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A graph-based approach for the retrieval of multi-modality medical images

机译:基于图的多模态医学图像检索方法

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摘要

Medical imaging has revolutionised modern medicine and is now an integral aspect of diagnosis and patient monitoring. The development of new imaging devices for a wide variety of clinical cases has spurred an increase in the data volume acquired in hospitals. These large data collections offer opportunities for search-based applications in evidence-based diagnosis, education, and biomedical research. However, conventional search methods that operate upon manual annotations are not feasible for this data volume. Content-based image retrieval (CBIR) is an image search technique that uses automatically derived visual features as search criteria and has demonstrable clinical benefits. However, very few studies have investigated the CBIR of multi-modality medical images, which are making a monumental impact in healthcare, e.g., combined positron emission tomography and computed tomography (PET-CT) for cancer diagnosis. \ud\udIn this thesis, we propose a new graph-based method for the CBIR of multi-modality medical images. We derive a graph representation that emphasises the spatial relationships between modalities by structurally constraining the graph based on image features, e.g., spatial proximity of tumours and organs. We also introduce a graph similarity calculation algorithm that prioritises the relationships between tumours and related organs. To enable effective human interpretation of retrieved multi-modality images, we also present a user interface that displays graph abstractions alongside complex multi-modality images. \ud\udOur results demonstrated that our method achieved a high precision when retrieving images on the basis of tumour location within organs. The evaluation of our proposed UI design by user surveys revealed that it improved the ability of users to interpret and understand the similarity between retrieved PET-CT images. The work in this thesis advances the state-of-the-art by enabling a novel approach for the retrieval of multi-modality medical images.
机译:医学成像已经彻底改变了现代医学,现在已成为诊断和患者监测的一个不可或缺的方面。针对各种临床病例的新成像设备的开发刺激了医院获取的数据量的增加。这些大型数据收集为基于搜索的应用程序在基于证据的诊断,教育和生物医学研究中提供了机会。但是,基于手动注释的常规搜索方法对该数据量不可行。基于内容的图像检索(CBIR)是一种图像搜索技术,它使用自动派生的视觉特征作为搜索标准,并具有明显的临床益处。但是,很少有研究调查多模式医学图像的CBIR,这些图像对医疗保健产生了巨大影响,例如,结合正电子发射断层扫描和计算机断层扫描(PET-CT)进行癌症诊断。 \ ud \ ud在本文中,我们为多模态医学图像的CBIR提出了一种新的基于图的方法。我们通过基于图像特征(例如肿瘤和器官的空间接近度)在结构上限制图来得出强调形态之间空间关系的图表示。我们还介绍了一种图相似度计算算法,该算法优先考虑了肿瘤与相关器官之间的关系。为了实现对检索到的多模式图像的有效人工解释,我们还提供了一个用户界面,该用户界面在复杂的多模式图像旁边显示图形抽象。 \ ud \ ud我们的结果表明,根据器官内的肿瘤位置检索图像时,我们的方法获得了很高的精度。通过用户调查对我们提出的UI设计进行的评估显示,它提高了用户解释和理解检索到的PET-CT图像之间相似性的能力。本论文的工作通过实现一种用于检索多模态医学图像的新颖方法,使当前的技术水平得以提高。

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    Kumar, Ashnil;

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  • 年度 2013
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