放射组学和人工智能在颅内动脉瘤治疗中的系统评价

IF 2.3 4区 医学 Q3 CLINICAL NEUROLOGY
Monica-Rae Owens, Samuel A. Tenhoeve, Clayton Rawson, Mohammed Azab, Michael Karsy
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引用次数: 0

摘要

颅内动脉瘤的年发病率为2%-3%,是一种罕见的疾病,破裂后具有显著的死亡率和发病率风险。早期发现、高危亚组风险分层和预测患者预后对治疗非常重要。放射组学是一个新兴的领域,它使用医学成像的量化来识别可能提供诊断或预后意义的传统放射学解释之外的参数。一般放射学工作流程包括图像归一化和分割、特征提取、特征选择或降维、预测模型的训练以及所述模型的验证。人工智能(AI)技术对血管病理学的应用越来越感兴趣,一些商业上成功的软件包括AiDoc、RapidAI和Viz.AI,以及最近的Viz动脉瘤。我们对684篇文章进行了系统回顾,并确定了84篇探讨放射组学和人工智能在动脉瘤治疗中的应用的文章。大多数研究发表在2018年至2024年之间,超过一半的文章发表在2022年和2023年。研究包括动脉瘤诊断(25.0%)、破裂风险预测(50.0%)、生长速度预测(4.8%)、血流动力学评估(2.4%)、临床结果预测(11.9%)和闭塞或狭窄评估(6.0%)等类别。研究使用了分子数据(2.4%)、单独的放射学数据(51.2%)、单独的临床数据(28.6%)以及放射学和临床联合数据(17.9%)。这些结果表明了这一新兴而激动人心的领域的现状。随着放射组学和人工智能在多种血管病变中的临床应用的扩大,这一领域的创新步伐可能会加快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Systematic Review of Radiomics and Artificial Intelligence in Intracranial Aneurysm Management

Systematic Review of Radiomics and Artificial Intelligence in Intracranial Aneurysm Management

Intracranial aneurysms, with an annual incidence of 2%–3%, reflect a rare disease associated with significant mortality and morbidity risks when ruptured. Early detection, risk stratification of high-risk subgroups, and prediction of patient outcomes are important to treatment. Radiomics is an emerging field using the quantification of medical imaging to identify parameters beyond traditional radiology interpretation that may offer diagnostic or prognostic significance. The general radiomic workflow involves image normalization and segmentation, feature extraction, feature selection or dimensional reduction, training of a predictive model, and validation of the said model. Artificial intelligence (AI) techniques have shown increasing interest in applications toward vascular pathologies, with some commercially successful software including AiDoc, RapidAI, and Viz.AI, as well as the more recent Viz Aneurysm. We performed a systematic review of 684 articles and identified 84 articles exploring the applications of radiomics and AI in aneurysm treatment. Most studies were published between 2018 and 2024, with over half of articles in 2022 and 2023. Studies included categories such as aneurysm diagnosis (25.0%), rupture risk prediction (50.0%), growth rate prediction (4.8%), hemodynamic assessment (2.4%), clinical outcome prediction (11.9%), and occlusion or stenosis assessment (6.0%). Studies utilized molecular data (2.4%), radiologic data alone (51.2%), clinical data alone (28.6%), and combined radiologic and clinical data (17.9%). These results demonstrate the current status of this emerging and exciting field. An increased pace of innovation in this space is likely with the expansion of clinical applications of radiomics and AI in multiple vascular pathologies.

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来源期刊
Journal of Neuroimaging
Journal of Neuroimaging 医学-核医学
CiteScore
4.70
自引率
0.00%
发文量
117
审稿时长
6-12 weeks
期刊介绍: Start reading the Journal of Neuroimaging to learn the latest neurological imaging techniques. The peer-reviewed research is written in a practical clinical context, giving you the information you need on: MRI CT Carotid Ultrasound and TCD SPECT PET Endovascular Surgical Neuroradiology Functional MRI Xenon CT and other new and upcoming neuroscientific modalities.The Journal of Neuroimaging addresses the full spectrum of human nervous system disease, including stroke, neoplasia, degenerating and demyelinating disease, epilepsy, tumors, lesions, infectious disease, cerebral vascular arterial diseases, toxic-metabolic disease, psychoses, dementias, heredo-familial disease, and trauma.Offering original research, review articles, case reports, neuroimaging CPCs, and evaluations of instruments and technology relevant to the nervous system, the Journal of Neuroimaging focuses on useful clinical developments and applications, tested techniques and interpretations, patient care, diagnostics, and therapeutics. Start reading today!
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