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Simple Contents and Good Readability: Improving Health Literacy for LEP Populations

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Date 2020 Jul 21
PMID 32688291
Citations 4
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Abstract

Method: First, we conducted a needs assessment from community leaders and service providers. Second, we developed contents from credible sources and tested each item using multiple readability tests. Last, we revised each item to lower the readability and retest its readability.

Results: The average reading level for the original 99 topics was assessed at 10.84 (SD= 3.26). After revisions, we were able to lower the readability to 8.56 (SD= 2.96), which was around two grade levels lower, on average.

Conclusion: the main purpose for building an English based health information website was to assist the population with LEP. By using simple English with lower readability, it will ease the translation process. This study demonstrates a process to develop suitable contents for populations in need. In the future, incorporating visual aid and other multimedia will be beneficial in user engagement and knowledge retention.

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