QMVO-SCDL: A new regression model for fMRI pain decoding using quantum-behaved sparse dictionary learning

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The exponential growth of functional magnetic reasoning imaging (fMRI) data offers a great opportunity for basic and clinical research to explore functional brain activity. Nonetheless, due to the lack of effective and efficient tools for handling high-dimensional and complex fMRI data, this potential has still not been fully explored. A critical issue to be addressed is to identify clinically relevant features from high dimensional fMRI data in a fast and accurate manner. To address this problem, a new quantum-behaved multiverse optimization (QMVO) approach is proposed for fMRI dimensionality reduction and a new prediction approach based on L1-norm sparse coding and adaptive dictionary learning (SCDL) is developed to decode the whole brain fMRI data. QMVO is designed to enhance local search ability, avoid premature convergence, and increase population diversity among individuals. Further, to efficiently re-estimate parameters of the prediction model with new available data, a new SCDL sparse coding is proposed, which requires no training and needs minimal parameters to tune. The proposed QMVO-SCDL model is applied to a pain-evoked fMRI dataset to decode the pain perception level. Results show that QMVO-SCDL can decode pain levels and identify predictive fMRI patterns with high accuracy, high convergence speed, and short consumption time. Moreover, the performance of the proposed model outperforms different recent ML techniques. Therefore, the proposed model has a great promise to be a powerful tool for fMRI decoding.

论文关键词:Sparse coding,fMRI,Dictionary learning,L1-norm basis pursuit,Quantum computing,Multiverse optimization

论文评审过程:Received 5 October 2021, Revised 4 June 2022, Accepted 22 June 2022, Available online 26 June 2022, Version of Record 11 July 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109323