利用机器学习和深度学习技术检测颅内动脉瘤和出血的系统综述。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
S. Nafees Ahmed, P. Prakasam
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引用次数: 1

摘要

据报道,在初次筛查和后续筛查中发现颅内动脉瘤的风险分别约为11%和7%(Zuurbie等人,2023)。由于这些质量效应,未破裂的动脉瘤经常会产生症状,然而,真正的危险发生在动脉瘤破裂并导致称为蛛网膜下腔出血的脑出血时。目的是研究多种出血和动脉瘤检测问题,并开发机器和深度学习模型来识别它们。蛛网膜下腔出血是动脉瘤破裂后最典型的症状,由于其早期,是一种重要的医疗状况。它经常导致严重的神经系统紧急情况,甚至死亡。尽管大多数动脉瘤没有症状,不会破裂,但由于它们的生长不可预测,即使是小动脉瘤也很容易发生。及时诊断对于预防早期死亡至关重要,因为大量出血病例可能是致命的。生理/影像学标志物和蛛网膜下腔出血的程度可以作为潜在的出血早期治疗指标。血液动力学病理机制和微细胞环境仍然是学术界和医学专业人士的优先事项。尽管研究报告了动脉瘤破裂的风险和结果,但对于如何以及何时治疗未破裂的动脉瘤仍存在分歧。我们乐观地认为,随着我们对出血和动脉瘤病理生理学的理解取得进展,以及人工智能的进步,进行高精度、有效性和可靠性的分析变得可行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A systematic review on intracranial aneurysm and hemorrhage detection using machine learning and deep learning techniques

The risk of discovering an intracranial aneurysm during the initial screening and follow-up screening are reported as around 11%, and 7% respectively (Zuurbie et al., 2023) to these mass effects, unruptured aneurysms frequently generate symptoms, however, the real hazard occurs when an aneurysm ruptures and results in a cerebral hemorrhage known as a subarachnoid hemorrhage. The objective is to study the multiple kinds of hemorrhage and aneurysm detection problems and develop machine and deep learning models to recognise them. Due to its early stage, subarachnoid hemorrhage, the most typical symptom after aneurysm rupture, is an important medical condition. It frequently results in severe neurological emergencies or even death. Although most aneurysms are asymptomatic and won't burst, because of their unpredictable growth, even small aneurysms are susceptible. A timely diagnosis is essential to prevent early mortality because a large percentage of hemorrhage cases present can be fatal. Physiological/imaging markers and the degree of the subarachnoid hemorrhage can be used as indicators for potential early treatments in hemorrhage. The hemodynamic pathomechanisms and microcellular environment should remain a priority for academics and medical professionals. There is still disagreement about how and when to care for aneurysms that have not ruptured despite studies reporting on the risk of rupture and outcomes. We are optimistic that with the progress in our understanding of the pathophysiology of hemorrhages and aneurysms and the advancement of artificial intelligence has made it feasible to conduct analyses with a high degree of precision, effectiveness and reliability.

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CiteScore
7.20
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4.30%
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