Ischemia and Hemorrhage detection in CT images with Hyper parameter optimization of classification models and Improved UNet Segmentation Model

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Abstract

Deep learning is a powerful technique that has been applied to the task of stroke detection using medical imaging. Stroke is a medical condition that occurs when the blood supply to the brain is interrupted, which can cause brain damage and other serious complications. Detection of stroke is important in order to minimize damage and improve patient outcomes. One of the most common imaging modalities used for stroke detection is CT(Computed Tomography). CT can provide detailed images of the brain and can be used to identify the presence and location of a stroke. Deep learning models, particularly convolutional neural networks (CNNs), have shown promise for the task of stroke detection using CT images. These models can learn to automatically identify patterns in the images that are indicative of a stroke, such as the presence of an infarct or hemorrhage. Some examples of deep learning models used for stroke detection in CT images are U-Net, which is commonly used for medical image segmentation tasks, and CNNs, which have been trained to classify brain CT images into normal or abnormal. The purpose of this study is to identify the type of stroke from brain CT images taken without the administration of a contrast agent, i.e. occlusive (ischemic) or hemorrhagic (hemorrhagic). Stroke images were collected and a dataset was constructed with medical specialists. Deep learning classification models were evaluated with hyperparameter optimization techniques. And the result segmented with improved Unet model to visualize the stroke in CT images. Classification models were compared and VGG16 achieved %94 success. Unet model was achieved %60 IOU and detected the ischemia and hemorrhage differences.
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基于超参数优化分类模型和改进UNet分割模型的CT图像缺血出血检测
深度学习是一项强大的技术,已应用于使用医学成像进行中风检测的任务。中风是一种医学疾病,当大脑的血液供应中断时,就会发生中风,这会导致脑损伤和其他严重的并发症。中风的检测对于减少损害和改善病人的预后是很重要的。用于脑卒中检测的最常见的成像方式之一是CT(计算机断层扫描)。CT可以提供大脑的详细图像,并可用于识别中风的存在和位置。深度学习模型,特别是卷积神经网络(cnn),已经在使用CT图像进行脑卒中检测的任务中显示出了希望。这些模型可以学习自动识别图像中指示中风的模式,例如梗塞或出血的存在。用于CT图像中风检测的深度学习模型的一些例子是U-Net,它通常用于医学图像分割任务,以及cnn,它们已被训练用于将脑CT图像分为正常或异常。本研究的目的是在不使用造影剂的情况下,从脑CT图像中识别中风的类型,即闭塞性(缺血性)或出血性(出血性)。收集中风图像,并与医学专家一起构建数据集。采用超参数优化技术对深度学习分类模型进行评价。并利用改进的Unet模型对结果进行分割,实现脑卒中在CT图像中的可视化。比较了不同的分类模型,VGG16的成功率为94%。Unet模型达到%60 IOU,检测缺血和出血差异。
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