Uncertainty Estimation for Dual View X-ray Mammographic Image Registration Using Deep Ensembles.

William C Walton, Seung-Jun Kim
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Abstract

Techniques are developed for generating uncertainty estimates for convolutional neural network (CNN)-based methods for registering the locations of lesions between the craniocaudal (CC) and mediolateral oblique (MLO) mammographic X-ray image views. Multi-view lesion correspondence is an important task that clinicians perform for characterizing lesions during routine mammographic exams. Automated registration tools can aid in this task, yet if the tools also provide confidence estimates, they can be of greater value to clinicians, especially in cases involving dense tissue where lesions may be difficult to see. A set of deep ensemble-based techniques, which leverage a negative log-likelihood (NLL)-based cost function, are implemented for estimating uncertainties. The ensemble architectures involve significant modifications to an existing CNN dual-view lesion registration algorithm. Three architectural designs are evaluated, and different ensemble sizes are compared using various performance metrics. The techniques are tested on synthetic X-ray data, real 2D X-ray data, and slices from real 3D X-ray data. The ensembles generate covariance-based uncertainty ellipses that are correlated with registration accuracy, such that the ellipse sizes can give a clinician an indication of confidence in the mapping between the CC and MLO views. The results also show that the ellipse sizes can aid in improving computer-aided detection (CAD) results by matching CC/MLO lesion detects and reducing false alarms from both views, adding to clinical utility. The uncertainty estimation techniques show promise as a means for aiding clinicians in confidently establishing multi-view lesion correspondence, thereby improving diagnostic capability.

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利用深度集合进行双视角 X 射线乳腺摄影图像注册的不确定性估计。
本研究开发的技术可为基于卷积神经网络(CNN)的方法生成不确定性估计值,这些方法用于在颅尾(CC)和内外侧斜(MLO)乳腺 X 射线图像视图之间登记病变位置。多视图病灶对应是临床医生在常规乳腺 X 射线检查中确定病灶特征的一项重要任务。自动配准工具可以帮助完成这项任务,但如果这些工具还能提供置信度估计,就能为临床医生带来更大的价值,尤其是在涉及致密组织的病例中,因为在这些病例中病变可能难以被看到。我们利用基于负对数似然(NLL)的成本函数,实施了一套基于深度集合的技术来估计不确定性。这些集合架构涉及对现有 CNN 双视角病变配准算法的重大修改。对三种架构设计进行了评估,并使用各种性能指标对不同的集合规模进行了比较。这些技术在合成 X 光数据、真实 2D X 光数据和真实 3D X 光数据切片上进行了测试。集合生成的基于协方差的不确定性椭圆与配准精度相关,因此椭圆的大小可以为临床医生提供 CC 和 MLO 视图之间映射的可信度指示。研究结果还表明,椭圆的大小可以通过匹配 CC/MLO 病灶检测和减少两个视图的误报来帮助改善计算机辅助检测 (CAD) 结果,从而增加临床实用性。不确定性估计技术有望帮助临床医生自信地建立多视图病变对应关系,从而提高诊断能力。
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