Semantic Textual Similarity Assessment in Chest X-ray Reports Using a Domain-Specific Cosine-Based Metric
Sayeh Gholipour Picha, Dawood Al Chanti, Alice Caplier

TL;DR
This paper introduces a domain-specific cosine-based metric for evaluating semantic similarity in Chest X-ray reports, improving the assessment of report quality and aiding medical report generation models.
Contribution
A novel semantic similarity metric tailored for medical reports that outperforms conventional NLP metrics in medical contexts.
Findings
The proposed metric aligns well with clinical relevance.
It provides more meaningful scores than traditional metrics.
Validated on state-of-the-art report generation models.
Abstract
Medical language processing and deep learning techniques have emerged as critical tools for improving healthcare, particularly in the analysis of medical imaging and medical text data. These multimodal data fusion techniques help to improve the interpretation of medical imaging and lead to increased diagnostic accuracy, informed clinical decisions, and improved patient outcomes. The success of these models relies on the ability to extract and consolidate semantic information from clinical text. This paper addresses the need for more robust methods to evaluate the semantic content of medical reports. Conventional natural language processing approaches and metrics are initially designed for considering the semantic context in the natural language domain and machine translation, often failing to capture the complex semantic meanings inherent in medical content. In this study, we introduce…
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Taxonomy
TopicsTopic Modeling · Biomedical Text Mining and Ontologies · Radiomics and Machine Learning in Medical Imaging
MethodsALIGN
