医学领域细粒度句子可读性的系统研究。

Chao Jiang, Wei Xu
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引用次数: 0

摘要

医学文献是出了名的难读。正确测量它们的可读性是使它们更易于访问的第一步。在本文中,我们提出了一个系统的研究细粒度可读性测量在医学领域在句子水平和跨度水平。我们引入了一个新的数据集MedReadMe,它由4520个句子的手动注释可读性评级和细粒度复杂跨度注释组成,具有两个新颖的“Google-Easy”和“Google-Hard”类别。它支持我们的定量分析,涵盖650个语言特征和自动复杂的单词和术语识别。通过我们的高质量注释,我们对医学领域的几个最先进的句子级可读性指标进行了基准测试和改进,其中包括使用最近开发的大型语言模型(llm)的无监督、有监督和基于提示的方法。通过我们的细粒度复杂跨度标注,我们发现在现有的可读性公式中添加一个特征,即捕获术语跨度的数量,可以显著提高它们与人类判断的相关性。我们将公开发布数据集和代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MedReadMe: A Systematic Study for Fine-grained Sentence Readability in Medical Domain.

Medical texts are notoriously challenging to read. Properly measuring their readability is the first step towards making them more accessible. In this paper, we present a systematic study on fine-grained readability measurements in the medical domain at both sentence-level and span-level. We introduce a new dataset MedReadMe, which consists of manually annotated readability ratings and fine-grained complex span annotation for 4,520 sentences, featuring two novel "Google-Easy" and "Google-Hard" categories. It supports our quantitative analysis, which covers 650 linguistic features and automatic complex word and jargon identification. Enabled by our high-quality annotation, we benchmark and improve several state-of-the-art sentence-level readability metrics for the medical domain specifically, which include unsupervised, supervised, and prompting-based methods using recently developed large language models (LLMs). Informed by our fine-grained complex span annotation, we find that adding a single feature, capturing the number of jargon spans, into existing readability formulas can significantly improve their correlation with human judgments. We will publicly release the dataset and code.

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