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Cerebral micro‐bleeding identification based on a nine‐layer convolutional neural network with stochastic pooling
112
Citations
37
References
2019
Year
Convolutional Neural NetworkMedical Image SegmentationEngineeringMachine LearningCmb DetectionImage ClassificationImage AnalysisNeurologyRadiologyComputational PathologyNeuroimagingCerebral Blood FlowMedical Image ComputingLayer CnnDeep LearningSummary Cerebral Micro‐bleedingsComputer VisionNeuroimaging BiomarkersStochastic PoolingNeuroscienceMedicine
Summary Cerebral micro‐bleedings are small chronic brain hemorrhages caused by structural abnormalities of the small vessels. CMBs can be found from individuals with stroke at memory clinics and even healthy elderly people. CMBs indicate hemorrhage‐prone pathological states. Research shows that CMBs are associated with an increased risk of future ischemic stroke, intra‐cerebral hemorrhage (ICH), dementia, and death. Considering that CMBs severely influence people's life, it is necessary to identify the CMBs in an early stage to prevent from further deterioration and to help people live a healthy life. In this paper, we proposed using CNN with stochastic pooling for the CMB detection. CNN has good performance in image and video recognition, recommender system, and nature language processing. Based on the collected subject, the experiment result shows that the six‐convolution layer and three fully‐connected layer CNN, nine‐layers in total, achieved sensitivity, specificity, accuracy, and precision as 97.22%, and 97.35%, 97.28%, and 97.35% in average of ten runs, which shows better performance than five state‐of‐the‐art methods.
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