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Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study

Limited health literacy is a barrier to optimal healthcare delivery and outcomes. Current measures requiring patients to self-report limitations are time-consuming and may be considered intrusive by some. This makes widespread classification of patient health literacy challenging. The objective of t...

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Autores principales: Balyan, Renu, Crossley, Scott A., Brown, William, Karter, Andrew J., McNamara, Danielle S., Liu, Jennifer Y., Lyles, Courtney R., Schillinger, Dean
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6386302/
https://www.ncbi.nlm.nih.gov/pubmed/30794616
http://dx.doi.org/10.1371/journal.pone.0212488
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author Balyan, Renu
Crossley, Scott A.
Brown, William
Karter, Andrew J.
McNamara, Danielle S.
Liu, Jennifer Y.
Lyles, Courtney R.
Schillinger, Dean
author_facet Balyan, Renu
Crossley, Scott A.
Brown, William
Karter, Andrew J.
McNamara, Danielle S.
Liu, Jennifer Y.
Lyles, Courtney R.
Schillinger, Dean
author_sort Balyan, Renu
collection PubMed
description Limited health literacy is a barrier to optimal healthcare delivery and outcomes. Current measures requiring patients to self-report limitations are time-consuming and may be considered intrusive by some. This makes widespread classification of patient health literacy challenging. The objective of this study was to develop and validate “literacy profiles” as automated indicators of patients’ health literacy to facilitate a non-intrusive, economic and more comprehensive characterization of health literacy among a health care delivery system’s membership. To this end, three literacy profiles were generated based on natural language processing (combining computational linguistics and machine learning) using a sample of 283,216 secure messages sent from 6,941 patients to their primary care physicians. All patients were participants in Kaiser Permanente Northern California’s DISTANCE Study. Performance of the three literacy profiles were compared against a gold standard of patient self-reported health literacy. Associations were analyzed between each literacy profile and patient demographics, health outcomes and healthcare utilization. T-tests were used for numeric data such as A1C, Charlson comorbidity index and healthcare utilization rates, and chi-square tests for categorical data such as sex, race, poor adherence and severe hypoglycemia. Literacy profiles varied in their test characteristics, with C-statistics ranging from 0.61–0.74. Relations between literacy profiles and health outcomes revealed patterns consistent with previous health literacy research: patients identified via literacy profiles indicative of limited health literacy: (a) were older and more likely of minority status; (b) had poorer medication adherence and glycemic control; and (c) exhibited higher rates of hypoglycemia, comorbidities and healthcare utilization. This represents the first successful attempt to employ natural language processing to estimate health literacy. Literacy profiles can offer an automated and economical way to identify patients with limited health literacy and greater vulnerability to poor health outcomes.
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spelling pubmed-63863022019-03-09 Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study Balyan, Renu Crossley, Scott A. Brown, William Karter, Andrew J. McNamara, Danielle S. Liu, Jennifer Y. Lyles, Courtney R. Schillinger, Dean PLoS One Research Article Limited health literacy is a barrier to optimal healthcare delivery and outcomes. Current measures requiring patients to self-report limitations are time-consuming and may be considered intrusive by some. This makes widespread classification of patient health literacy challenging. The objective of this study was to develop and validate “literacy profiles” as automated indicators of patients’ health literacy to facilitate a non-intrusive, economic and more comprehensive characterization of health literacy among a health care delivery system’s membership. To this end, three literacy profiles were generated based on natural language processing (combining computational linguistics and machine learning) using a sample of 283,216 secure messages sent from 6,941 patients to their primary care physicians. All patients were participants in Kaiser Permanente Northern California’s DISTANCE Study. Performance of the three literacy profiles were compared against a gold standard of patient self-reported health literacy. Associations were analyzed between each literacy profile and patient demographics, health outcomes and healthcare utilization. T-tests were used for numeric data such as A1C, Charlson comorbidity index and healthcare utilization rates, and chi-square tests for categorical data such as sex, race, poor adherence and severe hypoglycemia. Literacy profiles varied in their test characteristics, with C-statistics ranging from 0.61–0.74. Relations between literacy profiles and health outcomes revealed patterns consistent with previous health literacy research: patients identified via literacy profiles indicative of limited health literacy: (a) were older and more likely of minority status; (b) had poorer medication adherence and glycemic control; and (c) exhibited higher rates of hypoglycemia, comorbidities and healthcare utilization. This represents the first successful attempt to employ natural language processing to estimate health literacy. Literacy profiles can offer an automated and economical way to identify patients with limited health literacy and greater vulnerability to poor health outcomes. Public Library of Science 2019-02-22 /pmc/articles/PMC6386302/ /pubmed/30794616 http://dx.doi.org/10.1371/journal.pone.0212488 Text en © 2019 Balyan et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Balyan, Renu
Crossley, Scott A.
Brown, William
Karter, Andrew J.
McNamara, Danielle S.
Liu, Jennifer Y.
Lyles, Courtney R.
Schillinger, Dean
Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study
title Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study
title_full Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study
title_fullStr Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study
title_full_unstemmed Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study
title_short Using natural language processing and machine learning to classify health literacy from secure messages: The ECLIPPSE study
title_sort using natural language processing and machine learning to classify health literacy from secure messages: the eclippse study
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6386302/
https://www.ncbi.nlm.nih.gov/pubmed/30794616
http://dx.doi.org/10.1371/journal.pone.0212488
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