Automated Detection of Intracranial Hemorrhage from Head CT Scans Applying Deep Learning Techniques in Traumatic Brain Injuries: A Comparative Review

IF 0.2 Q4 NEUROSCIENCES
D. Agrawal, Latha Poonamallee, Sharwari Joshi
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引用次数: 1

Abstract

Abstract Traumatic brain injury (TBI) is not only an acute condition but also a chronic disease with long-term consequences. Intracranial hematomas are considered the primary consequences that occur in TBI and may have devastating effects that may lead to mass effect on the brain and eventually cause secondary brain injury. Emergent detection of hematoma in computed tomography (CT) scans and assessment of three major determinants, namely, location, volume, and size, is crucial for prognosis and decision-making, and artificial intelligence (AI) using deep learning techniques, such as convolutional neural networks (CNN) has received extended attention after demonstrations that it could perform at least as well as humans in imaging classification tasks. This article conducts a comparative review of medical and technological literature to update and establish evidence as to how technology can be utilized rightly for increasing the efficiency of the clinical workflow in emergency cases. A systematic and comprehensive literature search was conducted in the electronic database of PubMed and Google Scholar from 2013 to 2023 to identify studies related to the automated detection of intracranial hemorrhage (ICH). Inclusion and exclusion criteria were set to filter out the most relevant articles. We identified 15 studies on the development and validation of computer-assisted screening and analysis algorithms that used head CT scans. Our review shows that AI algorithms can prioritize radiology worklists to reduce time to screen for ICH in the head scans sufficiently and may also identify subtle ICH overlooked by radiologists, and that automated ICH detection tool holds promise for introduction into routine clinical practice.
应用深度学习技术在创伤性脑损伤中的颅脑CT扫描颅内出血自动检测:比较综述
摘要创伤性脑损伤(TBI)不仅是一种急性疾病,而且是一种具有长期后果的慢性疾病。颅内血肿被认为是创伤性脑损伤的主要后果,可能具有毁灭性的影响,可能导致脑肿块效应,最终导致继发性脑损伤。在计算机断层扫描(CT)中紧急检测血肿并评估三个主要决定因素,即位置、体积和大小,对于预后和决策至关重要,而使用深度学习技术的人工智能(AI),如卷积神经网络(CNN),在证明它至少可以在成像分类任务中表现得与人类一样好后,受到了广泛的关注。本文对医学和技术文献进行了比较回顾,以更新和建立关于如何正确利用技术来提高急诊病例临床工作流程效率的证据。通过2013 - 2023年在PubMed和Google Scholar电子数据库中进行系统、全面的文献检索,找出颅内出血(ICH)自动检测相关的研究。设置纳入和排除标准以过滤出最相关的文章。我们确定了15项关于使用头部CT扫描的计算机辅助筛选和分析算法的开发和验证的研究。我们的综述表明,人工智能算法可以优先考虑放射学工作清单,以充分减少在头部扫描中筛查脑出血的时间,也可以识别被放射科医生忽视的细微脑出血,并且自动化脑出血检测工具有望引入常规临床实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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