Abstract

Ischemic stroke is a common disease in the elderly population, which can cause long-term disability and even death. However, the time window for treatment of ischemic stroke in its acute stage is very short. To fast localize and quantitively evaluate the acute ischemic stroke (AIS) lesions, many deep-learning-based lesion segmentation methods have been proposed in the literature, where a deep convolutional neural network (CNN) was trained on hundreds of fully labeled subjects with accurate annotations of AIS lesions. Despite that high segmentation accuracy can be achieved, the accurate labels should be annotated by experienced clinicians, and it is therefore very time-consuming to obtain a large number of fully labeled subjects. In this paper, we propose a semi-supervised method to automatically segment AIS lesions in diffusion weighted images and apparent diffusion coefficient maps. By using a large number of weakly labeled subjects and a small number of fully labeled subjects, our proposed method is able to accurately detect and segment the AIS lesions. In particular, our proposed method consists of three parts: 1) a double-path classification net (DPC-Net) trained in a weakly-supervised way is used to detect the suspicious regions of AIS lesions; 2) a pixel-level K-Means clustering algorithm is used to identify the hyperintensive regions on the DWIs; and 3) a region-growing algorithm combines the outputs of the DPC-Net and the K-Means to obtain the final precise lesion segmentation. In our experiment, we use 460 weakly labeled subjects and 15 fully labeled subjects to train and fine-tune the proposed method. By evaluating on a clinical dataset with 150 fully labeled subjects, our proposed method achieves a mean dice coefficient of 0.642, and a lesion-wise F1 score of 0.822.

Highlights

  • Stroke has been one of the most common causes of death and longterm disability worldwide [1], which brings tremendous pain and financial burden to patients

  • The class activation map (CAM) results obtained from a naïve VGG-16 based CAM method [38], denoted as CAM-baseline, and the output probability maps (PMs) of our proposed double-path classification network (DPC-Net), denoted as PM-DPC-Net, are presented for comparison

  • From the aspect of segmentation, the CAM-baseline tends to segment much larger area than the actual acute ischemic stroke (AIS) lesion, due to the fact that the output PMs in conventional CAM method is obtained from features maps with much lower resolution than the original images

Read more

Summary

Introduction

Stroke has been one of the most common causes of death and longterm disability worldwide [1], which brings tremendous pain and financial burden to patients. As the ischemic stroke may lead to invertible damage on brain tissues, in clinical practice, it is of paramount importance to quickly diagnose and quantitively evaluate in the acute stage to improve the treatment outcome. In diagnosing of ischemic strokes, magnetic resonance imaging (MRI) serves as the modality of choice for clinical evaluation. The diffusion-weighted images (DWIs) and the apparent diffusion coefficient (ADC) maps derived from multiple DWIs with different bvalues have been shown to be sensitive in diagnosing acute ischemic stroke (AIS). The AIS lesions appear as hyperintense on the DWIs and hypointense on the ADC maps [3]. The regions identified by the red arrows are AIS lesions.

Objectives
Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call