Litcius/Paper detail

Machine understanding surgical actions from intervention procedure textbooks

Marco Bombieri, Marco Rospocher, Simone Paolo Ponzetto, Paolo Fiorini

2022Computers in Biology and Medicine22 citationsDOIOpen Access PDF

Abstract

The automatic extraction of procedural surgical knowledge from surgery manuals, academic papers or other high-quality textual resources, is of the utmost importance to develop knowledge-based clinical decision support systems, to automatically execute some procedure's step or to summarize the procedural information, spread throughout the texts, in a structured form usable as a study resource by medical students. In this work, we propose a first benchmark on extracting detailed surgical actions from available intervention procedure textbooks and papers. We frame the problem as a Semantic Role Labeling task. Exploiting a manually annotated dataset, we apply different Transformer-based information extraction methods. Starting from RoBERTa and BioMedRoBERTa pre-trained language models, we first investigate a zero-shot scenario and compare the obtained results with a full fine-tuning setting. We then introduce a new ad-hoc surgical language model, named SurgicBERTa, pre-trained on a large collection of surgical materials, and we compare it with the previous ones. In the assessment, we explore different dataset splits (one in-domain and two out-of-domain) and we investigate also the effectiveness of the approach in a few-shot learning scenario. Performance is evaluated on three correlated sub-tasks: predicate disambiguation, semantic argument disambiguation and predicate-argument disambiguation. Results show that the fine-tuning of a pre-trained domain-specific language model achieves the highest performance on all splits and on all sub-tasks. All models are publicly released.

Topics & Concepts

Computer scienceNatural language processingArtificial intelligencePredicate (mathematical logic)USableHeuristicsTransformerInformation retrievalMachine learningMultimediaProgramming languageQuantum mechanicsOperating systemVoltagePhysicsTopic ModelingBiomedical Text Mining and OntologiesNatural Language Processing Techniques