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Image Thresholding Improves 3-Dimensional Convolutional Neural Network Diagnosis of Different Acute Brain Hemorrhages on Computed Tomography Scans

机译:图像阈值改进了计算机断层扫描在不同急性脑出血中的3维卷积神经网络诊断

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摘要

Intracranial hemorrhage is a medical emergency that requires urgent diagnosis and immediate treatment to improve patient outcome. Machine learning algorithms can be used to perform medical image classification and assist clinicians in diagnosing radiological scans. In this paper, we apply 3-dimensional convolutional neural networks (3D CNN) to classify computed tomography (CT) brain scans into normal scans (N) and abnormal scans containing subarachnoid hemorrhage (SAH), intraparenchymal hemorrhage (IPH), acute subdural hemorrhage (ASDH) and brain polytrauma hemorrhage (BPH). The dataset used consists of 399 volumetric CT brain images representing approximately 12,000 images from the National Neuroscience Institute, Singapore. We used a 3D CNN to perform both 2-class (normal versus a specific abnormal class) and 4-class classification (between normal, SAH, IPH, ASDH). We apply image thresholding at the image pre-processing step, that improves 3D CNN classification accuracy and performance by accentuating the pixel intensities that contribute most to feature discrimination. For 2-class classification, the F1 scores for various pairs of medical diagnoses ranged from 0.706 to 0.902 without thresholding. With thresholding implemented, the F1 scores improved and ranged from 0.919 to 0.952. Our results are comparable to, and in some cases, exceed the results published in other work applying 3D CNN to CT or magnetic resonance imaging (MRI) brain scan classification. This work represents a direct application of a 3D CNN to a real hospital scenario involving a medically emergent CT brain diagnosis.
机译:颅内出血是一种医疗急症,需要紧急诊断和立即治疗以改善患者预后。机器学习算法可用于执行医学图像分类,并协助临床医生诊断放射线扫描。在本文中,我们应用3D卷积神经网络(3D CNN)将计算机断层扫描(CT)脑部扫描分为正常扫描(N)和异常扫描,其中包括蛛网膜下腔出血(SAH),实质内出血(IPH),急性硬膜下出血(ASDH)和脑多发性出血(BPH)。所使用的数据集包括399张CT脑部体积图像,代表来自新加坡国家神经科学研究所的大约12,000张图像。我们使用了3D CNN来执行2类(正常与特定异常类)和4类分类(在正常,SAH,IPH,ASDH之间)。我们在图像预处理步骤中应用图像阈值处理,通过加重对特征识别最有贡献的像素强度,从而提高了3D CNN分类的准确性和性能。对于2类分类,各种医疗诊断对的F1得分在0.706到0.902之间,而没有阈值。实施阈值处理后,F1分数提高了,范围从0.919至0.952。我们的结果与在将3D CNN应用于CT或磁共振成像(MRI)脑部扫描分类的其他工作中所发表的结果相当,并且在某些情况下还超过了其他结果。这项工作代表了将3D CNN直接应用于涉及医学上急需的CT脑诊断的真实医院情况。

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