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使用半自动方法提高健康信息消费者对文本难度的感知及实际文本难度。

Improving perceived and actual text difficulty for health information consumers using semi-automated methods.

作者信息

Leroy Gondy, Endicott James E, Mouradi Obay, Kauchak David, Just Melissa L

机构信息

Claremont Graduate University, Claremont, CA, USA.

出版信息

AMIA Annu Symp Proc. 2012;2012:522-31. Epub 2012 Nov 3.


DOI:
PMID:23304324
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3540563/
Abstract

We are developing algorithms for semi-automated simplification of medical text. Based on lexical and grammatical corpus analysis, we identified a new metric, term familiarity, to help estimate text difficulty. We developed an algorithm that uses term familiarity to identify difficult text and select easier alternatives from lexical resources such as WordNet, UMLS and Wiktionary. Twelve sentences were simplified to measure perceived difficulty using a 5-point Likert scale. Two documents were simplified to measure actual difficulty by posing questions with and without the text present (information understanding and retention). We conducted a user study by inviting participants (N=84) via Amazon Mechanical Turk. There was a significant effect of simplification on perceived difficulty (p<.001). We also saw slightly improved understanding with better question-answering for simplified documents but the effect was not significant (p=.097). Our results show how term familiarity is a valuable component in simplifying text in an efficient and scalable manner.

摘要

我们正在开发用于医学文本半自动简化的算法。基于词汇和语法语料库分析,我们确定了一个新的指标——术语熟悉度,以帮助评估文本难度。我们开发了一种算法,该算法利用术语熟悉度来识别难理解的文本,并从诸如WordNet、UMLS和维基词典等词汇资源中选择更简单的替代词。使用5点李克特量表对12个句子进行简化以衡量感知难度。通过在有文本和无文本的情况下提出问题(信息理解和保留)来简化两份文档以衡量实际难度。我们通过亚马逊土耳其机器人平台邀请参与者(N = 84)进行了一项用户研究。简化对感知难度有显著影响(p <.001)。我们还发现,简化后的文档在问答方面有稍好的理解,但效果不显著(p =.097)。我们的结果表明,术语熟悉度是高效且可扩展地简化文本的一个有价值的组成部分。

相似文献

[1]
Improving perceived and actual text difficulty for health information consumers using semi-automated methods.

AMIA Annu Symp Proc. 2012

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[2]
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[3]
The Role of Surface, Semantic and Grammatical Features on Simplification of Spanish Medical Texts: A User Study.

AMIA Annu Symp Proc. 2018-4-16

[4]
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[5]
Measuring Text Difficulty Using Parse-Tree Frequency.

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[6]
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J Biomed Semantics. 2016-9-26

[7]
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Am J Orthop (Belle Mead NJ). 2016

[8]
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AMIA Annu Symp Proc. 2014-11-14

[9]
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IEEE J Biomed Health Inform. 2015-7

[10]
SimConcept: A Hybrid Approach for Simplifying Composite Named Entities in Biomedicine.

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本文引用的文献

[1]
Term Familiarity to indicate Perceived and Actual Difficulty of Text in Medical Digital Libraries.

Digit Libraries Cult Herit Knowl Dissem Future Creat (2011). 2011-10

[2]
A semantic and syntactic text simplification tool for health content.

AMIA Annu Symp Proc. 2010-11-13

[3]
A validation of Amazon Mechanical Turk for the collection of acceptability judgments in linguistic theory.

Behav Res Methods. 2011-3

[4]
The relationship between health literacy and knowledge improvement after a multimedia type 2 diabetes education program.

Patient Educ Couns. 2009-4-22

[5]
Health literacy and self-efficacy for participating in colorectal cancer screening: The role of information processing.

Patient Educ Couns. 2009-4-21

[6]
Communicating hospital infection data to the public: a study of consumer responses and preferences.

Am J Med Qual. 2009

[7]
Comprehending technical texts: predicting and defining unfamiliar terms.

AMIA Annu Symp Proc. 2006

[8]
Relationship between health care costs and very low literacy skills in a medically needy and indigent Medicaid population.

J Am Board Fam Pract. 2004

[9]
Development of a brief test to measure functional health literacy.

Patient Educ Couns. 1999-9

[10]
Use of the Internet and e-mail for health care information: results from a national survey.

JAMA. 2003-5-14

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