Literature DB >> 35340570

Deep-learning based image reconstruction for MRI-guided near-infrared spectral tomography.

Jinchao Feng1,2,3, Wanlong Zhang1,2, Zhe Li1,2, Kebin Jia1,2, Shudong Jiang3, Hamid Dehghani4, Brian W Pogue3, Keith D Paulsen3.   

Abstract

Non-invasive near-infrared spectral tomography (NIRST) can incorporate the structural information provided by simultaneous magnetic resonance imaging (MRI), and this has significantly improved the images obtained of tissue function. However, the process of MRI guidance in NIRST has been time consuming because of the needs for tissue-type segmentation and forward diffuse modeling of light propagation. To overcome these problems, a reconstruction algorithm for MRI-guided NIRST based on deep learning is proposed and validated by simulation and real patient imaging data for breast cancer characterization. In this approach, diffused optical signals and MRI images were both used as the input to the neural network, and simultaneously recovered the concentrations of oxy-hemoglobin, deoxy-hemoglobin, and water via end-to-end training by using 20,000 sets of computer-generated simulation phantoms. The simulation phantom studies showed that the quality of the reconstructed images was improved, compared to that obtained by other existing reconstruction methods. Reconstructed patient images show that the well-trained neural network with only simulation data sets can be directly used for differentiating malignant from benign breast tumors.

Entities:  

Year:  2022        PMID: 35340570      PMCID: PMC8952193          DOI: 10.1364/optica.446576

Source DB:  PubMed          Journal:  Optica            Impact factor:   11.104


  18 in total

1.  Image quality assessment: from error visibility to structural similarity.

Authors:  Zhou Wang; Alan Conrad Bovik; Hamid Rahim Sheikh; Eero P Simoncelli
Journal:  IEEE Trans Image Process       Date:  2004-04       Impact factor: 10.856

2.  Structural information within regularization matrices improves near infrared diffuse optical tomography.

Authors:  Phaneendra K Yalavarthy; Brian W Pogue; Hamid Dehghani; Colin M Carpenter; Shudong Jiang; Keith D Paulsen
Journal:  Opt Express       Date:  2007-06-25       Impact factor: 3.894

3.  Deep Learning Diffuse Optical Tomography.

Authors:  Jaejun Yoo; Sohail Sabir; Duchang Heo; Kee Hyun Kim; Abdul Wahab; Yoonseok Choi; Seul-I Lee; Eun Young Chae; Hak Hee Kim; Young Min Bae; Young-Wook Choi; Seungryong Cho; Jong Chul Ye
Journal:  IEEE Trans Med Imaging       Date:  2019-08-20       Impact factor: 10.048

4.  Graph- and finite element-based total variation models for the inverse problem in diffuse optical tomography.

Authors:  Wenqi Lu; Jinming Duan; David Orive-Miguel; Lionel Herve; Iain B Styles
Journal:  Biomed Opt Express       Date:  2019-05-02       Impact factor: 3.732

5.  Deep Convolutional Neural Network for Inverse Problems in Imaging.

Authors:  Michael T McCann; Emmanuel Froustey; Michael Unser
Journal:  IEEE Trans Image Process       Date:  2017-06-15       Impact factor: 10.856

6.  Coded aperture optimization in compressive X-ray tomography: a gradient descent approach.

Authors:  Angela P Cuadros; Gonzalo R Arce
Journal:  Opt Express       Date:  2017-10-02       Impact factor: 3.894

7.  Near infrared optical tomography using NIRFAST: Algorithm for numerical model and image reconstruction.

Authors:  Hamid Dehghani; Matthew E Eames; Phaneendra K Yalavarthy; Scott C Davis; Subhadra Srinivasan; Colin M Carpenter; Brian W Pogue; Keith D Paulsen
Journal:  Commun Numer Methods Eng       Date:  2008-08-15

8.  MRI-guided diffuse optical spectroscopy of malignant and benign breast lesions.

Authors:  Vasilis Ntziachristos; A G Yodh; Mitchell D Schnall; Britton Chance
Journal:  Neoplasia       Date:  2002 Jul-Aug       Impact factor: 5.715

9.  Compositional-prior-guided image reconstruction algorithm for multi-modality imaging.

Authors:  Qianqian Fang; Richard H Moore; Daniel B Kopans; David A Boas
Journal:  Biomed Opt Express       Date:  2010-07-16       Impact factor: 3.732

10.  Y-Net: Hybrid deep learning image reconstruction for photoacoustic tomography in vivo.

Authors:  Hengrong Lan; Daohuai Jiang; Changchun Yang; Feng Gao; Fei Gao
Journal:  Photoacoustics       Date:  2020-06-20
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  2 in total

1.  Quantitative molecular bioluminescence tomography.

Authors:  Alexander Bentley; Xiangkun Xu; Zijian Deng; Jonathan E Rowe; Ken Kang-Hsin Wang; Hamid Dehghani
Journal:  J Biomed Opt       Date:  2022-06       Impact factor: 3.758

2.  Monte Carlo-based data generation for efficient deep learning reconstruction of macroscopic diffuse optical tomography and topography applications.

Authors:  Navid Ibtehaj Nizam; Marien Ochoa; Jason T Smith; Shan Gao; Xavier Intes
Journal:  J Biomed Opt       Date:  2022-04       Impact factor: 3.758

  2 in total

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