Automated quality control of small animal MR neuroimaging data

dc.contributor.author
Kalantari, Aref
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Shahbazi, Mehrab
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Schneider, Marc
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Raikes, Adam C.
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Frazão, Victor Vera
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Bhattrai, Avnish
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Carnevale, Lorenzo
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Diao, Yujian
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Franx, Bart A. A.
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Gammaraccio, Francesco
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Goncalves, Lisa Marie
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Lee, Susan
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Leeuwen, Esther M. van
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Michalek, Annika
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Mueller, Susanne
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Rivera Olvera, Alejandro
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Padro, Daniel
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Kotb Selim, Mohamed
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Toorn, Annette van der
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Varriano, Federico
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Vrooman, Roël
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Wenk, Patricia
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Albers, H. Elliott
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Boehm Sturm, Philipp
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Budinger, Eike
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Canals, Santiago
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Santis, Silvia de
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Diaz Brinton, Roberta
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Dijkhuizen, Rick M.
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Eixarch Roca, Elisenda
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Forloni, Gianluigi
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Grandjean, Joanes
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Hekmatyar, Khan
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Jacobs, Russell E.
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Jelescu, Ileana
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Kurniawan, Nyoman D.
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Lembo, Giuseppe
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Longo, Dario Livio
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Sta Maria, Naomi S.
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Micotti, Edoardo
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Muñoz Moreno, Emma
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Ramos Cabrer, Pedro
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Reichardt, Wilfried
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Soria, Guadalupe
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Ielacqua, Giovanna D.
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Aswendt, Markus
dc.date.issued
2025-09-19T12:56:36Z
dc.date.issued
2025-09-19T12:56:36Z
dc.date.issued
2024-09-27
dc.date.issued
2025-09-19T12:56:36Z
dc.identifier
https://hdl.handle.net/2445/223295
dc.identifier
758497
dc.identifier
40212822
dc.description.abstract
Magnetic resonance imaging (MRI) is a valuable tool for studying brain structure and function in animal and clinical studies. With the growth of public MRI repositories, access to data has finally become easier. However, filtering large datasets for potential poor-quality outliers can be a challenge. We present AIDAqc, a machine-learning-assisted automated Python-based command-line tool for small animal MRI quality assessment. Quality control features include signal-to-noise ratio (SNR), temporal SNR, and motion. All features are automatically calculated and no regions of interest are needed. Automated outlier detection for a given dataset combines the interquartile range and the machine-learning methods one-class support vector machine, isolation forest, local outlier factor, and elliptic envelope. To evaluate the reliability of individual quality control metrics, a simulation of noise (Gaussian, salt and pepper, speckle) and motion was performed. In outlier detection, single scans with induced artifacts were successfully identified by AIDAqc. AIDAqc was challenged in a large heterogeneous dataset collected from 19 international laboratories, including data from mice, rats, rabbits, hamsters, and gerbils, obtained with different hardware and at different field strengths. The results show that the manual inter-rater agreement (mean Fleiss Kappa score 0.17) is low when identifying poor-quality data. A direct comparison of AIDAqc results, therefore, showed only low-to-moderate concordance. In a manual post hoc validation of AIDAqc output, precision was high (>70%). The outlier data can have a significant impact on further postprocessing, as shown in representative functional and structural connectivity analysis. In summary, this pipeline optimized for small animal MRI provides researchers with a valuable tool to efficiently and effectively assess the quality of their MRI data, which is essential for improved reliability and reproducibility.
dc.format
23 p.
dc.format
application/pdf
dc.language
eng
dc.publisher
The MIT Press
dc.relation
Reproducció del document publicat a: https://doi.org/10.1162/imag_a_00317
dc.relation
Imaging Neuroscience, 2024, vol. 2
dc.relation
https://doi.org/10.1162/imag_a_00317
dc.rights
cc-by (c) Kalantari, A. et al., 2024
dc.rights
http://creativecommons.org/licenses/by/4.0/
dc.rights
info:eu-repo/semantics/openAccess
dc.source
Articles publicats en revistes (Cirurgia i Especialitats Medicoquirúrgiques)
dc.subject
Imatges per ressonància magnètica
dc.subject
Neuroanatomia
dc.subject
Mapatge del cervell
dc.subject
Magnetic resonance imaging
dc.subject
Neuroanatomy
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Brain mapping
dc.title
Automated quality control of small animal MR neuroimaging data
dc.type
info:eu-repo/semantics/article
dc.type
info:eu-repo/semantics/publishedVersion


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