• Je něco špatně v tomto záznamu ?

Quantification of MR spectra by deep learning in an idealized setting: Investigation of forms of input, network architectures, optimization by ensembles of networks, and training bias

R. Rizzo, M. Dziadosz, SP. Kyathanahally, A. Shamaei, R. Kreis

. 2023 ; 89 (5) : 1707-1727. [pub] 20221219

Jazyk angličtina Země Spojené státy americké

Typ dokumentu časopisecké články, práce podpořená grantem

Perzistentní odkaz   https://www.medvik.cz/link/bmc23003612

PURPOSE: The aims of this work are (1) to explore deep learning (DL) architectures, spectroscopic input types, and learning designs toward optimal quantification in MR spectroscopy of simulated pathological spectra; and (2) to demonstrate accuracy and precision of DL predictions in view of inherent bias toward the training distribution. METHODS: Simulated 1D spectra and 2D spectrograms that mimic an extensive range of pathological in vivo conditions are used to train and test 24 different DL architectures. Active learning through altered training and testing data distributions is probed to optimize quantification performance. Ensembles of networks are explored to improve DL robustness and reduce the variance of estimates. A set of scores compares performances of DL predictions and traditional model fitting (MF). RESULTS: Ensembles of heterogeneous networks that combine 1D frequency-domain and 2D time-frequency domain spectrograms as input perform best. Dataset augmentation with active learning can improve performance, but gains are limited. MF is more accurate, although DL appears to be more precise at low SNR. However, this overall improved precision originates from a strong bias for cases with high uncertainty toward the dataset the network has been trained with, tending toward its average value. CONCLUSION: MF mostly performs better compared to the faster DL approach. Potential intrinsic biases on training sets are dangerous in a clinical context that requires the algorithm to be unbiased to outliers (i.e., pathological data). Active learning and ensemble of networks are good strategies to improve prediction performances. However, data quality (sufficient SNR) has proven as a bottleneck for adequate unbiased performance-like in the case of MF.

Citace poskytuje Crossref.org

000      
00000naa a2200000 a 4500
001      
bmc23003612
003      
CZ-PrNML
005      
20230425140745.0
007      
ta
008      
230418s2023 xxu f 000 0|eng||
009      
AR
024    7_
$a 10.1002/mrm.29561 $2 doi
035    __
$a (PubMed)36533881
040    __
$a ABA008 $b cze $d ABA008 $e AACR2
041    0_
$a eng
044    __
$a xxu
100    1_
$a Rizzo, Rudy $u MR Methodology, Department for Diagnostic and Interventional Neuroradiology, University of Bern, Bern, Switzerland $u Department for Biomedical Research, University of Bern, Bern, Switzerland $u Translational Imaging Center (TIC), Swiss Institute for Translational and Entrepreneurial Medicine, Bern, Switzerland $u Graduate School for Cellular and Biomedical Sciences, University of Bern, Bern, Switzerland $1 https://orcid.org/0000000345725120
245    10
$a Quantification of MR spectra by deep learning in an idealized setting: Investigation of forms of input, network architectures, optimization by ensembles of networks, and training bias / $c R. Rizzo, M. Dziadosz, SP. Kyathanahally, A. Shamaei, R. Kreis
520    9_
$a PURPOSE: The aims of this work are (1) to explore deep learning (DL) architectures, spectroscopic input types, and learning designs toward optimal quantification in MR spectroscopy of simulated pathological spectra; and (2) to demonstrate accuracy and precision of DL predictions in view of inherent bias toward the training distribution. METHODS: Simulated 1D spectra and 2D spectrograms that mimic an extensive range of pathological in vivo conditions are used to train and test 24 different DL architectures. Active learning through altered training and testing data distributions is probed to optimize quantification performance. Ensembles of networks are explored to improve DL robustness and reduce the variance of estimates. A set of scores compares performances of DL predictions and traditional model fitting (MF). RESULTS: Ensembles of heterogeneous networks that combine 1D frequency-domain and 2D time-frequency domain spectrograms as input perform best. Dataset augmentation with active learning can improve performance, but gains are limited. MF is more accurate, although DL appears to be more precise at low SNR. However, this overall improved precision originates from a strong bias for cases with high uncertainty toward the dataset the network has been trained with, tending toward its average value. CONCLUSION: MF mostly performs better compared to the faster DL approach. Potential intrinsic biases on training sets are dangerous in a clinical context that requires the algorithm to be unbiased to outliers (i.e., pathological data). Active learning and ensemble of networks are good strategies to improve prediction performances. However, data quality (sufficient SNR) has proven as a bottleneck for adequate unbiased performance-like in the case of MF.
650    12
$a deep learning $7 D000077321
650    _2
$a algoritmy $7 D000465
650    _2
$a zkreslení výsledků (epidemiologie) $7 D015982
655    _2
$a časopisecké články $7 D016428
655    _2
$a práce podpořená grantem $7 D013485
700    1_
$a Dziadosz, Martyna $u MR Methodology, Department for Diagnostic and Interventional Neuroradiology, University of Bern, Bern, Switzerland $u Department for Biomedical Research, University of Bern, Bern, Switzerland $u Translational Imaging Center (TIC), Swiss Institute for Translational and Entrepreneurial Medicine, Bern, Switzerland $u Graduate School for Cellular and Biomedical Sciences, University of Bern, Bern, Switzerland
700    1_
$a Kyathanahally, Sreenath P $u Department of System Analysis, Integrated Assessment and Modelling, Data Science for Environmental Research Group, EAWAG, Dübendorf, Switzerland $1 https://orcid.org/0000000273998487
700    1_
$a Shamaei, Amirmohammad $u Institute of Scientific Instruments of the Czech Academy of Sciences, Brno, Czech Republic, Brno, Czech Republic $u Department of Biomedical Engineering, Brno University of Technology, Brno, Czech Republic $1 https://orcid.org/0000000183423284
700    1_
$a Kreis, Roland $u MR Methodology, Department for Diagnostic and Interventional Neuroradiology, University of Bern, Bern, Switzerland $u Department for Biomedical Research, University of Bern, Bern, Switzerland $u Graduate School for Cellular and Biomedical Sciences, University of Bern, Bern, Switzerland $1 https://orcid.org/0000000286186875
773    0_
$w MED00003172 $t Magnetic resonance in medicine $x 1522-2594 $g Roč. 89, č. 5 (2023), s. 1707-1727
856    41
$u https://pubmed.ncbi.nlm.nih.gov/36533881 $y Pubmed
910    __
$a ABA008 $b sig $c sign $y p $z 0
990    __
$a 20230418 $b ABA008
991    __
$a 20230425140742 $b ABA008
999    __
$a ok $b bmc $g 1924346 $s 1189821
BAS    __
$a 3
BAS    __
$a PreBMC-MEDLINE
BMC    __
$a 2023 $b 89 $c 5 $d 1707-1727 $e 20221219 $i 1522-2594 $m Magnetic resonance in medicine $n Magn Reson Med $x MED00003172
LZP    __
$a Pubmed-20230418

Najít záznam

Citační ukazatele

Nahrávání dat ...

Možnosti archivace

Nahrávání dat ...