Differentiable Multi-Agent Actor-Critic for Multi-Step Radiology Report Summarization

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Abstract

The IMPRESSIONS section of a radiology report about an imaging study is a summary of the radiologist's reasoning and conclusions, and it also aids the referring physician in confirming or excluding certain diagnoses. A cascade of tasks are required to automatically generate an abstractive summary of the typical information-rich radiology report. These tasks include acquisition of salient content from the report and generation of a concise, easily consumable IMPRESSIONS section. Prior research on radiology report summarization has focused on single-step end-to-end models - which subsume the task of salient content acquisition. To fully explore the cascade structure and explainability of radiology report summarization, we introduce two innovations. First, we design a two-step approach: extractive summarization followed by abstractive summarization. Second, we additionally break down the extractive part into two independent tasks: extraction of salient (1) sentences and (2) keywords. Experiments on English radiology reports from two clinical sites show our novel approach leads to a more precise summary compared to single-step and to two-step-with-single-extractive-process baselines with an overall improvement in F1 score of 3-4%.

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APA

Karn, S. K., Liu, N., Schütze, H., & Farri, O. (2022). Differentiable Multi-Agent Actor-Critic for Multi-Step Radiology Report Summarization. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (Vol. 1, pp. 1542–1553). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.acl-long.109

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