Detection and localization of landmarks in the lower extremities using an automatically learned conditional random field

Alexander Oliver Mader, Cristian Lorenz, Martin Bergtholdt, Jens von Berg, Hauke Schramm, Jan Modersitzki, Carsten Meyer

Abstract

The detection and localization of single or multiple landmarks is a crucial task in medical imaging. It is often required as initialization for other tasks like segmentation or registration. A common approach to localize multiple landmarks is to exploit their spatial correlations, e.g., by using a conditional random field (CRF) to incorporate geometric information between landmark pairs. This CRF is usually applied to resolve ambiguities of a localizer, e.g., a random forest or a deep neural network. In this paper, we apply a random forest/CRF combination to the task of jointly detecting and localizing 6 landmarks in the lower extremities, taken from a dataset of 660 X-ray images. The dataset is challenging since a significant number of images does not show all the landmarks. Furthermore, 11.3% of the target landmarks are altered by prostheses or pathologies. To account for this, we introduce a “missing” label for each landmark (represented by a node in the CRF). Moreover, instead of manually specifying the CRF model by selecting suitable potential functions and the graph topology, we suggest to automatically optimize both in a learning framework. Specifically, we define a pool of potential functions and learn their CRF weights (relative contributions), in addition to the potential values in case of missing landmarks. Potentials with a low weight are removed, thus optimizing the graph topology. Detailed evaluations on our database show the feasibility of our approach. Our algorithm removed on average 23 of the initial 51 CRF potentials, and correctly detected and localized (within 10 mm tolerance) on average 92.8% of the landmarks, with individual rates ranging from 90.0% to 97.4%.

Original languageEnglish
Title of host publicationLecture Notes in Computer Science
PublisherSpringer Verlag
Publication date2017
Pages64-75
DOIs
Publication statusPublished - 2017

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