| Literature DB >> 32673745 |
Lipeng Ning1, Elisenda Bonet-Carne2, Francesco Grussu2, Farshid Sepehrband3, Enrico Kaden2, Jelle Veraart4, Stefano B Blumberg2, Can Son Khoo2, Marco Palombo2, Iasonas Kokkinos2, Daniel C Alexander2, Jaume Coll-Font5, Benoit Scherrer5, Simon K Warfield5, Suheyla Cetin Karayumak6, Yogesh Rathi6, Simon Koppers7, Leon Weninger7, Julia Ebert7, Dorit Merhof7, Daniel Moyer3, Maximilian Pietsch8, Daan Christiaens9, Rui Azeredo Gomes Teixeira8, Jacques-Donald Tournier8, Kurt G Schilling10, Yuankai Huo11, Vishwesh Nath11, Colin Hansen11, Justin Blaber11, Bennett A Landman12, Andrey Zhylka13, Josien P W Pluim13, Greg Parker14, Umesh Rudrapatna14, John Evans14, Cyril Charron14, Derek K Jones15, Chantal M W Tax14.
Abstract
Cross-scanner and cross-protocol variability of diffusion magnetic resonance imaging (dMRI) data are known to be major obstacles in multi-site clinical studies since they limit the ability to aggregate dMRI data and derived measures. Computational algorithms that harmonize the data and minimize such variability are critical to reliably combine datasets acquired from different scanners and/or protocols, thus improving the statistical power and sensitivity of multi-site studies. Different computational approaches have been proposed to harmonize diffusion MRI data or remove scanner-specific differences. To date, these methods have mostly been developed for or evaluated on single b-value diffusion MRI data. In this work, we present the evaluation results of 19 algorithms that are developed to harmonize the cross-scanner and cross-protocol variability of multi-shell diffusion MRI using a benchmark database. The proposed algorithms rely on various signal representation approaches and computational tools, such as rotational invariant spherical harmonics, deep neural networks and hybrid biophysical and statistical approaches. The benchmark database consists of data acquired from the same subjects on two scanners with different maximum gradient strength (80 and 300 mT/m) and with two protocols. We evaluated the performance of these algorithms for mapping multi-shell diffusion MRI data across scanners and across protocols using several state-of-the-art imaging measures. The results show that data harmonization algorithms can reduce the cross-scanner and cross-protocol variabilities to a similar level as scan-rescan variability using the same scanner and protocol. In particular, the LinearRISH algorithm based on adaptive linear mapping of rotational invariant spherical harmonics features yields the lowest variability for our data in predicting the fractional anisotropy (FA), mean diffusivity (MD), mean kurtosis (MK) and the rotationally invariant spherical harmonic (RISH) features. But other algorithms, such as DIAMOND, SHResNet, DIQT, CMResNet show further improvement in harmonizing the return-to-origin probability (RTOP). The performance of different approaches provides useful guidelines on data harmonization in future multi-site studies.Keywords: Deep learning; Harmonization; Multi-shell diffusion MRI; Regression; Spherical harmonics
Year: 2020 PMID: 32673745 DOI: 10.1016/j.neuroimage.2020.117128
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 6.556