TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/End-to-End $n$-ary Relation Extraction for Combination Dru...

End-to-End $n$-ary Relation Extraction for Combination Drug Therapies

Yuhang Jiang, Ramakanth Kavuluru

2023-03-29Relation ExtractionDrug–drug Interaction ExtractionRelation Classification
PaperPDFCode(official)

Abstract

Combination drug therapies are treatment regimens that involve two or more drugs, administered more commonly for patients with cancer, HIV, malaria, or tuberculosis. Currently there are over 350K articles in PubMed that use the "combination drug therapy" MeSH heading with at least 10K articles published per year over the past two decades. Extracting combination therapies from scientific literature inherently constitutes an $n$-ary relation extraction problem. Unlike in the general $n$-ary setting where $n$ is fixed (e.g., drug-gene-mutation relations where $n=3$), extracting combination therapies is a special setting where $n \geq 2$ is dynamic, depending on each instance. Recently, Tiktinsky et al. (NAACL 2022) introduced a first of its kind dataset, CombDrugExt, for extracting such therapies from literature. Here, we use a sequence-to-sequence style end-to-end extraction method to achieve an F1-Score of $66.7\%$ on the CombDrugExt test set for positive (or effective) combinations. This is an absolute $\approx 5\%$ F1-score improvement even over the prior best relation classification score with spotted drug entities (hence, not end-to-end). Thus our effort introduces a state-of-the-art first model for end-to-end extraction that is already superior to the best prior non end-to-end model for this task. Our model seamlessly extracts all drug entities and relations in a single pass and is highly suitable for dynamic $n$-ary extraction scenarios.

Results

TaskDatasetMetricValueModel
Information ExtractionDrug Combination Extraction DatasetExact Match F1 ("Any Combination")71.1Seq2Rel (w/PubMedBERT)
Information ExtractionDrug Combination Extraction DatasetExact Match F1 ("Positive Combination")66.7Seq2Rel (w/PubMedBERT)

Related Papers

DocIE@XLLM25: In-Context Learning for Information Extraction using Fully Synthetic Demonstrations2025-07-08Multiple Streams of Relation Extraction: Enriching and Recalling in Transformers2025-06-25Chaining Event Spans for Temporal Relation Grounding2025-06-17Summarization for Generative Relation Extraction in the Microbiome Domain2025-06-10Conservative Bias in Large Language Models: Measuring Relation Predictions2025-06-09Comparative Analysis of AI Agent Architectures for Entity Relationship Classification2025-06-03CREFT: Sequential Multi-Agent LLM for Character Relation Extraction2025-05-30Generating Diverse Training Samples for Relation Extraction with Large Language Models2025-05-29