Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts

Schmidt D, Cimiano P (2025)
Frontiers in Artificial Intelligence 7: 14 Seiten.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
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Abstract / Bemerkung

**Background**

In the field of structured information extraction, there are typically semantic and syntactic constraints on the output of information extraction (IE) systems. These constraints, however, can typically not be guaranteed using standard (fine-tuned) encoder-decoder architectures. This has led to the development of constrained decoding approaches which allow, e.g., to specify constraints in form of context-free grammars. An open question is in how far an IE system can be effectively guided by a domain-specific grammar to ensure that the output structures follow the requirements of a certain domain data model.

**Methods**

In this work we experimentally investigate the influence of grammar-constrained decoding as well as pointer generators on the performance of a domain-specific information extraction system. For this, we consider fine-tuned encoder-decoder models, Longformer and Flan-T5 in particular, and experimentally investigate whether the addition of grammar-constrained decoding and pointer generators improve information extraction results. Toward this goal, we consider the task of inducing structured representations from abstracts describing clinical trials, relying on the C-TrO ontology to semantically describe the clinical trials and their results. We frame the task as a slot filling problem where certain slots of templates need to be filled with token sequences occurring in the input text. We use a dataset comprising 211 annotated clinical trial abstracts about type 2 diabetes and glaucoma for training and evaluation. Our focus is on settings in which the available training data is in the order of a few hundred training examples, which we consider as a low-resource setting .

**Results**

In all our experiments we could demonstrate the positive impact of grammar-constrained decoding, with an increase in F 1 score of pp 0.351 (absolute score 0.413) and pp 0.425 (absolute score 0.47) for the best-performing models on type 2 diabetes and glaucoma datasets, respectively. The addition of the pointer generators had a detrimental impact on the results, decreasing F 1 scores by pp 0.15 (absolute score 0.263) and pp 0.198 (absolute score 0.272) for the best-performing pointer generator models on type 2 diabetes and glaucoma datasets, respectively.

**Conclusion**

The experimental results indicate that encoder-decoder models used for structure prediction for information extraction tasks in low-resource settings clearly benefit from grammar-constrained decoding guiding the output generation. In contrast, the evaluated pointer generator models decreased the performance drastically in some cases. Moreover, the performance of the pointer models appears to depend both on the used base model as well as the function used for aggregating the attention values. How the size of large language models affects the performance benefit of grammar-constrained decoding remains to be more structurally investigated in future work.

Stichworte
grammar-constrained decoding; structured information extraction; clinical trials; deep learning; generative large language models; PICO; evidence-based medicine
Erscheinungsjahr
2025
Zeitschriftentitel
Frontiers in Artificial Intelligence
Band
7
Seite(n)
14 Seiten
eISSN
2624-8212
Finanzierungs-Informationen
Open-Access-Publikationskosten wurden durch die Universität Bielefeld gefördert.
Page URI
https://pub.uni-bielefeld.de/record/3000030

Zitieren

Schmidt D, Cimiano P. Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts. Frontiers in Artificial Intelligence. 2025;7:14 Seiten.
Schmidt, D., & Cimiano, P. (2025). Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts. Frontiers in Artificial Intelligence, 7, 14 Seiten. https://doi.org/10.3389/frai.2024.1406857
Schmidt, David, and Cimiano, Philipp. 2025. “Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts”. Frontiers in Artificial Intelligence 7: 14 Seiten.
Schmidt, D., and Cimiano, P. (2025). Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts. Frontiers in Artificial Intelligence 7, 14 Seiten.
Schmidt, D., & Cimiano, P., 2025. Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts. Frontiers in Artificial Intelligence, 7, p 14 Seiten.
D. Schmidt and P. Cimiano, “Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts”, Frontiers in Artificial Intelligence, vol. 7, 2025, pp. 14 Seiten.
Schmidt, D., Cimiano, P.: Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts. Frontiers in Artificial Intelligence. 7, 14 Seiten (2025).
Schmidt, David, and Cimiano, Philipp. “Grammar-constrained decoding for structured information extraction with fine-tuned generative models applied to clinical trial abstracts”. Frontiers in Artificial Intelligence 7 (2025): 14 Seiten.
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