深度共形监督:利用中间特征进行稳健的不确定性量化。

Amir M Vahdani, Shahriar Faghani
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引用次数: 0

摘要

可信性对于临床环境中的人工智能(AI)模型至关重要,而可信性人工智能的一个基本方面就是不确定性量化(UQ)。共形预测作为一种稳健的不确定性量化(UQ)框架,作为提高模型可信度的重要工具,受到越来越多的关注。保形预测的不保形得分计算方法是一个活跃的研究领域。我们提出了深度保形监督(DCS),它利用深度监督的中间输出,通过基于每个阶段平均校准误差倒数的加权平均来计算不符合得分。我们在两个公开可用的医学图像分类数据集上对我们的方法进行了基准测试:肺炎胸片数据集和 2019 RSNA 颅内出血数据集的预处理版本。我们的方法在这两个数据集上的平均覆盖误差分别为 16e-4 (CI: 1e-4, 41e-4) 和 5e-4 (CI: 1e-4, 10e-4),而基线平均覆盖误差分别为 28e-4 (CI: 2e-4, 64e-4) 和 21e-4 (CI: 8e-4, 3e-4) (p
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Deep Conformal Supervision: Leveraging Intermediate Features for Robust Uncertainty Quantification.

Trustworthiness is crucial for artificial intelligence (AI) models in clinical settings, and a fundamental aspect of trustworthy AI is uncertainty quantification (UQ). Conformal prediction as a robust uncertainty quantification (UQ) framework has been receiving increasing attention as a valuable tool in improving model trustworthiness. An area of active research is the method of non-conformity score calculation for conformal prediction. We propose deep conformal supervision (DCS), which leverages the intermediate outputs of deep supervision for non-conformity score calculation, via weighted averaging based on the inverse of mean calibration error for each stage. We benchmarked our method on two publicly available datasets focused on medical image classification: a pneumonia chest radiography dataset and a preprocessed version of the 2019 RSNA Intracranial Hemorrhage dataset. Our method achieved mean coverage errors of 16e-4 (CI: 1e-4, 41e-4) and 5e-4 (CI: 1e-4, 10e-4) compared to baseline mean coverage errors of 28e-4 (CI: 2e-4, 64e-4) and 21e-4 (CI: 8e-4, 3e-4) on the two datasets, respectively (p < 0.001 on both datasets). Based on our findings, the baseline results of conformal prediction already exhibit small coverage errors. However, our method shows a significant improvement on coverage error, particularly noticeable in scenarios involving smaller datasets or when considering smaller acceptable error levels, which are crucial in developing UQ frameworks for healthcare AI applications.

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