Cargando…

Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition

BACKGROUND: Technological advances in personal informatics allow people to track their own health in a variety of ways, representing a dramatic change in individuals’ control of their own wellness. However, research regarding patient interpretation of traditional medical tests highlights the risks i...

Descripción completa

Detalles Bibliográficos
Autores principales: Hohenstein, Jess C, Baumer, Eric PS, Reynolds, Lindsay, Murnane, Elizabeth L, O'Dell, Dakota, Lee, Seoho, Guha, Shion, Qi, Yu, Rieger, Erin, Gay, Geri
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5856924/
https://www.ncbi.nlm.nih.gov/pubmed/29490894
http://dx.doi.org/10.2196/humanfactors.8620
_version_ 1783307371432378368
author Hohenstein, Jess C
Baumer, Eric PS
Reynolds, Lindsay
Murnane, Elizabeth L
O'Dell, Dakota
Lee, Seoho
Guha, Shion
Qi, Yu
Rieger, Erin
Gay, Geri
author_facet Hohenstein, Jess C
Baumer, Eric PS
Reynolds, Lindsay
Murnane, Elizabeth L
O'Dell, Dakota
Lee, Seoho
Guha, Shion
Qi, Yu
Rieger, Erin
Gay, Geri
author_sort Hohenstein, Jess C
collection PubMed
description BACKGROUND: Technological advances in personal informatics allow people to track their own health in a variety of ways, representing a dramatic change in individuals’ control of their own wellness. However, research regarding patient interpretation of traditional medical tests highlights the risks in making complex medical data available to a general audience. OBJECTIVE: This study aimed to explore how people interpret medical test results, examined in the context of a mobile blood testing system developed to enable self-care and health management. METHODS: In a preliminary investigation and main study, we presented 27 and 303 adults, respectively, with hypothetical results from several blood tests via one of the several mobile interface designs: a number representing the raw measurement of the tested biomarker, natural language text indicating whether the biomarker’s level was low or high, or a one-dimensional chart illustrating this level along a low-healthy axis. We measured respondents’ correctness in evaluating these results and their confidence in their interpretations. Participants also told us about any follow-up actions they would take based on the result and how they envisioned, generally, using our proposed personal health system. RESULTS: We find that a majority of participants (242/328, 73.8%) were accurate in their interpretations of their diagnostic results. However, 135 of 328 participants (41.1%) expressed uncertainty and confusion about their ability to correctly interpret these results. We also find that demographics and interface design can impact interpretation accuracy, including false confidence, which we define as a respondent having above average confidence despite interpreting a result inaccurately. Specifically, participants who saw a natural language design were the least likely (421.47 times, P=.02) to exhibit false confidence, and women who saw a graph design were less likely (8.67 times, P=.04) to have false confidence. On the other hand, false confidence was more likely among participants who self-identified as Asian (25.30 times, P=.02), white (13.99 times, P=.01), and Hispanic (6.19 times, P=.04). Finally, with the natural language design, participants who were more educated were, for each one-unit increase in education level, more likely (3.06 times, P=.02) to have false confidence. CONCLUSIONS: Our findings illustrate both promises and challenges of interpreting medical data outside of a clinical setting and suggest instances where personal informatics may be inappropriate. In surfacing these tensions, we outline concrete interface design strategies that are more sensitive to users’ capabilities and conditions.
format Online
Article
Text
id pubmed-5856924
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-58569242018-03-26 Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition Hohenstein, Jess C Baumer, Eric PS Reynolds, Lindsay Murnane, Elizabeth L O'Dell, Dakota Lee, Seoho Guha, Shion Qi, Yu Rieger, Erin Gay, Geri JMIR Hum Factors Original Paper BACKGROUND: Technological advances in personal informatics allow people to track their own health in a variety of ways, representing a dramatic change in individuals’ control of their own wellness. However, research regarding patient interpretation of traditional medical tests highlights the risks in making complex medical data available to a general audience. OBJECTIVE: This study aimed to explore how people interpret medical test results, examined in the context of a mobile blood testing system developed to enable self-care and health management. METHODS: In a preliminary investigation and main study, we presented 27 and 303 adults, respectively, with hypothetical results from several blood tests via one of the several mobile interface designs: a number representing the raw measurement of the tested biomarker, natural language text indicating whether the biomarker’s level was low or high, or a one-dimensional chart illustrating this level along a low-healthy axis. We measured respondents’ correctness in evaluating these results and their confidence in their interpretations. Participants also told us about any follow-up actions they would take based on the result and how they envisioned, generally, using our proposed personal health system. RESULTS: We find that a majority of participants (242/328, 73.8%) were accurate in their interpretations of their diagnostic results. However, 135 of 328 participants (41.1%) expressed uncertainty and confusion about their ability to correctly interpret these results. We also find that demographics and interface design can impact interpretation accuracy, including false confidence, which we define as a respondent having above average confidence despite interpreting a result inaccurately. Specifically, participants who saw a natural language design were the least likely (421.47 times, P=.02) to exhibit false confidence, and women who saw a graph design were less likely (8.67 times, P=.04) to have false confidence. On the other hand, false confidence was more likely among participants who self-identified as Asian (25.30 times, P=.02), white (13.99 times, P=.01), and Hispanic (6.19 times, P=.04). Finally, with the natural language design, participants who were more educated were, for each one-unit increase in education level, more likely (3.06 times, P=.02) to have false confidence. CONCLUSIONS: Our findings illustrate both promises and challenges of interpreting medical data outside of a clinical setting and suggest instances where personal informatics may be inappropriate. In surfacing these tensions, we outline concrete interface design strategies that are more sensitive to users’ capabilities and conditions. JMIR Publications 2018-02-28 /pmc/articles/PMC5856924/ /pubmed/29490894 http://dx.doi.org/10.2196/humanfactors.8620 Text en ©Jess C Hohenstein, Eric PS Baumer, Lindsay Reynolds, Elizabeth L Murnane, Dakota O'Dell, Seoho Lee, Shion Guha, Yu Qi, Erin Rieger, Geri Gay. Originally published in JMIR Human Factors (http://humanfactors.jmir.org), 28.02.2018. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Human Factors, is properly cited. The complete bibliographic information, a link to the original publication on http://humanfactors.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Hohenstein, Jess C
Baumer, Eric PS
Reynolds, Lindsay
Murnane, Elizabeth L
O'Dell, Dakota
Lee, Seoho
Guha, Shion
Qi, Yu
Rieger, Erin
Gay, Geri
Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition
title Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition
title_full Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition
title_fullStr Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition
title_full_unstemmed Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition
title_short Supporting Accurate Interpretation of Self-Administered Medical Test Results for Mobile Health: Assessment of Design, Demographics, and Health Condition
title_sort supporting accurate interpretation of self-administered medical test results for mobile health: assessment of design, demographics, and health condition
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5856924/
https://www.ncbi.nlm.nih.gov/pubmed/29490894
http://dx.doi.org/10.2196/humanfactors.8620
work_keys_str_mv AT hohensteinjessc supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT baumerericps supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT reynoldslindsay supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT murnaneelizabethl supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT odelldakota supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT leeseoho supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT guhashion supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT qiyu supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT riegererin supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition
AT gaygeri supportingaccurateinterpretationofselfadministeredmedicaltestresultsformobilehealthassessmentofdesigndemographicsandhealthcondition