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Information-theoretic CAD system in mammography: entropy-based indexing for computational efficiency and robust performance.

机译:乳腺摄影中的信息理论CAD系统:基于熵的索引,可提高计算效率和性能。

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We have previously presented a knowledge-based computer-assisted detection (KB-CADe) system for the detection of mammographic masses. The system is designed to compare a query mammographic region with mammographic templates of known ground truth. The templates are stored in an adaptive knowledge database. Image similarity is assessed with information theoretic measures (e.g., mutual information) derived directly from the image histograms. A previous study suggested that the diagnostic performance of the system steadily improves as the knowledge database is initially enriched with more templates. However, as the database increases in size, an exhaustive comparison of the query case with each stored template becomes computationally burdensome. Furthermore, blind storing of new templates may result in redundancies that do not necessarily improve diagnostic performance. To address these concerns we investigated an entropy-based indexing scheme for improving the speed of analysis and for satisfying databasestorage restrictions without compromising the overall diagnostic performance of our KB-CADe system. The indexing scheme was evaluated on two different datasets as (i) a search mechanism to sort through the knowledge database, and (ii) a selection mechanism to build a smaller, concise knowledge database that is easier to maintain but still effective. There were two important findings in the study. First, entropy-based indexing is an effective strategy to identify fast a subset of templates that are most relevant to a given query. Only this subset could be analyzed in more detail using mutual information for optimized decision making regarding the query. Second, a selective entropy-based deposit strategy may be preferable where only high entropy cases are maintained in the knowledge database. Overall, the proposed entropy-based indexing scheme was shown to reduce the computational cost of our KB-CADe system by 55% to 80% while maintaining the system's diagnostic performance.
机译:我们先前已经提出了一种基于知识的计算机辅助检测(KB-CADe)系统,用于检测乳房X线摄影肿块。该系统设计为将查询乳房X线照相区域与已知地面真相的乳房X射线照相模板进行比较。模板存储在自适应知识数据库中。使用直接从图像直方图得出的信息理论量度(例如互信息)来评估图像相似度。先前的研究表明,随着知识数据库最初充斥着更多的模板,系统的诊断性能将稳步提高。但是,随着数据库大小的增加,将查询案例与每个存储的模板进行详尽的比较在计算上变得很繁重。此外,新模板的盲目存储可能会导致冗余,但不一定会提高诊断性能。为了解决这些问题,我们研究了一种基于熵的索引方案,该方案可提高分析速度并满足数据库存储限制,而不会影响KB-CADe系统的整体诊断性能。索引方案是在两个不同的数据集上进行评估的:(i)一种搜索机制,用于对知识数据库进行分类;(ii)选择机制,用于构建更小,简洁的知识数据库,该数据库易于维护,但仍然有效。该研究有两个重要发现。首先,基于熵的索引是一种快速识别与给定查询最相关的模板子集的有效策略。只能使用互信息来更详细地分析此子集,以优化有关查询的决策。其次,在知识数据库中仅保留高熵情况的情况下,基于选择性熵的存储策略可能更可取。总体而言,事实证明,所提出的基于熵的索引方案可将我们的KB-CADe系统的计算成本降低55%至80%,同时保持系统的诊断性能。

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