Outcome Prediction Based on Automatically Extracted Infarct Core Image Features in Patients with Acute Ischemic Stroke.
Manon L TolhuisenJan W HovingMiou S KoopmanManon KappelhofHenk van VoorstAgnetha A E BruggemanAdam M DemchuckDiederik W J DippelBart J EmmerSerge BracardFrancis GuilleminRobert J van OostenbruggePeter J MitchellWim H van ZwamMichael D HillYvo B W E M RoosTudor G JovinOlvert A BerkhemerBruce C V CampbellJeffrey SaverPhil WhiteKeith W MuirMayank GoyalHenk A MarqueringCharles B L M MajoieMatthan W A Caannull nullPublished in: Diagnostics (Basel, Switzerland) (2022)
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.
Keyphrases
- diffusion weighted imaging
- acute ischemic stroke
- deep learning
- contrast enhanced
- diffusion weighted
- magnetic resonance imaging
- machine learning
- computed tomography
- artificial intelligence
- magnetic resonance
- end stage renal disease
- convolutional neural network
- ejection fraction
- chronic kidney disease
- newly diagnosed
- body mass index
- acute myocardial infarction
- healthcare
- heart failure
- phase iii
- study protocol
- resistance training
- squamous cell carcinoma
- weight loss
- peritoneal dialysis
- clinical trial
- single cell
- prognostic factors
- high resolution
- social media
- drug induced
- photodynamic therapy
- health information
- mechanical ventilation