Publication | Open Access
Towards Clinical Diagnosis: Automated Stroke Lesion Segmentation on Multi-Spectral MR Image Using Convolutional Neural Network
77
Citations
24
References
2018
Year
EngineeringBrain LesionDiagnostic ImagingMagnetic Resonance ImagingImage AnalysisClinical DiagnosisNeurologyApparent Diffusion CoefficientRadiologyStroke LesionsMedical ImagingMedicineNeuroimagingCerebral Blood FlowDeep LearningMedical Image ComputingTowards Clinical DiagnosisIschemic StrokeBiomedical ImagingComputer-aided DiagnosisNeuroscienceStrokeMedical Image AnalysisImage Segmentation
The patient with ischemic stroke can benefit most from the earliest possible definitive diagnosis. While a quantitative evaluation of the stroke lesions on the magnetic resonance images (MRIs) is effective in clinical diagnosis, manually segmenting the stroke lesions is commonly used, which is, however, a tedious and time-consuming task. Therefore, how to segment the stroke lesions in a fully automated manner has recently extracted extensive attentions. Considering that the clinically acquired MRIs usually have thick slices, we propose a 2D-slice-based segmentation method. In particular, we use multi-spectral MRIs, i.e., diffusion weighted image, apparent diffusion coefficient, and T2-weighted image, as input, and propose a residual-structured fully convolutional network (Res-FCN). The proposed Res-FCN is trained and evaluated on a large data set with 212 clinically acquired MRIs, which achieves a mean dice coefficient of 0.645 with a mean number of false negative lesions of 1.515 per subject. The proposed Res-FCN is further evaluated on a public data set, i.e., ISLES2015-SISS, which presents a very competitive result among all 2D-slice-based segmentation methods.
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