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  5. Multicenter Evaluation of AI-generated DIR and PSIR for Cortical and Juxtacortical Multiple Sclerosis Lesion Detection

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Article
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2023

Multicenter Evaluation of AI-generated DIR and PSIR for Cortical and Juxtacortical Multiple Sclerosis Lesion Detection

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en
2023
Vol 307 (2)
Vol. 307
DOI: 10.1148/radiol.221425

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Massimo Filippi
Massimo Filippi

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Piet M. Bouman
Samantha Noteboom
Fernando A. Nobrega Santos
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Abstract

Background Cortical multiple sclerosis lesions are clinically relevant but inconspicuous at conventional clinical MRI. Double inversion recovery (DIR) and phase-sensitive inversion recovery (PSIR) are more sensitive but often unavailable. In the past 2 years, artificial intelligence (AI) was used to generate DIR and PSIR from standard clinical sequences (eg, T1-weighted, T2-weighted, and fluid-attenuated inversion-recovery sequences), but multicenter validation is crucial for further implementation. Purpose To evaluate cortical and juxtacortical multiple sclerosis lesion detection for diagnostic and disease monitoring purposes on AI-generated DIR and PSIR images compared with MRI-acquired DIR and PSIR images in a multicenter setting. Materials and Methods Generative adversarial networks were used to generate AI-based DIR (n = 50) and PSIR (n = 43) images. The number of detected lesions between AI-generated images and MRI-acquired (reference) images was compared by randomized blinded scoring by seven readers (all with >10 years of experience in lesion assessment). Reliability was expressed as the intraclass correlation coefficient (ICC). Differences in lesion subtype were determined using Wilcoxon signed-rank tests. Results MRI scans of 202 patients with multiple sclerosis (mean age, 46 years ± 11 [SD]; 127 women) were retrospectively collected from seven centers (February 2020 to January 2021). In total, 1154 lesions were detected on AI-generated DIR images versus 855 on MRI-acquired DIR images (mean difference per reader, 35.0% ± 22.8; P < .001). On AI-generated PSIR images, 803 lesions were detected versus 814 on MRI-acquired PSIR images (98.9% ± 19.4; P = .87). Reliability was good for both DIR (ICC, 0.81) and PSIR (ICC, 0.75) across centers. Regionally, more juxtacortical lesions were detected on AI-generated DIR images than on MRI-acquired DIR images (495 [42.9%] vs 338 [39.5%]; P < .001). On AI-generated PSIR images, fewer juxtacortical lesions were detected than on MRI-acquired PSIR images (232 [28.9%] vs 282 [34.6%]; P = .02). Conclusion Artificial intelligence-generated double inversion-recovery and phase-sensitive inversion-recovery images performed well compared with their MRI-acquired counterparts and can be considered reliable in a multicenter setting, with good between-reader and between-center interpretative agreement. Published under a CC BY 4.0 license. Supplemental material is available for this article. See also the editorial by Zivadinov and Dwyer in this issue.

How to cite this publication

Piet M. Bouman, Samantha Noteboom, Fernando A. Nobrega Santos, Erin Beck, Gregory Bliault, Marco Castellaro, Massimiliano Calabrese, Declan Chard, Paul Eichinger, Massimo Filippi, Matilde Inglese, Caterina Lapucci, Andrzej Marciniak, Bastiaan Moraal, Alfredo Pinzón, Mark Mühlau, Paolo Preziosa, Daniel S. Reich, Maria A. Rocca, Menno M. Schoonheim, Jos W. R. Twisk, Benedikt Wiestler, Laura E. Jonkman, Charles R.G. Guttmann, Jeroen J.G. Geurts, Martijn D. Steenwijk (2023). Multicenter Evaluation of AI-generated DIR and PSIR for Cortical and Juxtacortical Multiple Sclerosis Lesion Detection. , 307(2), DOI: https://doi.org/10.1148/radiol.221425.

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Publication Details

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Article

Year

2023

Authors

26

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0

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0

Language

en

DOI

https://doi.org/10.1148/radiol.221425

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