构建大型鼻窦疾病综合医学图像集

Aya Nuseir, M. Alsmirat, A. Nuseir, M. Al-Ayyoub, Mohammed Mahdi, A. AlOmari, H. Al-Balas
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引用次数: 0

摘要

鼻窦疾病是影响全世界人们生活的最常见疾病之一。诊断这种疾病需要高技能的专家仔细检查患者的计算机断层扫描(CT)。诊断过程既耗时又昂贵。为了为诊断过程建立一个基于机器学习的计算机系统,需要一组代表不同鼻窦疾病的带注释的CT扫描来训练和测试这样的系统。在这项工作中,我们通过收集100名患者的CT扫描,平均每个患者94片,建立了一个图像集。在每次扫描中,十个不同的鼻窦和鼻窦部分被捕获。这些鼻窦和窦部分为额窦(右侧)、额窦(左侧)、上颌窦(右侧)、上颌窦(左侧)、筛前窦(右侧)、筛前窦(左侧)、筛后窦(右侧)、筛后窦(左侧)、蝶窦(右侧)和蝶窦(左侧)。扫描由专家进行分割和注释,其中每个部分都标有它所描绘的鼻窦(或鼻窦部分)(上面提到的十类中的一类)以及代表该部分状态的以下六类之一:正常,囊肿,骨瘤,慢性鼻窦炎(CRS),鼻后鼻息肉(ACP)和缺失鼻窦。该数据集来自约旦阿卜杜拉国王大学医院(KAUH),它由48,324个不同的注释样本组成,使其成为我们所知的最大和最全面的鼻窦疾病数据集。
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Building a Large Comprehensive Medical Image Set of Sinus Diseases
Sinuses disorders are among the most common disorders that affect people’s lives worldwide. Diagnosing such disorders requires highly skilled specialists to carefully inspect Computed Tomographic (CT) scans of the patient. The diagnosis process is time-consuming and very costly. To build a machine learning based computer system for the diagnosis process, an annotated set of CT scans representing different sinus disorders is needed to train and test such a system. In this work, we build an image set by collecting CT scans of 100 patients with an average of 94 slices per patient. In each scan, ten different sinuses and sinus parts are captured. These sinuses and sinus parts are distinguished as Frontal (right side), Frontal (left side), Maxillary (right side), Maxillary (left side), Anterior Ethmoid (right side), Anterior Ethmoid (left side), Posterior Ethmoid (right side), Posterior Ethmoid (left side), Sphenoid (right side), and Sphenoid (left side). The scans are segmented and annotated by specialists, where each segment is labeled with the sinus (or sinus part) it depicts (one out of the ten classes mentioned above) along with one of the following six classes representing the status of this part: Normal, Cyst, Osteoma, Chronic Rhinosinusitis (CRS), Antrochoanal polyp (ACP), and Missing sinus. The dataset is acquired from the King Abdullah University Hospital (KAUH) in Jordan and it consists of 48,324 different annotated samples making it the largest and most comprehensive dataset for sinus diseases to the best of our knowledge.
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