影像组学在自发性脑出血中的应用
Application of Radiomics in Intracerebral Hemorrhage
DOI: 10.12677/acm.2024.1472018, PDF,   
作者: 郑 浩, 田泰宇, 田晶晶, 周光文:吉首大学医学院,湖南 吉首;黄纯海*:吉首大学临床学院,湖南 吉首
关键词: 影像组学自发性脑出血诊断预后Radiomics Intracerebral Hemorrhage Diagnosis Prognosis
摘要: 近年来,影像组学作为一种新兴研究方法在自发性脑出血(Intracerebral Hemorrhage, ICH)的诊治中显示出了重要的应用前景。通过多模态医学成像技术,如计算机断层扫描和磁共振成像,影像组学为脑组织损伤程度、血流动力学、代谢活动及神经连接等方面提供了深入的见解。这些信息有助于医生准确评估患者病情,预测患者预后,选择最佳治疗策略,从而提高治疗效果,降低并发症。随着影像组学技术的进一步发展,该方法在ICH的早期诊断、鉴别诊断和预后方面具有很大的应用潜力。文章回顾探讨影像组学的基本理念及其在ICH的影响。
Abstract: In recent years, radiomics, as an emerging research methodology, has demonstrated significant application prospects in the diagnosis and treatment of spontaneous intracerebral hemorrhage (ICH). Utilizing multimodal medical imaging techniques such as computed tomography (CT) and magnetic resonance imaging (MRI), radiomics offers in-depth insights into aspects including the extent of brain tissue damage, hemodynamics, metabolic activity, and neural connectivity. This information aids physicians in accurately assessing patient conditions, predicting prognosis, and selecting optimal treatment strategies, thereby enhancing treatment efficacy and reducing complications. With further advancements in radiomics technology, this approach holds great potential in the early diagnosis, differential diagnosis, and prognosis of ICH. This paper reviews and discusses the fundamental principles of radiomics and its impact on ICH.
文章引用:郑浩, 田泰宇, 田晶晶, 周光文, 黄纯海. 影像组学在自发性脑出血中的应用[J]. 临床医学进展, 2024, 14(7): 329-335. https://doi.org/10.12677/acm.2024.1472018

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