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Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care

BACKGROUND: Consumer-generated content, such as postings on social media websites, can serve as an ideal source of information for studying health care from a consumer’s perspective. However, consumer-generated content on health care topics often contains spelling errors, which, if not corrected, wi...

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Detalles Bibliográficos
Autores principales: Zhou, Xiaofang, Zheng, An, Yin, Jiaheng, Chen, Rudan, Zhao, Xianyang, Xu, Wei, Cheng, Wenqing, Xia, Tian, Lin, Simon
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Gunther Eysenbach 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4705358/
https://www.ncbi.nlm.nih.gov/pubmed/26232246
http://dx.doi.org/10.2196/medinform.4211
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author Zhou, Xiaofang
Zheng, An
Yin, Jiaheng
Chen, Rudan
Zhao, Xianyang
Xu, Wei
Cheng, Wenqing
Xia, Tian
Lin, Simon
author_facet Zhou, Xiaofang
Zheng, An
Yin, Jiaheng
Chen, Rudan
Zhao, Xianyang
Xu, Wei
Cheng, Wenqing
Xia, Tian
Lin, Simon
author_sort Zhou, Xiaofang
collection PubMed
description BACKGROUND: Consumer-generated content, such as postings on social media websites, can serve as an ideal source of information for studying health care from a consumer’s perspective. However, consumer-generated content on health care topics often contains spelling errors, which, if not corrected, will be obstacles for downstream computer-based text analysis. OBJECTIVE: In this study, we proposed a framework with a spelling correction system designed for consumer-generated content and a novel ontology-based evaluation system which was used to efficiently assess the correction quality. Additionally, we emphasized the importance of context sensitivity in the correction process, and demonstrated why correction methods designed for electronic medical records (EMRs) failed to perform well with consumer-generated content. METHODS: First, we developed our spelling correction system based on Google Spell Checker. The system processed postings acquired from MedHelp, a biomedical bulletin board system (BBS), and saved misspelled words (eg, sertaline) and corresponding corrected words (eg, sertraline) into two separate sets. Second, to reduce the number of words needing manual examination in the evaluation process, we respectively matched the words in the two sets with terms in two biomedical ontologies: RxNorm and Systematized Nomenclature of Medicine -- Clinical Terms (SNOMED CT). The ratio of words which could be matched and appropriately corrected was used to evaluate the correction system’s overall performance. Third, we categorized the misspelled words according to the types of spelling errors. Finally, we calculated the ratio of abbreviations in the postings, which remarkably differed between EMRs and consumer-generated content and could largely influence the overall performance of spelling checkers. RESULTS: An uncorrected word and the corresponding corrected word was called a spelling pair, and the two words in the spelling pair were its members. In our study, there were 271 spelling pairs detected, among which 58 (21.4%) pairs had one or two members matched in the selected ontologies. The ratio of appropriate correction in the 271 overall spelling errors was 85.2% (231/271). The ratio of that in the 58 spelling pairs was 86% (50/58), close to the overall ratio. We also found that linguistic errors took up 31.4% (85/271) of all errors detected, and only 0.98% (210/21,358) of words in the postings were abbreviations, which was much lower than the ratio in the EMRs (33.6%). CONCLUSIONS: We conclude that our system can accurately correct spelling errors in consumer-generated content. Context sensitivity is indispensable in the correction process. Additionally, it can be confirmed that consumer-generated content differs from EMRs in that consumers seldom use abbreviations. Also, the evaluation method, taking advantage of biomedical ontology, can effectively estimate the accuracy of the correction system and reduce manual examination time.
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spelling pubmed-47053582016-01-12 Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care Zhou, Xiaofang Zheng, An Yin, Jiaheng Chen, Rudan Zhao, Xianyang Xu, Wei Cheng, Wenqing Xia, Tian Lin, Simon JMIR Med Inform Original Paper BACKGROUND: Consumer-generated content, such as postings on social media websites, can serve as an ideal source of information for studying health care from a consumer’s perspective. However, consumer-generated content on health care topics often contains spelling errors, which, if not corrected, will be obstacles for downstream computer-based text analysis. OBJECTIVE: In this study, we proposed a framework with a spelling correction system designed for consumer-generated content and a novel ontology-based evaluation system which was used to efficiently assess the correction quality. Additionally, we emphasized the importance of context sensitivity in the correction process, and demonstrated why correction methods designed for electronic medical records (EMRs) failed to perform well with consumer-generated content. METHODS: First, we developed our spelling correction system based on Google Spell Checker. The system processed postings acquired from MedHelp, a biomedical bulletin board system (BBS), and saved misspelled words (eg, sertaline) and corresponding corrected words (eg, sertraline) into two separate sets. Second, to reduce the number of words needing manual examination in the evaluation process, we respectively matched the words in the two sets with terms in two biomedical ontologies: RxNorm and Systematized Nomenclature of Medicine -- Clinical Terms (SNOMED CT). The ratio of words which could be matched and appropriately corrected was used to evaluate the correction system’s overall performance. Third, we categorized the misspelled words according to the types of spelling errors. Finally, we calculated the ratio of abbreviations in the postings, which remarkably differed between EMRs and consumer-generated content and could largely influence the overall performance of spelling checkers. RESULTS: An uncorrected word and the corresponding corrected word was called a spelling pair, and the two words in the spelling pair were its members. In our study, there were 271 spelling pairs detected, among which 58 (21.4%) pairs had one or two members matched in the selected ontologies. The ratio of appropriate correction in the 271 overall spelling errors was 85.2% (231/271). The ratio of that in the 58 spelling pairs was 86% (50/58), close to the overall ratio. We also found that linguistic errors took up 31.4% (85/271) of all errors detected, and only 0.98% (210/21,358) of words in the postings were abbreviations, which was much lower than the ratio in the EMRs (33.6%). CONCLUSIONS: We conclude that our system can accurately correct spelling errors in consumer-generated content. Context sensitivity is indispensable in the correction process. Additionally, it can be confirmed that consumer-generated content differs from EMRs in that consumers seldom use abbreviations. Also, the evaluation method, taking advantage of biomedical ontology, can effectively estimate the accuracy of the correction system and reduce manual examination time. Gunther Eysenbach 2015-07-31 /pmc/articles/PMC4705358/ /pubmed/26232246 http://dx.doi.org/10.2196/medinform.4211 Text en ©Xiaofang Zhou, An Zheng, Jiaheng Yin, Rudan Chen, Xianyang Zhao, Wei Xu, Wenqing Cheng, Tian Xia, Simon Lin. Originally published in JMIR Medical Informatics (http://medinform.jmir.org), 31.07.2015. https://creativecommons.org/licenses/by/2.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0/ (https://creativecommons.org/licenses/by/2.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Medical Informatics, is properly cited. The complete bibliographic information, a link to the original publication on http://medinform.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Zhou, Xiaofang
Zheng, An
Yin, Jiaheng
Chen, Rudan
Zhao, Xianyang
Xu, Wei
Cheng, Wenqing
Xia, Tian
Lin, Simon
Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care
title Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care
title_full Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care
title_fullStr Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care
title_full_unstemmed Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care
title_short Context-Sensitive Spelling Correction of Consumer-Generated Content on Health Care
title_sort context-sensitive spelling correction of consumer-generated content on health care
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4705358/
https://www.ncbi.nlm.nih.gov/pubmed/26232246
http://dx.doi.org/10.2196/medinform.4211
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