Affiliation:
1. From the Department of Clinical Medicine, Center of Functionally Integrative Neuroscience and MINDLAB, Aarhus University, Denmark (A.N., M.B.H., A.T., K.M.)
2. Cercare Medical ApS, Aarhus, Denmark (A.N.)
3. Institute of Neuroradiology, Charité Universitätsmedizin, Germany (A.T.).
Abstract
Background and Purpose—
Treatment options for patients with acute ischemic stroke depend on the volume of salvageable tissue. This volume assessment is currently based on fixed thresholds and single imagine modalities, limiting accuracy. We wish to develop and validate a predictive model capable of automatically identifying and combining acute imaging features to accurately predict final lesion volume.
Methods—
Using acute magnetic resonance imaging, we developed and trained a deep convolutional neural network (CNN
deep
) to predict final imaging outcome. A total of 222 patients were included, of which 187 were treated with rtPA (recombinant tissue-type plasminogen activator). The performance of CNN
deep
was compared with a shallow CNN based on the perfusion-weighted imaging biomarker Tmax (CNN
Tmax
), a shallow CNN based on a combination of 9 different biomarkers (CNN
shallow
), a generalized linear model, and thresholding of the diffusion-weighted imaging biomarker apparent diffusion coefficient (ADC) at 600×10
−6
mm
2
/s (ADC
thres
). To assess whether CNN
deep
is capable of differentiating outcomes of ±intravenous rtPA, patients not receiving intravenous rtPA were included to train CNN
deep,
−rtpa
to access a treatment effect. The networks’ performances were evaluated using visual inspection, area under the receiver operating characteristic curve (AUC), and contrast.
Results—
CNN
deep
yields significantly better performance in predicting final outcome (AUC=0.88±0.12) than generalized linear model (AUC=0.78±0.12;
P
=0.005), CNN
Tmax
(AUC=0.72±0.14;
P
<0.003), and ADC
thres
(AUC=0.66±0.13;
P
<0.0001) and a substantially better performance than CNN
shallow
(AUC=0.85±0.11;
P
=0.063). Measured by contrast, CNN
deep
improves the predictions significantly, showing superiority to all other methods (
P
≤0.003). CNN
deep
also seems to be able to differentiate outcomes based on treatment strategy with the volume of final infarct being significantly different (
P
=0.048).
Conclusions—
The considerable prediction improvement accuracy over current state of the art increases the potential for automated decision support in providing recommendations for personalized treatment plans.
Publisher
Ovid Technologies (Wolters Kluwer Health)
Subject
Advanced and Specialised Nursing,Cardiology and Cardiovascular Medicine,Clinical Neurology
Cited by
168 articles.
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