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Knowledge Transfer across Breast CancerScreening Modalities: A Pilot Study Using an Information-Theoretic CADe System for Mass Detection

机译:跨越乳房癌细的知识转移方式:使用信息 - 理论色调系统进行质量检测的试验研究

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We have performed a series of experiments to assess whether a featureless, knowledge-based CADe system that relies on information theoretic principles is capable of transferring knowledge across cases acquired with different imaging modalities. Typical feature-based CADe systems are developed and carefully optimized for a specific imaging modality and platform, namely for screen-film mammograms (SFMs) digitized with a specific digitizer, or for full-field digital mammograms (FFDMs), or for the newly introduced digital breast tomosynthesis (DBT) modality. Multiplatform application of such CADe systems is often limited due to image processing steps that are tailored to the imaging modality and acquisition protocol. It is desirable however to develop CADe systems with the ability to adapt to a dynamically changing environment (i.e., imaging modality) and provide an accurate decision while capitalizing on knowledge acquired at different, yet related environments. Working towards this goal, we present a pilot study using a knowledge-based CADe system for mass detection that uses information theory to assess the similarity between a query and a knowledge case. We evaluate the system's ability to transfer knowledge across three imaging modalities (SFMs digitized with two different digitizers, FFDMs, and DBTs) when performing the detection task. Overall our study showed that although blind translation of the system in a new modality for which no prior knowledge exists results in reduced performance, the system is still able to operate at a very decent level. When the system operated with a knowledge database of mixed cases, its performance was robust and comparable to what observed independently.
机译:我们已经执行了一系列实验,以评估是否依赖于信息理论原则的无特征,知识的CADE系统,能够在以不同的成像方式获取的情况下转移知识。为特定的成像模型和平台开发并仔细优化了基于特征的CADE系统,即用于使用特定数字化器数字化的屏幕映射(SFMS),或用于全场数字乳房X光图(FFDMS),或用于新介绍的数字乳房Tomosynthesis(DBT)模态。由于对成像模态和采集协议量身定制的图像处理步骤,这种CADE系统的多平台应用通常是有限的。然而,期望开发CADE系统,其能够适应动态变化的环境(即,成像模型)并在大写在不同但相关环境中获取的知识时提供准确的决定。努力实现这一目标,我们使用基于知识的CADE系统进行了试验研究,用于批量检测,该系统使用信息理论来评估查询和知识案件之间的相似性。我们在执行检测任务时评估系统跨三个成像模态的知识转移知识的能力(以两位不同的数字化器,FFDMS和DBTs数字化)。总的来说我们的研究表明,尽管系统在没有现有知识存在的新模式中盲目翻译,但是系统仍然能够以非常体面的方式运行。当系统使用混合案例的知识数据库操作时,其性能是强大的,并且与独立观察到的内容具有稳健性。

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