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An Ensemble Learning Approach for Automatic Brain Hemorrhage Detection from MRIs

机译:来自MRIS的自动脑出血检测的集合学习方法

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Brain hemorrhage is one of the conditions that could affect people for several reasons such as high blood pressure, drug abuse, aneurysm, and trauma. Neurologists ordinarily use Magnetic Resonance Imaging (MRI) scan to examine patients for brain hemorrhage. In this study, we have developed an intelligent automatic model to identify MRIs of patients with hemorrhage from intact ones using an ensemble learning approach. Moreover, our proposed model can annotate the affected area of the brain in an axial view of MRI, which helps trainee doctors to improve their reasoning and decision making. In our experimental settings, we have applied a segmentation-based feature texture analysis to prepare MRIs for classification using an adaptive boosting algorithm. Our proposed method has achieved a classification accuracy of 89.2%, with 100% sensitivity in detecting the affected area of the brain.
机译:脑出血是由于诸如高血压,药物滥用,动脉瘤和创伤等几种原因可能影响人们的条件之一。神经泌素通常使用磁共振成像(MRI)扫描来检查脑出血的患者。在这项研究中,我们开发了一种智能的自动模型,以识别使用集合学习方法从完整的患者的出血患者的患者。此外,我们所提出的模型可以在MRI的轴向视图中向大脑的受影响区域注释,这有助于实习医生提高他们的推理和决策。在我们的实验设置中,我们应用了基于分段的特征纹理分析,以使用自适应升压算法为分类进行准备。我们所提出的方法已经实现了89.2%的分类精度,在检测脑的受影响区域方面具有100%的灵敏度。

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