TY - GEN
T1 - A Deep Learning Framework for Noise Component Detection from Resting-State Functional MRI
AU - for UNC/UMN Baby Connectome Project Consortium
AU - Kam, Tae Eui
AU - Wen, Xuyun
AU - Jin, Bing
AU - Jiao, Zhicheng
AU - Hsu, Li Ming
AU - Zhou, Zhen
AU - Liu, Yujie
AU - Yamashita, Koji
AU - Hung, Sheng Che
AU - Lin, Weili
AU - Zhang, Han
AU - Shen, Dinggang
N1 - Funding Information:
Acknowledgements. This work utilizes approaches developed by an NIH grant (1U01MH110274) and the efforts of the UNC/UMN Baby Connectome Project (BCP) Consortium. This work was also supported in part by NIH grants MH108914 and MH117943.
Publisher Copyright:
© 2019, Springer Nature Switzerland AG.
PY - 2019
Y1 - 2019
N2 - Resting-state functional magnetic resonance imaging (rs-fMRI) is a non-invasive functional imaging technique that has been widely used to investigate brain functional connectome. Noises and artifacts are dominant in the raw rs-fMRI, making effective noise removal a necessity prior to any subsequent analysis. Without requiring any additional biophysiological recording devices, directly applying independent component analysis on rs-fMRI data becomes a popular process further separating structured noise from signals. However, fast and accurate automatic identification of the noise-related components is critical. Conventional machine learning techniques have been used in training such a classifier with manually engineered features of the components, which usually takes a long time even in the testing phase because its success relies on exhaustively extraction of spatial and temporal features and assembling multiple complicated classifiers to reach satisfactory results. In this paper, we proposed a novel, end-to-end, deep learning-based framework dedicated for noise component identification via effective, automatic, multilayer, hierarchically embedded feature extraction. The merit that does not require any assumptions on the features guarantees its unprecedented performance on the rs-fMRI data even from very heterogeneous cohorts. The speed of this method can be further accelerated due to its inherent ability of parallel computing with GPU. We validate our method with a challenging infant rs-fMRI dataset with high resolution and high quality, which are very different from the commonly used adult data. Our proposed method is more general, hypothesis-free, fast (<1 s for single component classification), and accurate (>97% accuracy).
AB - Resting-state functional magnetic resonance imaging (rs-fMRI) is a non-invasive functional imaging technique that has been widely used to investigate brain functional connectome. Noises and artifacts are dominant in the raw rs-fMRI, making effective noise removal a necessity prior to any subsequent analysis. Without requiring any additional biophysiological recording devices, directly applying independent component analysis on rs-fMRI data becomes a popular process further separating structured noise from signals. However, fast and accurate automatic identification of the noise-related components is critical. Conventional machine learning techniques have been used in training such a classifier with manually engineered features of the components, which usually takes a long time even in the testing phase because its success relies on exhaustively extraction of spatial and temporal features and assembling multiple complicated classifiers to reach satisfactory results. In this paper, we proposed a novel, end-to-end, deep learning-based framework dedicated for noise component identification via effective, automatic, multilayer, hierarchically embedded feature extraction. The merit that does not require any assumptions on the features guarantees its unprecedented performance on the rs-fMRI data even from very heterogeneous cohorts. The speed of this method can be further accelerated due to its inherent ability of parallel computing with GPU. We validate our method with a challenging infant rs-fMRI dataset with high resolution and high quality, which are very different from the commonly used adult data. Our proposed method is more general, hypothesis-free, fast (<1 s for single component classification), and accurate (>97% accuracy).
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U2 - 10.1007/978-3-030-32248-9_84
DO - 10.1007/978-3-030-32248-9_84
M3 - Conference contribution
AN - SCOPUS:85075684788
SN - 9783030322472
T3 - Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
SP - 754
EP - 762
BT - Medical Image Computing and Computer Assisted Intervention – MICCAI 2019 - 22nd International Conference, Proceedings
A2 - Shen, Dinggang
A2 - Yap, Pew-Thian
A2 - Liu, Tianming
A2 - Peters, Terry M.
A2 - Khan, Ali
A2 - Staib, Lawrence H.
A2 - Essert, Caroline
A2 - Zhou, Sean
PB - Springer Science and Business Media Deutschland GmbH
T2 - 22nd International Conference on Medical Image Computing and Computer-Assisted Intervention, MICCAI 2019
Y2 - 13 October 2019 through 17 October 2019
ER -