人工智能在膝关节磁共振成像中的应用

Petra Kujundžić, Tatjana Matijaš
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引用次数: 0

摘要

技术进步导致放射成像的使用越来越多,而成像数量的增加导致放射科医生工作量的增加。人工智能在放射学中应用的驱动因素被认为是减少放射科医生的工作量,以及对更快、更准确诊断的需求。目的:本文的目的是让读者更接近人工智能在放射学中的实施,特别是在MRI模式中,以及深度学习算法如何改善图像重建。讨论:许多研究已经证实了在放射学系统中实施机器学习(人工智能的一个子集)的重要性。本文综述了大量关于深度学习在磁共振成像中的应用的研究,重点是自动分割模型。自动分割在早期检测骨关节炎,然后是前交叉韧带和半月板撕裂(最常见的膝关节损伤)方面表现出色,最近,深度学习模型在自动骨龄估计方面表现出色。最重要的是,自动分割具有较高的准确性和精密度,客观性和省时性。结论:先前的研究已经强调了在放射学中使用机器学习的显着优势,以及放射科医生与机器学习工作之间的卓越兼容性,可以实现精确和快速的诊断。所有这些都是进一步研究的巨大动力,技术进步必将加速其融入临床实践。
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Umjetna inteligencija u oslikavanju koljena magnetnom rezonancijom
Introduction: Technological progress leads to an increasing use of radiological imaging, and an increase in the number of imaging results in an increased workload for radiologists. The driver of the application of AI in radiology is considered to be the reduction of the workload of radiologists and the need for faster and more accurate diagnosis. Aim: The aim of this paper is to bring the reader closer to the implementation of AI in radiology, especially in the MRI modality, and how deep learning algorithms improve image reconstruction. Discussion: Numerous studies have confirmed the importance of implementing machine learning, a subset of artificial intelligence, in the radiology system. In this review paper, numerous researches on the application of deep learning in magnetic resonance imaging are highlighted, and the emphasis is on models for automatic segmentation. Automatic segmentation has shown excellent results in the early detection of osteoarthritis, then in anterior cruciate ligament and meniscus tears, the most common knee injuries, and more recently, the deep learning model has excelled in automatic bone age estimation. Automatic segmentation has achieved, above all, high accuracy and precision, objectivity and time saving. Conclusion: Previous research has already highlighted the significant advantage of using machine learning in radiology and the exceptional compatibility between the work of radiologists and machine learning, which achieves precise and quick diagnoses. All this is a great incentive for further research, and technological progress will certainly speed up its integration into clinical practice.
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