-
Je něco špatně v tomto záznamu ?
Physics-informed deep learning approach to quantification of human brain metabolites from magnetic resonance spectroscopy data
A. Shamaei, J. Starcukova, Z. Starcuk
Jazyk angličtina Země Spojené státy americké
Typ dokumentu časopisecké články, práce podpořená grantem
NLK
ProQuest Central
od 2003-01-01 do 2023-12-31
Nursing & Allied Health Database (ProQuest)
od 2003-01-01 do 2023-12-31
Health & Medicine (ProQuest)
od 2003-01-01 do 2023-12-31
- MeSH
- deep learning * MeSH
- lidé MeSH
- magnetická rezonanční spektroskopie MeSH
- magnetická rezonanční tomografie metody MeSH
- mozek diagnostické zobrazování metabolismus MeSH
- neuronové sítě MeSH
- počítačové zpracování obrazu metody MeSH
- Check Tag
- lidé MeSH
- Publikační typ
- časopisecké články MeSH
- práce podpořená grantem MeSH
PURPOSE: While the recommended analysis method for magnetic resonance spectroscopy data is linear combination model (LCM) fitting, the supervised deep learning (DL) approach for quantification of MR spectroscopy (MRS) and MR spectroscopic imaging (MRSI) data recently showed encouraging results; however, supervised learning requires ground truth fitted spectra, which is not practical. Moreover, this work investigates the feasibility and efficiency of the LCM-based self-supervised DL method for the analysis of MRS data. METHOD: We present a novel DL-based method for the quantification of relative metabolite concentrations, using quantum-mechanics simulated metabolite responses and neural networks. We trained, validated, and evaluated the proposed networks with simulated and publicly accessible in-vivo human brain MRS data and compared the performance with traditional methods. A novel adaptive macromolecule fitting algorithm is included. We investigated the performance of the proposed methods in a Monte Carlo (MC) study. RESULT: The validation using low-SNR simulated data demonstrated that the proposed methods could perform quantification comparably to other methods. The applicability of the proposed method for the quantification of in-vivo MRS data was demonstrated. Our proposed networks have the potential to reduce computation time significantly. CONCLUSION: The proposed model-constrained deep neural networks trained in a self-supervised manner can offer fast and efficient quantification of MRS and MRSI data. Our proposed method has the potential to facilitate clinical practice by enabling faster processing of large datasets such as high-resolution MRSI datasets, which may have thousands of spectra.
Department of Biomedical Engineering Brno University of Technology Czech Republic
Institute of Scientific Instruments of the Czech Academy of Sciences Brno Czech Republic
Citace poskytuje Crossref.org
- 000
- 00000naa a2200000 a 4500
- 001
- bmc23011544
- 003
- CZ-PrNML
- 005
- 20230801133126.0
- 007
- ta
- 008
- 230718s2023 xxu f 000 0|eng||
- 009
- AR
- 024 7_
- $a 10.1016/j.compbiomed.2023.106837 $2 doi
- 035 __
- $a (PubMed)37044049
- 040 __
- $a ABA008 $b cze $d ABA008 $e AACR2
- 041 0_
- $a eng
- 044 __
- $a xxu
- 100 1_
- $a Shamaei, Amirmohammad $u Institute of Scientific Instruments of the Czech Academy of Sciences, Brno, Czech Republic; Department of Biomedical Engineering, Brno University of Technology, Czech Republic. Electronic address: amirshamaei@isibrno.cz
- 245 10
- $a Physics-informed deep learning approach to quantification of human brain metabolites from magnetic resonance spectroscopy data / $c A. Shamaei, J. Starcukova, Z. Starcuk
- 520 9_
- $a PURPOSE: While the recommended analysis method for magnetic resonance spectroscopy data is linear combination model (LCM) fitting, the supervised deep learning (DL) approach for quantification of MR spectroscopy (MRS) and MR spectroscopic imaging (MRSI) data recently showed encouraging results; however, supervised learning requires ground truth fitted spectra, which is not practical. Moreover, this work investigates the feasibility and efficiency of the LCM-based self-supervised DL method for the analysis of MRS data. METHOD: We present a novel DL-based method for the quantification of relative metabolite concentrations, using quantum-mechanics simulated metabolite responses and neural networks. We trained, validated, and evaluated the proposed networks with simulated and publicly accessible in-vivo human brain MRS data and compared the performance with traditional methods. A novel adaptive macromolecule fitting algorithm is included. We investigated the performance of the proposed methods in a Monte Carlo (MC) study. RESULT: The validation using low-SNR simulated data demonstrated that the proposed methods could perform quantification comparably to other methods. The applicability of the proposed method for the quantification of in-vivo MRS data was demonstrated. Our proposed networks have the potential to reduce computation time significantly. CONCLUSION: The proposed model-constrained deep neural networks trained in a self-supervised manner can offer fast and efficient quantification of MRS and MRSI data. Our proposed method has the potential to facilitate clinical practice by enabling faster processing of large datasets such as high-resolution MRSI datasets, which may have thousands of spectra.
- 650 _2
- $a lidé $7 D006801
- 650 12
- $a deep learning $7 D000077321
- 650 _2
- $a magnetická rezonanční spektroskopie $7 D009682
- 650 _2
- $a mozek $x diagnostické zobrazování $x metabolismus $7 D001921
- 650 _2
- $a magnetická rezonanční tomografie $x metody $7 D008279
- 650 _2
- $a neuronové sítě $7 D016571
- 650 _2
- $a počítačové zpracování obrazu $x metody $7 D007091
- 655 _2
- $a časopisecké články $7 D016428
- 655 _2
- $a práce podpořená grantem $7 D013485
- 700 1_
- $a Starcukova, Jana $u Institute of Scientific Instruments of the Czech Academy of Sciences, Brno, Czech Republic
- 700 1_
- $a Starcuk, Zenon $u Institute of Scientific Instruments of the Czech Academy of Sciences, Brno, Czech Republic
- 773 0_
- $w MED00001218 $t Computers in biology and medicine $x 1879-0534 $g Roč. 158, č. - (2023), s. 106837
- 856 41
- $u https://pubmed.ncbi.nlm.nih.gov/37044049 $y Pubmed
- 910 __
- $a ABA008 $b sig $c sign $y p $z 0
- 990 __
- $a 20230718 $b ABA008
- 991 __
- $a 20230801133123 $b ABA008
- 999 __
- $a ok $b bmc $g 1963767 $s 1197809
- BAS __
- $a 3
- BAS __
- $a PreBMC-MEDLINE
- BMC __
- $a 2023 $b 158 $c - $d 106837 $e 20230405 $i 1879-0534 $m Computers in biology and medicine $n Comput Biol Med $x MED00001218
- LZP __
- $a Pubmed-20230718