Compressed sensing MRI using higher order multi-scale FREBAS for sparsifying transform function

2015 ◽  
Author(s):  
S. Ito ◽  
K. Ito ◽  
M. Shibuya ◽  
Y. Yamada
2021 ◽  
Author(s):  
Jianjun Gao ◽  
Linbo Qing ◽  
Lindong Li ◽  
Yongqiang Cheng ◽  
Yonghong Peng

2021 ◽  
Vol 58 (4) ◽  
pp. 0410002
Author(s):  
李金凤 Li Jinfeng ◽  
赵雨童 Zhao Yutong ◽  
黄纬然 Huang Weiran ◽  
郭巾男 Guo Jinnan

Author(s):  
Chris J. Oates ◽  
Richard Amos ◽  
Simon E.F. Spencer

AbstractGraphical models are widely used to study complex multivariate biological systems. Network inference algorithms aim to reverse-engineer such models from noisy experimental data. It is common to assess such algorithms using techniques from classifier analysis. These metrics, based on ability to correctly infer individual edges, possess a number of appealing features including invariance to rank-preserving transformation. However, regulation in biological systems occurs on multiple scales and existing metrics do not take into account the correctness of higher-order network structure. In this paper novel performance scores are presented that share the appealing properties of existing scores, whilst capturing ability to uncover regulation on multiple scales. Theoretical results confirm that performance of a network inference algorithm depends crucially on the scale at which inferences are to be made; in particular strong local performance does not guarantee accurate reconstruction of higher-order topology. Applying these scores to a large corpus of data from the DREAM5 challenge, we undertake a data-driven assessment of estimator performance. We find that the “wisdom of crowds” network, that demonstrated superior local performance in the DREAM5 challenge, is also among the best performing methodologies for inference of regulation on multiple length scales.


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