Metric-Guided Conformal Bounds for Probabilistic Image Reconstruction.

ArXiv Pub Date : 2025-03-04
Matt Y Cheung, Tucker J Netherton, Laurence E Court, Ashok Veeraraghavan, Guha Balakrishnan
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Abstract

Modern deep learning reconstruction algorithms generate impressively realistic scans from sparse inputs, but can often produce significant inaccuracies. This makes it difficult to provide statistically guaranteed claims about the true state of a subject from scans reconstructed by these algorithms. In this study, we propose a framework for computing provably valid prediction bounds on claims derived from probabilistic black-box image reconstruction algorithms. The key insights behind our framework are to represent reconstructed scans with a derived clinical metric of interest, and to calibrate bounds on the ground truth metric with conformal prediction (CP) using a prior calibration dataset. These bounds convey interpretable feedback about the subject's state, and can also be used to retrieve nearest-neighbor reconstructed scans for visual inspection. We demonstrate the utility of this framework on sparse-view computed tomography (CT) for fat mass quantification and radiotherapy planning tasks. Results show that our framework produces bounds with better semantical interpretation than conventional pixel-based bounding approaches. Furthermore, we can flag dangerous outlier reconstructions that look plausible but have statistically unlikely metric values.

通过共形预测实现公制引导的图像重构边界
机器学习领域的最新进展催生了新型成像系统和算法,以解决棘手的问题。评估这些系统和算法的可信度以及了解如何在测试时安全地部署这些系统和算法仍然是一个重要的开放性问题。我们提出了一种方法,利用保形预测,根据下游指标的预测区间,检索重建的上/下限和统计离群值/异常值。我们将该方法应用于稀疏视图 CT 的下游放疗规划,结果表明:1)公制引导的边界对下游指标具有有效的覆盖范围,而传统的像素引导边界则没有;2)公制引导和像素引导方法的上/下限在解剖学上存在差异。我们的工作为更有意义的重建边界铺平了道路。代码见 https://github.com/matthewyccheung/conformal-metric。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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