IVCVSep 11, 2019

Tomographic reconstruction to detect evolving structures

arXiv:1909.05686v1
Originality Incremental advance
AI Analysis

This work addresses the challenge of monitoring evolving structures like diseases or surgical changes with limited measurements, offering incremental improvements in reconstruction techniques for medical imaging.

The paper tackles the problem of tomographic reconstruction from sparse measurements by leveraging prior longitudinal scans to reduce the number of needed views, proposing unweighted and weighted prior-based methods to track changes and observe new structures, with validation on simulated and real data showing effective reconstruction of both old and new structures.

The need for tomographic reconstruction from sparse measurements arises when the measurement process is potentially harmful, needs to be rapid, or is uneconomical. In such cases, information from previous longitudinal scans of the same object helps to reconstruct the current object while requiring significantly fewer updating measurements. Our work is based on longitudinal data acquisition scenarios where we wish to study new changes that evolve within an object over time, such as in repeated scanning for disease monitoring, or in tomography-guided surgical procedures. While this is easily feasible when measurements are acquired from a large number of projection views, it is challenging when the number of views is limited. If the goal is to track the changes while simultaneously reducing sub-sampling artefacts, we propose (1) acquiring measurements from a small number of views and using a global unweighted prior-based reconstruction. If the goal is to observe details of new changes, we propose (2) acquiring measurements from a moderate number of views and using a more involved reconstruction routine. We show that in the latter case, a weighted technique is necessary in order to prevent the prior from adversely affecting the reconstruction of new structures that are absent in any of the earlier scans. The reconstruction of new regions is safeguarded from the bias of the prior by computing regional weights that moderate the local influence of the priors. We are thus able to effectively reconstruct both the old and the new structures in the test. In addition to testing on simulated data, we have validated the efficacy of our method on real tomographic data. The results demonstrate the use of both unweighted and weighted priors in different scenarios.

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