How Difference Tasks Are Affected by Probability Format, Part 1: A Making Numbers Meaningful Systematic Review.

IF 1.9 Q3 HEALTH CARE SCIENCES & SERVICES
MDM Policy and Practice Pub Date : 2025-02-24 eCollection Date: 2025-01-01 DOI:10.1177/23814683241294077
Natalie C Benda, Brian J Zikmund-Fisher, Mohit M Sharma, Stephen B Johnson, Michelle Demetres, Diana Delgado, Jessica S Ancker
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引用次数: 0

Abstract

Background. To develop guidance on the effect of data presentation format on communication of health probabilities, the Making Numbers Meaningful project undertook a systematic review. Purpose. This article, one in a series, covers evidence about "difference tasks," in which a reader examines a stimulus to evaluate differences between probabilities, such as the effect of a risk factor or therapy on the chance of a disease. This article covers the effect of format on 4 outcomes: 1) identifying a probability difference (identification) or recalling it (recall), 2) identifying the largest or smallest of a set of probability differences (contrast outcome), 3) placing a probability difference into a category such as "elevated" or "below average" (categorization outcome), and 4) performing computations (computation outcome). Data Sources. MEDLINE, Embase, CINAHL, the Cochrane Library, PsycINFO, ERIC, ACM Digital Library; hand search of 4 journals. Finding Selection. Pairwise screening to identify experimental/quasi-experimental research comparing 2 or more formats for quantitative health information. This article reports on 53 findings derived from 35 unique studies reported in 32 papers. Data Extraction. Pairwise extraction of information on stimulus (data in a data presentation format), cognitive task, and perceptual, affective, cognitive, or behavioral outcomes. Data Synthesis. Most evidence involving outcomes of difference-level cognitive tasks was weak or insufficient. Evidence was strong that 1) computations involving differences are easier with rates per 10n than with percentages or 1 in X rates and 2) adding graphics to numbers makes it easier to perform difference-level computations. Limitations. A granular level of evidence syntheses leads to narrow guidance rather than broad statements. Conclusions. Although many studies examined differences between probabilities, few were comparable enough to generate strong evidence.

Highlights: Most evidence about the effect of format on ability to evaluate differences in probabilities was weak or insufficient because of too few comparable studies.Strong evidence showed that computations relevant to differences in probabilities are easier with rates per 10n than with 1 in X rates.Adding graphics to probabilities helps readers compute differences between probabilities.

概率格式如何影响差异任务,第 1 部分:让数字有意义》系统回顾。
背景。为了制定关于数据表示格式对健康概率传播的影响的指导,“使数字有意义”项目进行了系统审查。目的。这篇文章是一系列文章中的一篇,涵盖了关于“差异任务”的证据,在这篇文章中,读者通过检查刺激来评估概率之间的差异,例如风险因素或治疗对疾病几率的影响。本文讨论了格式对4种结果的影响:1)识别概率差异(识别)或召回它(召回),2)识别一组概率差异中最大或最小的(对比结果),3)将概率差异放入诸如“高”或“低于平均”的类别(分类结果),以及4)执行计算(计算结果)。数据源。MEDLINE、Embase、CINAHL、Cochrane图书馆、PsycINFO、ERIC、ACM数字图书馆;手工检索4种期刊。发现选择。两两筛选,以确定比较两种或更多格式的定量健康信息的实验/准实验研究。本文报告了来自32篇论文中35项独特研究的53项发现。数据提取。两两抽取刺激(数据表示格式的数据)、认知任务和知觉、情感、认知或行为结果的信息。合成数据。大多数涉及差异水平认知任务结果的证据薄弱或不充分。强有力的证据表明:1)计算每10n的比率比计算百分比或1 / X的比率更容易计算差异;2)在数字中添加图形使执行差异级计算更容易。的局限性。细粒度的证据综合导致狭隘的指导,而不是广泛的陈述。结论。尽管许多研究都考察了不同概率之间的差异,但很少有足够的可比性来产生强有力的证据。重点:由于可比性研究太少,大多数关于格式对评估概率差异能力影响的证据都很薄弱或不充分。强有力的证据表明,与每10n次的速率相比,每X次1次的速率更容易计算与概率差异相关的计算。向概率中添加图形有助于读者计算概率之间的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
MDM Policy and Practice
MDM Policy and Practice Medicine-Health Policy
CiteScore
2.50
自引率
0.00%
发文量
28
审稿时长
15 weeks
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