Neural network-derived perfusion maps: A model-free approach to computed tomography perfusion in patients with acute ischemic stroke

Publication date

2023-03-09

Authors

Gava, Umberto A.
D’Agata, Federico
Tartaglione, Enzo
Renzulli, Riccardo
Grangetto, Marco
Bertolino, Francesca
Santonocito, Ambra
Bennink, EdwinORCID 0000-0002-3689-8532ISNI 0000000419549773
Vaudano, Giacomo
Boghi, Andrea

Editors

Advisors

Supervisors

Document Type

Article

Collections

Open Access logo

License

cc_by

Abstract

Objective: In this study, we investigate whether a Convolutional Neural Network (CNN) can generate informative parametric maps from the pre-processed CT perfusion data in patients with acute ischemic stroke in a clinical setting. Methods: The CNN training was performed on a subset of 100 pre-processed perfusion CT dataset, while 15 samples were kept for testing. All the data used for the training/testing of the network and for generating ground truth (GT) maps, using a state-of-the-art deconvolution algorithm, were previously pre-processed using a pipeline for motion correction and filtering. Threefold cross validation had been used to estimate the performance of the model on unseen data, reporting Mean Squared Error (MSE). Maps accuracy had been checked through manual segmentation of infarct core and total hypo-perfused regions on both CNN-derived and GT maps. Concordance among segmented lesions was assessed using the Dice Similarity Coefficient (DSC). Correlation and agreement among different perfusion analysis methods were evaluated using mean absolute volume differences, Pearson correlation coefficients, Bland-Altman analysis, and coefficient of repeatability across lesion volumes. Results: The MSE was very low for two out of three maps, and low in the remaining map, showing good generalizability. Mean Dice scores from two different raters and the GT maps ranged from 0.80 to 0.87. Inter-rater concordance was high, and a strong correlation was found between lesion volumes of CNN maps and GT maps (0.99, 0.98, respectively). Conclusion: The agreement between our CNN-based perfusion maps and the state-of-the-art deconvolution-algorithm perfusion analysis maps, highlights the potential of machine learning methods applied to perfusion analysis. CNN approaches can reduce the volume of data required by deconvolution algorithms to estimate the ischemic core, and thus might allow the development of novel perfusion protocols with lower radiation dose deployed to the patient.

Keywords

CT-perfusion imaging, convolutional neural network (CNN), machine learning, perfusion maps, stroke

Citation

Gava, U A, D’Agata, F, Tartaglione, E, Renzulli, R, Grangetto, M, Bertolino, F, Santonocito, A, Bennink, E, Vaudano, G, Boghi, A & Bergui, M 2023, 'Neural network-derived perfusion maps : A model-free approach to computed tomography perfusion in patients with acute ischemic stroke', Frontiers in Neuroinformatics, vol. 17, 852105. https://doi.org/10.3389/fninf.2023.852105