Data-efficient deep learning of radiological image data for outcome prediction after endovascular treatment of patients with acute ischemic stroke.
Aged
Aged, 80 and over
Brain Ischemia
/ diagnostic imaging
Cerebral Angiography
Computed Tomography Angiography
Endovascular Procedures
/ adverse effects
Female
Humans
Male
Middle Aged
Neural Networks, Computer
Postoperative Complications
/ diagnostic imaging
Predictive Value of Tests
Prospective Studies
Registries
Stroke
/ diagnostic imaging
Acute ischemic stroke
Deep learning
Gradient-weighted class activation mapping
Prognostics
RFNN
Radiological images
ResNet
Structured receptive fields
Journal
Computers in biology and medicine
ISSN: 1879-0534
Titre abrégé: Comput Biol Med
Pays: United States
ID NLM: 1250250
Informations de publication
Date de publication:
12 2019
12 2019
Historique:
received:
25
06
2019
revised:
15
10
2019
accepted:
16
10
2019
pubmed:
11
11
2019
medline:
23
9
2020
entrez:
11
11
2019
Statut:
ppublish
Résumé
Treatment selection is becoming increasingly more important in acute ischemic stroke patient care. Clinical variables and radiological image biomarkers (old age, pre-stroke mRS, NIHSS, occlusion location, ASPECTS, among others) have an important role in treatment selection and prognosis. Radiological biomarkers require expert annotation and are subject to inter-observer variability. Recently, Deep Learning has been introduced to reproduce these radiological image biomarkers. Instead of reproducing these biomarkers, in this work, we investigated Deep Learning techniques for building models to directly predict good reperfusion after endovascular treatment (EVT) and good functional outcome using CT angiography images. These models do not require image annotation and are fast to compute. We compare the Deep Learning models to Machine Learning models using traditional radiological image biomarkers. We explored Residual Neural Network (ResNet) architectures, adapted them with Structured Receptive Fields (RFNN) and auto-encoders (AE) for network weight initialization. We further included model visualization techniques to provide insight into the network's decision-making process. We applied the methods on the MR CLEAN Registry dataset with 1301 patients. The Deep Learning models outperformed the models using traditional radiological image biomarkers in three out of four cross-validation folds for functional outcome (average AUC of 0.71) and for all folds for reperfusion (average AUC of 0.65). Model visualization showed that the arteries were relevant features for functional outcome prediction. The best results were obtained for the ResNet models with RFNN. Auto-encoder initialization often improved the results. We concluded that, in our dataset, automated image analysis with Deep Learning methods outperforms radiological image biomarkers for stroke outcome prediction and has the potential to improve treatment selection.
Identifiants
pubmed: 31707199
pii: S0010-4825(19)30378-6
doi: 10.1016/j.compbiomed.2019.103516
pii:
doi:
Types de publication
Clinical Trial
Journal Article
Multicenter Study
Observational Study
Research Support, Non-U.S. Gov't
Langues
eng
Sous-ensembles de citation
IM
Pagination
103516Informations de copyright
Copyright © 2019. Published by Elsevier Ltd.