Expanded Brain CT Dataset for the Development of AI Systems for Intracranial Hemorrhage Detection and Classification

Data Pub Date : 2024-02-06 DOI:10.3390/data9020030
A. Khoruzhaya, T. Bobrovskaya, D. V. Kozlov, Dmitriy Kuligovskiy, Vladimir P. Novik, Kirill M. Arzamasov, E. I. Kremneva
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Abstract

Intracranial hemorrhage (ICH) is a dangerous life-threatening condition leading to disability. Timely and high-quality diagnosis plays a huge role in the course and outcome of this disease. The gold standard in determining ICH is computed tomography. This method requires a prompt involvement of highly qualified personnel, which is not always possible, for example, in case of a staff shortage or increased workload. In such a situation, every minute counts, and time can be lost. The solution to this problem seems to be a set of diagnostic decisions, including the use of artificial intelligence, which will help to identify patients with ICH in a timely manner and provide prompt and quality medical care. However, the main obstacle to the development of artificial intelligence is a lack of high-quality datasets for training and testing. In this paper, we present a dataset including 800 brain CT scans consisting of multiple series of DICOM images with and without signs of ICH, enriched with clinical and technical parameters, as well as the methodology of its generation utilizing natural language processing tools. The dataset is publicly available, which contributes to increased competition in the development of artificial intelligence systems and their advancement and quality improvement.
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用于开发颅内出血检测和分类人工智能系统的扩展脑 CT 数据集
颅内出血(ICH)是一种危及生命并导致残疾的危险疾病。及时和高质量的诊断对疾病的进程和预后起着重要作用。确定 ICH 的金标准是计算机断层扫描。这种方法需要高素质人员的及时参与,但这并不总是可能的,例如在人员短缺或工作量增加的情况下。在这种情况下,必须分秒必争,否则就会耽误时间。解决这一问题的办法似乎是制定一套诊断决策,包括使用人工智能,这将有助于及时发现非物质文化遗产患者,并提供及时、优质的医疗护理。然而,人工智能发展的主要障碍是缺乏用于训练和测试的高质量数据集。在本文中,我们介绍了一个数据集,其中包括 800 张脑 CT 扫描图像,这些图像由多个系列的 DICOM 图像组成,既有 ICH 的迹象,也有非 ICH 的迹象,并添加了临床和技术参数,同时还介绍了利用自然语言处理工具生成数据集的方法。该数据集是公开的,这有助于提高人工智能系统开发的竞争性,促进其进步和质量改进。
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