图像配准
四分位数
地标
离群值
分割
人工智能
乳腺癌
计算机科学
标准差
乳房成像
医学
计算机视觉
模式识别(心理学)
乳腺摄影术
数学
图像(数学)
癌症
统计
置信区间
内科学
作者
Kai Geißler,Ani Ambroladze,Nils Papenberg,Tom L. Koller,Heba Amer,Eva Maria Fallenberg,Seda Aladağ Kurt,Michael Ingrisch,Horst K. Hahn
摘要
Recent studies indicate that malignant breast lesions can be predicted from structural changes in prior exams of preventive breast MRI examinations. Due to non-rigid deformation between studies, spatial correspondences between structures in two consecutive studies are lost. Thus, deformable image registration can contribute to predicting individual cancer risks. This study evaluates a registration approach based on a novel breast mask segmentation and non-linear image registration based on data from 5 different sites. The landmark error (mean ± standard deviation [1st quartile, 3rd quartile]), annotated by three radiologists, is 2.9 ± 2.8 [1.3, 3.2] mm when leaving out two outlier cases from the evaluation for which the registration failed completely. We assess the inter-observer variabilities of keypoint errors and find an error of 3.6 ± 4.7 [1.6, 4.0] mm, 4.4 ± 4.9 [1.8, 4.8] mm, and 3.8 ± 4.0 [1.7, 4.1] mm when comparing each radiologist to the mean keypoints of the other two radiologists. Our study shows that the current state of the art in registration is well suited to recover spatial correspondences of structures in cancerous and non-cancerous cases, despite the high level of difficulty of this task.
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