strategies. The performance of quantum generative autoencoder is compared with the corre-sponding classical counterpart throughout all experiments. The results show that quantum computing advantages can be achieved for normalized low-dimension molecules, and that high-dimension molecules generated from quantum generative autoencoders have better drug properties within the same learning period.
AB - The de novo design of drug molecules is recognized as a time-consuming and costly process, and computational approaches have been applied in each stage of the drug discovery pipeline. Variational autoencoder is one of the computer-aided design methods which explores the chemical space based on an existing molecular dataset. Quantum machine learning has emerged as an atypical learning method that may speed up some classical learning tasks because of its strong expressive power. However, near-term quantum computers suffer from limited num-ber of qubits which hinders the representation learning in high dimensional spaces. We present a scalable quantum generative autoencoder (SQ-VAE) for simultaneously reconstructing and sampling drug molecules, and a corresponding vanilla variant (SQ-AE) for better reconstruction. The architectural strategies in hybrid quantum classical networks such as, adjustable quantum layer depth, heterogeneous learning rates, and patched quantum circuits are proposed to learn high dimensional dataset such as, ligand-targeted drugs. Extensive experimental results are reported for different dimensions including 8x8 and 32x32 after choosing suitable architectural strategies. The performance of quantum generative autoencoder is compared with the corre-sponding classical counterpart throughout all experiments. The results show that quantum computing advantages can be achieved for normalized low-dimension molecules, and that high-dimension molecules generated from quantum generative autoencoders have better drug properties within the same learning period.
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U2 - 10.23919/DATE54114.2022.9774564
DO - 10.23919/DATE54114.2022.9774564
M3 - Conference contribution
AN - SCOPUS:85130835127
T3 - Proceedings of the 2022 Design, Automation and Test in Europe Conference and Exhibition, DATE 2022
SP - 340
EP - 345
BT - Proceedings of the 2022 Design, Automation and Test in Europe Conference and Exhibition, DATE 2022
A2 - Bolchini, Cristiana
A2 - Verbauwhede, Ingrid
A2 - Vatajelu, Ioana
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2022 Design, Automation and Test in Europe Conference and Exhibition, DATE 2022
Y2 - 14 March 2022 through 23 March 2022
ER -