Artificial Intelligence in Stroke Imaging

A special issue of Diagnostics (ISSN 2075-4418). This special issue belongs to the section "Machine Learning and Artificial Intelligence in Diagnostics".

Deadline for manuscript submissions: closed (28 February 2023) | Viewed by 30187

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Guest Editor
Neurovascular Imaging Research Core and Stroke Center, Department of Neurology, University of California Los Angeles, Los Angeles, CA 90095, USA
Interests: acute stroke; collateral circulation; intracranial atherosclerosis

Special Issue Information

Dear Colleagues, 

This Special Issue focuses on recent developments in the use of artificial intelligence (AI) for stroke imaging in acute and chronic phases. The use of AI has attracted widespread attention as it relates to the detection of steno-occlusive lesions in the cerebral circulation, tissue level markers of injury in ischemia and hemorrhage and perfusion imaging techniques.

Prof. Dr. David S. Liebeskind
Guest Editor

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Keywords

  • artificial intelligence
  • machine learning
  • deep learning
  • CT/MRI
  • stroke imaging
  • angiography

Published Papers (9 papers)

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Research

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12 pages, 3698 KiB  
Article
An Automatic DWI/FLAIR Mismatch Assessment of Stroke Patients
by Jacob Johansen, Cecilie Mørck Offersen, Jonathan Frederik Carlsen, Silvia Ingala, Adam Espe Hansen, Michael Bachmann Nielsen, Sune Darkner and Akshay Pai
Diagnostics 2024, 14(1), 69; https://doi.org/10.3390/diagnostics14010069 - 27 Dec 2023
Viewed by 1299
Abstract
DWI/FLAIR mismatch assessment for ischemic stroke patients shows promising results in determining if patients are eligible for recombinant tissue-type plasminogen activator (r-tPA) treatment. However, the mismatch criteria suffer from two major issues: binary classification of a non-binary problem and the subjectiveness of the [...] Read more.
DWI/FLAIR mismatch assessment for ischemic stroke patients shows promising results in determining if patients are eligible for recombinant tissue-type plasminogen activator (r-tPA) treatment. However, the mismatch criteria suffer from two major issues: binary classification of a non-binary problem and the subjectiveness of the assessor. In this article, we present a simple automatic method for segmenting stroke-related parenchymal hyperintensities on FLAIR, allowing for an automatic and continuous DWI/FLAIR mismatch assessment. We further show that our method’s segmentations have comparable inter-rater agreement (DICE 0.820, SD 0.12) compared to that of two neuro-radiologists (DICE 0.856, SD 0.07), that our method appears robust to hyper-parameter choices (suggesting good generalizability), and lastly, that our methods continuous DWI/FLAIR mismatch assessment correlates to mismatch assessments made for a cohort of wake-up stroke patients at hospital submission. The proposed method shows promising results in automating the segmentation of parenchymal hyperintensity within ischemic stroke lesions and could help reduce inter-observer variability of DWI/FLAIR mismatch assessment performed in clinical environments as well as offer a continuous assessment instead of the current binary one. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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11 pages, 5561 KiB  
Article
Automatic Segmentation and Quantitative Assessment of Stroke Lesions on MR Images
by Khushboo Verma, Satwant Kumar and David Paydarfar
Diagnostics 2022, 12(9), 2055; https://doi.org/10.3390/diagnostics12092055 - 24 Aug 2022
Cited by 5 | Viewed by 3180
Abstract
Lesion studies are crucial in establishing brain-behavior relationships, and accurately segmenting the lesion represents the first step in achieving this. Manual lesion segmentation is the gold standard for chronic strokes. However, it is labor-intensive, subject to bias, and limits sample size. Therefore, our [...] Read more.
Lesion studies are crucial in establishing brain-behavior relationships, and accurately segmenting the lesion represents the first step in achieving this. Manual lesion segmentation is the gold standard for chronic strokes. However, it is labor-intensive, subject to bias, and limits sample size. Therefore, our objective is to develop an automatic segmentation algorithm for chronic stroke lesions on T1-weighted MR images. Methods: To train our model, we utilized an open-source dataset: ATLAS v2.0 (Anatomical Tracings of Lesions After Stroke). We partitioned the dataset of 655 T1 images with manual segmentation labels into five subsets and performed a 5-fold cross-validation to avoid overfitting of the model. We used a deep neural network (DNN) architecture for model training. Results: To evaluate the model performance, we used three metrics that pertain to diverse aspects of volumetric segmentation, including shape, location, and size. The Dice similarity coefficient (DSC) compares the spatial overlap between manual and machine segmentation. The average DSC was 0.65 (0.61–0.67; 95% bootstrapped CI). Average symmetric surface distance (ASSD) measures contour distances between the two segmentations. ASSD between manual and automatic segmentation was 12 mm. Finally, we compared the total lesion volumes and the Pearson correlation coefficient (ρ) between the manual and automatically segmented lesion volumes, which was 0.97 (p-value < 0.001). Conclusions: We present the first automated segmentation model trained on a large multicentric dataset. This model will enable automated on-demand processing of MRI scans and quantitative chronic stroke lesion assessment. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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13 pages, 2200 KiB  
Article
Outcome Prediction Based on Automatically Extracted Infarct Core Image Features in Patients with Acute Ischemic Stroke
by Manon L. Tolhuisen, Jan W. Hoving, Miou S. Koopman, Manon Kappelhof, Henk van Voorst, Agnetha E. Bruggeman, Adam M. Demchuck, Diederik W. J. Dippel, Bart J. Emmer, Serge Bracard, Francis Guillemin, Robert J. van Oostenbrugge, Peter J. Mitchell, Wim H. van Zwam, Michael D. Hill, Yvo B. W. E. M. Roos, Tudor G. Jovin, Olvert A. Berkhemer, Bruce C. V. Campbell, Jeffrey Saver, Phil White, Keith W. Muir, Mayank Goyal, Henk A. Marquering, Charles B. Majoie and Matthan W. A. Caanadd Show full author list remove Hide full author list
Diagnostics 2022, 12(8), 1786; https://doi.org/10.3390/diagnostics12081786 - 23 Jul 2022
Cited by 8 | Viewed by 2416
Abstract
Infarct volume (FIV) on follow-up diffusion-weighted imaging (FU-DWI) is only moderately associated with functional outcome in acute ischemic stroke patients. However, FU-DWI may contain other imaging biomarkers that could aid in improving outcome prediction models for acute ischemic stroke. We included FU-DWI data [...] Read more.
Infarct volume (FIV) on follow-up diffusion-weighted imaging (FU-DWI) is only moderately associated with functional outcome in acute ischemic stroke patients. However, FU-DWI may contain other imaging biomarkers that could aid in improving outcome prediction models for acute ischemic stroke. We included FU-DWI data from the HERMES, ISLES, and MR CLEAN-NO IV databases. Lesions were segmented using a deep learning model trained on the HERMES and ISLES datasets. We assessed the performance of three classifiers in predicting functional independence for the MR CLEAN-NO IV trial cohort based on: (1) FIV alone, (2) the most important features obtained from a trained convolutional autoencoder (CAE), and (3) radiomics. Furthermore, we investigated feature importance in the radiomic-feature-based model. For outcome prediction, we included 206 patients: 144 scans were included in the training set, 21 in the validation set, and 41 in the test set. The classifiers that included the CAE and the radiomic features showed AUC values of 0.88 and 0.81, respectively, while the model based on FIV had an AUC of 0.79. This difference was not found to be statistically significant. Feature importance results showed that lesion intensity heterogeneity received more weight than lesion volume in outcome prediction. This study suggests that predictions of functional outcome should not be based on FIV alone and that FU-DWI images capture additional prognostic information. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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14 pages, 3428 KiB  
Article
Merging Multiphase CTA Images and Training Them Simultaneously with a Deep Learning Algorithm Could Improve the Efficacy of AI Models for Lateral Circulation Assessment in Ischemic Stroke
by Jingjie Wang, Duo Tan, Jiayang Liu, Jiajing Wu, Fusen Huang, Hua Xiong, Tianyou Luo, Shanxiong Chen and Yongmei Li
Diagnostics 2022, 12(7), 1562; https://doi.org/10.3390/diagnostics12071562 - 27 Jun 2022
Cited by 5 | Viewed by 2819
Abstract
We aimed to build a deep learning-based, objective, fast, and accurate collateral circulation assessment model. We included 92 patients who had suffered acute ischemic stroke (AIS) with large vessel occlusion in the anterior circulation in this study, following their admission to our hospital [...] Read more.
We aimed to build a deep learning-based, objective, fast, and accurate collateral circulation assessment model. We included 92 patients who had suffered acute ischemic stroke (AIS) with large vessel occlusion in the anterior circulation in this study, following their admission to our hospital from June 2020 to August 2021. We analyzed their baseline whole-brain four-dimensional computed tomography angiography (4D-CTA)/CT perfusion. The images of the arterial, arteriovenous, venous, and late venous phases were extracted from 4D-CTA according to the perfusion time–density curve. The subtraction images of each phase were created by subtracting the non-contrast CT. Each patient was marked as having good or poor collateral circulation. Based on the ResNet34 classification network, we developed a single-image input and a multi-image input network for binary classification of collateral circulation. The training and test sets included 65 and 27 patients, respectively, and Monte Carlo cross-validation was employed for five iterations. The network performance was evaluated based on its precision, accuracy, recall, F1-score, and AUC. All the five performance indicators of the single-image input model were higher than those of the other model. The single-image input processing network, combining multiphase CTA images, can better classify AIS collateral circulation. This automated collateral assessment tool could help to streamline clinical workflows, and screen patients for reperfusion therapy. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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12 pages, 1624 KiB  
Article
Deep-Learning-Based Thrombus Localization and Segmentation in Patients with Posterior Circulation Stroke
by Riaan Zoetmulder, Agnetha A. E. Bruggeman, Ivana Išgum, Efstratios Gavves, Charles B. L. M. Majoie, Ludo F. M. Beenen, Diederik W. J. Dippel, Nikkie Boodt, Sanne J. den Hartog, Pieter J. van Doormaal, Sandra A. P. Cornelissen, Yvo B. W. E. M. Roos, Josje Brouwer, Wouter J. Schonewille, Anne F. V. Pirson, Wim H. van Zwam, Christiaan van der Leij, Rutger J. B. Brans, Adriaan C. G. M. van Es and Henk A. Marquering
Diagnostics 2022, 12(6), 1400; https://doi.org/10.3390/diagnostics12061400 - 6 Jun 2022
Cited by 2 | Viewed by 2645
Abstract
Thrombus volume in posterior circulation stroke (PCS) has been associated with outcome, through recanalization. Manual thrombus segmentation is impractical for large scale analysis of image characteristics. Hence, in this study we develop the first automatic method for thrombus localization and segmentation on CT [...] Read more.
Thrombus volume in posterior circulation stroke (PCS) has been associated with outcome, through recanalization. Manual thrombus segmentation is impractical for large scale analysis of image characteristics. Hence, in this study we develop the first automatic method for thrombus localization and segmentation on CT in patients with PCS. In this multi-center retrospective study, 187 patients with PCS from the MR CLEAN Registry were included. We developed a convolutional neural network (CNN) that segments thrombi and restricts the volume-of-interest (VOI) to the brainstem (Polar-UNet). Furthermore, we reduced false positive localization by removing small-volume objects, referred to as volume-based removal (VBR). Polar-UNet is benchmarked against a CNN that does not restrict the VOI (BL-UNet). Performance metrics included the intra-class correlation coefficient (ICC) between automated and manually segmented thrombus volumes, the thrombus localization precision and recall, and the Dice coefficient. The majority of the thrombi were localized. Without VBR, Polar-UNet achieved a thrombus localization recall of 0.82, versus 0.78 achieved by BL-UNet. This high recall was accompanied by a low precision of 0.14 and 0.09. VBR improved precision to 0.65 and 0.56 for Polar-UNet and BL-UNet, respectively, with a small reduction in recall to 0.75 and 0.69. The Dice coefficient achieved by Polar-UNet was 0.44, versus 0.38 achieved by BL-UNet with VBR. Both methods achieved ICCs of 0.41 (95% CI: 0.27–0.54). Restricting the VOI to the brainstem improved the thrombus localization precision, recall, and segmentation overlap compared to the benchmark. VBR improved thrombus localization precision but lowered recall. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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9 pages, 1178 KiB  
Article
End-to-End Deep Learning Approach for Perfusion Data: A Proof-of-Concept Study to Classify Core Volume in Stroke CT
by Andreas Mittermeier, Paul Reidler, Matthias P. Fabritius, Balthasar Schachtner, Philipp Wesp, Birgit Ertl-Wagner, Olaf Dietrich, Jens Ricke, Lars Kellert, Steffen Tiedt, Wolfgang G. Kunz and Michael Ingrisch
Diagnostics 2022, 12(5), 1142; https://doi.org/10.3390/diagnostics12051142 - 5 May 2022
Cited by 3 | Viewed by 1982
Abstract
(1) Background: CT perfusion (CTP) is used to quantify cerebral hypoperfusion in acute ischemic stroke. Conventional attenuation curve analysis is not standardized and might require input from expert users, hampering clinical application. This study aims to bypass conventional tracer-kinetic analysis with an end-to-end [...] Read more.
(1) Background: CT perfusion (CTP) is used to quantify cerebral hypoperfusion in acute ischemic stroke. Conventional attenuation curve analysis is not standardized and might require input from expert users, hampering clinical application. This study aims to bypass conventional tracer-kinetic analysis with an end-to-end deep learning model to directly categorize patients by stroke core volume from raw, slice-reduced CTP data. (2) Methods: In this retrospective analysis, we included patients with acute ischemic stroke due to proximal occlusion of the anterior circulation who underwent CTP imaging. A novel convolutional neural network was implemented to extract spatial and temporal features from time-resolved imaging data. In a classification task, the network categorized patients into small or large core. In ten-fold cross-validation, the network was repeatedly trained, evaluated, and tested, using the area under the receiver operating characteristic curve (ROC-AUC). A final model was created in an ensemble approach and independently validated on an external dataset. (3) Results: 217 patients were included in the training cohort and 23 patients in the independent test cohort. Median core volume was 32.4 mL and was used as threshold value for the binary classification task. Model performance yielded a mean (SD) ROC-AUC of 0.72 (0.10) for the test folds. External independent validation resulted in an ensembled mean ROC-AUC of 0.61. (4) Conclusions: In this proof-of-concept study, the proposed end-to-end deep learning approach bypasses conventional perfusion analysis and allows to predict dichotomized infarction core volume solely from slice-reduced CTP images without underlying tracer kinetic assumptions. Further studies can easily extend to additional clinically relevant endpoints. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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22 pages, 30018 KiB  
Article
Fully Automated Thrombus Segmentation on CT Images of Patients with Acute Ischemic Stroke
by Mahsa Mojtahedi, Manon Kappelhof, Elena Ponomareva, Manon Tolhuisen, Ivo Jansen, Agnetha A. E. Bruggeman, Bruna G. Dutra, Lonneke Yo, Natalie LeCouffe, Jan W. Hoving, Henk van Voorst, Josje Brouwer, Nerea Arrarte Terreros, Praneeta Konduri, Frederick J. A. Meijer, Auke Appelman, Kilian M. Treurniet, Jonathan M. Coutinho, Yvo Roos, Wim van Zwam, Diederik Dippel, Efstratios Gavves, Bart J. Emmer, Charles Majoie and Henk Marqueringadd Show full author list remove Hide full author list
Diagnostics 2022, 12(3), 698; https://doi.org/10.3390/diagnostics12030698 - 12 Mar 2022
Cited by 9 | Viewed by 3526
Abstract
Thrombus imaging characteristics are associated with treatment success and functional outcomes in stroke patients. However, assessing these characteristics based on manual annotations is labor intensive and subject to observer bias. Therefore, we aimed to create an automated pipeline for consistent and fast full [...] Read more.
Thrombus imaging characteristics are associated with treatment success and functional outcomes in stroke patients. However, assessing these characteristics based on manual annotations is labor intensive and subject to observer bias. Therefore, we aimed to create an automated pipeline for consistent and fast full thrombus segmentation. We used multi-center, multi-scanner datasets of anterior circulation stroke patients with baseline NCCT and CTA for training (n = 228) and testing (n = 100). We first found the occlusion location using StrokeViewer LVO and created a bounding box around it. Subsequently, we trained dual modality U-Net based convolutional neural networks (CNNs) to segment the thrombus inside this bounding box. We experimented with: (1) U-Net with two input channels for NCCT and CTA, and U-Nets with two encoders where (2) concatenate, (3) add, and (4) weighted-sum operators were used for feature fusion. Furthermore, we proposed a dynamic bounding box algorithm to adjust the bounding box. The dynamic bounding box algorithm reduces the missed cases but does not improve Dice. The two-encoder U-Net with a weighted-sum feature fusion shows the best performance (surface Dice 0.78, Dice 0.62, and 4% missed cases). Final segmentation results have high spatial accuracies and can therefore be used to determine thrombus characteristics and potentially benefit radiologists in clinical practice. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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Review

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19 pages, 2875 KiB  
Review
Application of Machine Learning Techniques for Characterization of Ischemic Stroke with MRI Images: A Review
by Asit Subudhi, Pratyusa Dash, Manoranjan Mohapatra, Ru-San Tan, U. Rajendra Acharya and Sukanta Sabut
Diagnostics 2022, 12(10), 2535; https://doi.org/10.3390/diagnostics12102535 - 19 Oct 2022
Cited by 6 | Viewed by 6017
Abstract
Magnetic resonance imaging (MRI) is a standard tool for the diagnosis of stroke, but its manual interpretation by experts is arduous and time-consuming. Thus, there is a need for computer-aided-diagnosis (CAD) models for the automatic segmentation and classification of stroke on brain MRI. [...] Read more.
Magnetic resonance imaging (MRI) is a standard tool for the diagnosis of stroke, but its manual interpretation by experts is arduous and time-consuming. Thus, there is a need for computer-aided-diagnosis (CAD) models for the automatic segmentation and classification of stroke on brain MRI. The heterogeneity of stroke pathogenesis, morphology, image acquisition modalities, sequences, and intralesional tissue signal intensity, as well as lesion-to-normal tissue contrast, pose significant challenges to the development of such systems. Machine learning (ML) is increasingly being used in predictive neuroimaging diagnosis and prognostication. This paper reviews image processing and machine learning techniques that have been applied to detect ischemic stroke on brain MRI, including details on image acquisition, pre-processing, techniques to segment, extraction of features, and classification into stroke types. The main objective of this work is to find the state-of-art machine learning techniques used to predict the ischemic stroke and their application in clinical set-up. The article selection is performed according to PRISMA guideline. The state-of-the-art on automated MRI stroke diagnosis, with a focus on machine learning, is discussed, along with its advantages and limitations. We found that the various machine learning models discussed in this article are able to detect the infarcts with an acceptable accuracy of 70–90%. However, no one has highlighted the time complexity to predict the stroke in the model developed, which is an important factor. The work concludes with proposals for future recommendations for building efficient and robust deep learning (DL) models for quantitative brain MRI analysis. In recent work, with the application of DL approaches, using large datasets to train the models has improved the detection accuracy and reduced computational complexity. We suggest that the design of a decision support system based on artificial intelligence (AI) and clinical data presenting symptoms is essential to support clinicians to accelerate diagnosis and timeous therapy in the emergency management of stroke. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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32 pages, 5747 KiB  
Review
Cardiovascular/Stroke Risk Assessment in Patients with Erectile Dysfunction—A Role of Carotid Wall Arterial Imaging and Plaque Tissue Characterization Using Artificial Intelligence Paradigm: A Narrative Review
by Narendra N. Khanna, Mahesh Maindarkar, Ajit Saxena, Puneet Ahluwalia, Sudip Paul, Saurabh K. Srivastava, Elisa Cuadrado-Godia, Aditya Sharma, Tomaz Omerzu, Luca Saba, Sophie Mavrogeni, Monika Turk, John R. Laird, George D. Kitas, Mostafa Fatemi, Al Baha Barqawi, Martin Miner, Inder M. Singh, Amer Johri, Mannudeep M. Kalra, Vikas Agarwal, Kosmas I. Paraskevas, Jagjit S. Teji, Mostafa M. Fouda, Gyan Pareek and Jasjit S. Suriadd Show full author list remove Hide full author list
Diagnostics 2022, 12(5), 1249; https://doi.org/10.3390/diagnostics12051249 - 17 May 2022
Cited by 7 | Viewed by 4800
Abstract
Purpose: The role of erectile dysfunction (ED) has recently shown an association with the risk of stroke and coronary heart disease (CHD) via the atherosclerotic pathway. Cardiovascular disease (CVD)/stroke risk has been widely understood with the help of carotid artery disease (CTAD), a [...] Read more.
Purpose: The role of erectile dysfunction (ED) has recently shown an association with the risk of stroke and coronary heart disease (CHD) via the atherosclerotic pathway. Cardiovascular disease (CVD)/stroke risk has been widely understood with the help of carotid artery disease (CTAD), a surrogate biomarker for CHD. The proposed study emphasizes artificial intelligence-based frameworks such as machine learning (ML) and deep learning (DL) that can accurately predict the severity of CVD/stroke risk using carotid wall arterial imaging in ED patients. Methods: Using the PRISMA model, 231 of the best studies were selected. The proposed study mainly consists of two components: (i) the pathophysiology of ED and its link with coronary artery disease (COAD) and CHD in the ED framework and (ii) the ultrasonic-image morphological changes in the carotid arterial walls by quantifying the wall parameters and the characterization of the wall tissue by adapting the ML/DL-based methods, both for the prediction of the severity of CVD risk. The proposed study analyzes the hypothesis that ML/DL can lead to an accurate and early diagnosis of the CVD/stroke risk in ED patients. Our finding suggests that the routine ED patient practice can be amended for ML/DL-based CVD/stroke risk assessment using carotid wall arterial imaging leading to fast, reliable, and accurate CVD/stroke risk stratification. Summary: We conclude that ML and DL methods are very powerful tools for the characterization of CVD/stroke in patients with varying ED conditions. We anticipate a rapid growth of these tools for early and better CVD/stroke risk management in ED patients. Full article
(This article belongs to the Special Issue Artificial Intelligence in Stroke Imaging)
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