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Hybrid Retrieval-Generation Reinforced Agent for Medical Image Report Generation

About

Generating long and coherent reports to describe medical images poses challenges to bridging visual patterns with informative human linguistic descriptions. We propose a novel Hybrid Retrieval-Generation Reinforced Agent (HRGR-Agent) which reconciles traditional retrieval-based approaches populated with human prior knowledge, with modern learning-based approaches to achieve structured, robust, and diverse report generation. HRGR-Agent employs a hierarchical decision-making procedure. For each sentence, a high-level retrieval policy module chooses to either retrieve a template sentence from an off-the-shelf template database, or invoke a low-level generation module to generate a new sentence. HRGR-Agent is updated via reinforcement learning, guided by sentence-level and word-level rewards. Experiments show that our approach achieves the state-of-the-art results on two medical report datasets, generating well-balanced structured sentences with robust coverage of heterogeneous medical report contents. In addition, our model achieves the highest detection accuracy of medical terminologies, and improved human evaluation performance.

Christy Y. Li, Xiaodan Liang, Zhiting Hu, Eric P. Xing• 2018

Related benchmarks

TaskDatasetResultRank
Radiology Report GenerationIU-Xray (test)
ROUGE-L0.322
77
Medical Report GenerationIU-Xray (test)
ROUGE-L0.322
56
Findings GenerationIU-Xray (test)
BLEU-143.8
47
CXR-to-report generationOPENI (test)
BLEU-10.438
18
Medical Report GenerationOpen-i
CIDEr0.343
17
Findings GenerationCX-CHR (test)
BLEU-10.673
10
Medical Report GenerationIU-Xray (evaluation)
BLEU-10.44
7
Abnormality Detection (Findings)CX-CHR (test)
Precision29.2
4
Abnormality Detection (Findings)IU-Xray (test)
Precision12.1
4
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