基于空间注意力的 CSR-Unet 框架,用于利用 CT 图像对硬膜下和硬膜外出血进行分割和分类。

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING BMC Medical Imaging Pub Date : 2024-10-22 DOI:10.1186/s12880-024-01455-6
Nafees Ahmed S, Prakasam P
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引用次数: 0

摘要

背景:计算机断层扫描(CT)中的自动诊断和脑出血分割可能有助于协助神经外科医生制定治疗方案,从而提高患者的生存机会。由于图像的医学分割非常重要,而人工操作又具有挑战性,因此许多自动算法已为此目的开发出来,主要集中在某些图像模式上。每当血管破裂时,就会出现一种危险的医疗状况,即颅内出血(ICH)。为了达到最佳效果,必须迅速采取行动。尽管如此,识别硬膜下出血(SDH)和硬膜外出血(EDH)是这一领域的一项艰巨任务,需要一种新的、更精确的检测方法:这项工作使用头部 CT 扫描检测脑出血,并利用深度学习技术区分两种类型的硬脑膜出血。本文提出了一种丰富的分割方法,通过更好的特征提取程序提高分割效率,从而分割出 SDH 和 EDH。该方法结合了基于空间注意力的 CSR(卷积-SE-残留)Unet,以实现丰富的分割和精确的特征提取:根据研究结果,基于 CSR 的空间网络比其他模型表现更好,在所有评估参数方面都表现出令人印象深刻的指标,平均骰子系数为 0.970,平均 IoU 为 0.718,而 EDH 和 SDH 骰子分数分别为 0.983 和 0.969:CSR 空间网络实验结果表明,它在骰子系数方面表现良好。此外,与其他深度学习技术相比,基于 CSR 的 Spatial Unet 可以有效地对复杂的分割和丰富的特征提取进行建模,并改进疾病和医疗的表征学习,从而提高预测死亡的精细度。
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Spatial attention-based CSR-Unet framework for subdural and epidural hemorrhage segmentation and classification using CT images.

Background: Automatic diagnosis and brain hemorrhage segmentation in Computed Tomography (CT) may be helpful in assisting the neurosurgeon in developing treatment plans that improve the patient's chances of survival. Because medical segmentation of images is important and performing operations manually is challenging, many automated algorithms have been developed for this purpose, primarily focusing on certain image modalities. Whenever a blood vessel bursts, a dangerous medical condition known as intracranial hemorrhage (ICH) occurs. For best results, quick action is required. That being said, identifying subdural (SDH) and epidural haemorrhages (EDH) is a difficult task in this field and calls for a new, more precise detection method.

Methods: This work uses a head CT scan to detect cerebral bleeding and distinguish between two types of dural hemorrhages using deep learning techniques. This paper proposes a rich segmentation approach to segment both SDH and EDH by enhancing segmentation efficiency with a better feature extraction procedure. This method incorporates Spatial attention- based CSR (convolution-SE-residual) Unet, for rich segmentation and precise feature extraction.

Results: According to the study's findings, the CSR based Spatial network performs better than the other models, exhibiting impressive metrics for all assessed parameters with a mean dice coefficient of 0.970 and mean IoU of 0.718, while EDH and SDH dice scores are 0.983 and 0.969 respectively.

Conclusions: The CSR Spatial network experiment results show that it can perform well regarding dice coefficient. Furthermore, Spatial Unet based on CSR may effectively model the complicated in segmentations and rich feature extraction and improve the representation learning compared to alternative deep learning techniques, of illness and medical treatment, to enhance the meticulousness in predicting the fatality.

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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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