CVLGMay 8, 2024

Proportion Estimation by Masked Learning from Label Proportion

arXiv:2405.04815v13 citationsh-index: 19DALI@MICCAI
Originality Synthesis-oriented
AI Analysis

This work addresses a domain-specific problem in medical imaging for immunotherapy diagnostics, with incremental improvements.

The paper tackled the problem of estimating PD-L1 proportion from pathological images with limited cell-level annotations, achieving the best performance in comparisons.

The PD-L1 rate, the number of PD-L1 positive tumor cells over the total number of all tumor cells, is an important metric for immunotherapy. This metric is recorded as diagnostic information with pathological images. In this paper, we propose a proportion estimation method with a small amount of cell-level annotation and proportion annotation, which can be easily collected. Since the PD-L1 rate is calculated from only `tumor cells' and not using `non-tumor cells', we first detect tumor cells with a detection model. Then, we estimate the PD-L1 proportion by introducing a masking technique to `learning from label proportion.' In addition, we propose a weighted focal proportion loss to address data imbalance problems. Experiments using clinical data demonstrate the effectiveness of our method. Our method achieved the best performance in comparisons.

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