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基于多目标优化约束独立成分分析方法的fMRI数据分析研究
引用本文:石玉虎,曾卫明,邓金,王倪传.基于多目标优化约束独立成分分析方法的fMRI数据分析研究[J].中国生物医学工程学报,2021,40(1):19-32.
作者姓名:石玉虎  曾卫明  邓金  王倪传
作者单位:1(上海海事大学信息工程学院,上海 201306)2(淮海工学院计算机工程学院, 江苏 连云港 222023)
基金项目:国家自然科学基金青年基金(61906117);上海市扬帆计划项目(19YF1419000);国家自然科学基金(31870979)。
摘    要:约束独立成分分析(CICA)通过加入先验信息,可极大地提高独立成分分析(ICA)的盲源信号分析性能,但还存在先验信息难以获取、先验信息约束条件阈值参数难以选择以及先验信息难以被有效利用等问题,需要进一步研究和解决.在多目标优化框架的基础上,建立一种同时融合时空先验信息的CICA模型,可有效规避CICA中阈值参数选择的问...

关 键 词:功能磁共振成像  约束独立成分分析  本真先验信息  多目标优化
收稿时间:2019-03-11

Study on fMRI Data Analysis Based on Multi-Objective Optimization CICA
Shi Yuhu,Zeng Weiming,Deng Jin,Wang Nizhuan.Study on fMRI Data Analysis Based on Multi-Objective Optimization CICA[J].Chinese Journal of Biomedical Engineering,2021,40(1):19-32.
Authors:Shi Yuhu  Zeng Weiming  Deng Jin  Wang Nizhuan
Institution:(Information Engineering College, Shanghai Maritime University, Shanghai 201306, China)(School of Computer Engineering, Huaihai Institute of Technology, Lianyungang 222023, Jiangsu, China)
Abstract:Constrained independent component analysis(CICA)greatly improves the performance of blind source signal analysis of independent component analysis(ICA)by incorporating priori information,nevertheless,the current CICA method has some problems,such as the difficulty in obtaining prior information,selecting threshold parameters of prior information constraints,and using priori information effectively,which need to be improved. Targeting to these problems,this paper established a CICA model that simultaneously integrated temporal and spatial priori information on the basis of multi-objective optimization framework,and solved the problem of selecting threshold parameters in CICA through multi-objective optimization strategy.Furthermore,an adaptive mining algorithm was proposed to extract intrinsic a priori information from the fMRI data of multiple subjects to guide the analysis of fMRI group data,thus providing a new way for CICA to obtain priori information. Finally,10 simulated data,5 task-state and 23 resting-state fMRI data were used to verify the effectiveness of the proposed method. The results showed that the spatio-temporal source signals obtained by multi-objective optimization based CICA(MOPCICA)were generally superior to those obtained by ICA,CICA with temporal reference(CICA-tR)and CICA with spatial reference(CICA-sR)(P<0. 05)(in the simulation data,the corresponding spatial AUC and temporal correlation coefficients were 0. 75 ± 0. 05,0. 62 ± 0. 02,0. 72±0. 03,0. 71±0. 06 and 0. 81 ± 0. 13,0. 67 ± 0. 04,0. 74 ± 0. 09,0. 77 ± 0. 13,respectively);while the spatial independence was superior to CICA-tR and CICA-sR(P < 0. 05)(in the task-related data,the corresponding kurtosis and negentropy were 69. 20 ± 23. 36,17. 60 ± 13. 22,36. 71 ± 13. 43 and 0. 031 2 ±0. 007 7,0. 003 7±0. 002 1,0. 018 4±0. 004 5,respectively),which indicated that it had a better performance for the blind source signal recovery. Meanwhile,the correlation coefficient between the group component obtained by MOPCICA through using the fMRI intrinsic priori information in the resting state data and the corresponding component of each subject in the group was on average higher than that of ICA,CICA-nR and CICA-fR(P<0. 05),which were 0. 46±0. 08,0. 44±0. 08,0. 45±0. 08 and 0. 44±0. 08 separately,thus can better represented the commonality of the subjects in the group. Therefore,it has a great significance for the fMRI brain functional connectivity detection.
Keywords:functional magnetic resonance imaging  constrained independent component analysis  intrinsic prior information  multi-objective optimization
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