Please use this identifier to cite or link to this item: https://hdl.handle.net/2445/223295
Title: Automated quality control of small animal MR neuroimaging data
Author: Kalantari, Aref
Shahbazi, Mehrab
Schneider, Marc
Raikes, Adam C.
Frazão, Victor Vera
Bhattrai, Avnish
Carnevale, Lorenzo
Diao, Yujian
Franx, Bart A. A.
Gammaraccio, Francesco
Goncalves, Lisa Marie
Lee, Susan
Leeuwen, Esther M. van
Michalek, Annika
Mueller, Susanne
Rivera Olvera, Alejandro
Padro, Daniel
Kotb Selim, Mohamed
Toorn, Annette van der
Varriano, Federico
Vrooman, Roël
Wenk, Patricia
Albers, H. Elliott
Boehm Sturm, Philipp
Budinger, Eike
Canals, Santiago
Santis, Silvia de
Diaz Brinton, Roberta
Dijkhuizen, Rick M.
Eixarch Roca, Elisenda
Forloni, Gianluigi
Grandjean, Joanes
Hekmatyar, Khan
Jacobs, Russell E.
Jelescu, Ileana
Kurniawan, Nyoman D.
Lembo, Giuseppe
Longo, Dario Livio
Sta Maria, Naomi S.
Micotti, Edoardo
Muñoz Moreno, Emma
Ramos Cabrer, Pedro
Reichardt, Wilfried
Soria, Guadalupe
Ielacqua, Giovanna D.
Aswendt, Markus
Keywords: Imatges per ressonància magnètica
Neuroanatomia
Mapatge del cervell
Magnetic resonance imaging
Neuroanatomy
Brain mapping
Issue Date: 27-Sep-2024
Publisher: The MIT Press
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.
Note: Reproducció del document publicat a: https://doi.org/10.1162/imag_a_00317
It is part of: Imaging Neuroscience, 2024, vol. 2
URI: https://hdl.handle.net/2445/223295
Related resource: https://doi.org/10.1162/imag_a_00317
Appears in Collections:Articles publicats en revistes (Cirurgia i Especialitats Medicoquirúrgiques)
Articles publicats en revistes (IDIBAPS: Institut d'investigacions Biomèdiques August Pi i Sunyer)

Files in This Item:
File Description SizeFormat 
893777.pdf8.12 MBAdobe PDFView/Open


This item is licensed under a Creative Commons License Creative Commons