A New Measure of Quantified Social Health Is Associated With Levels of Discomfort, Capability, and Mental and General Health Among Patients Seeking Musculoskeletal Specialty Care.

IF 4.4 2区 医学 Q1 ORTHOPEDICS Clinical Orthopaedics and Related Research® Pub Date : 2025-04-01 Epub Date: 2025-02-05 DOI:10.1097/CORR.0000000000003394
Niels Brinkman, Melle Broekman, Teun Teunis, Seung Choi, David Ring, Prakash Jayakumar
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In a first stage (December 2021 to August 2022) , 291 patients rated a subset of items derived from commonly used social health checklists and questionnaires (Tool for Health and Resilience in Vulnerable Environments [THRIVE]; Protocol for Responding to and Assessing Patient Assets, Risks and Experiences [PRAPARE]; and Accountable Health Communities Health-Related Social Needs Screening Tool [HRSN]), of whom 95% (275 of 291; 57% women; mean ± SD age 49 ± 16 years; 51% White, 33% Hispanic; 21% Spanish speaking; 38% completed high school or less) completed all items required to perform factor analysis and were included. Given that so few patients decline participation (estimated at < 5%), we did not track them. We then randomly parsed participants into (1) a learning cohort (69% [189 of 275]) used to identify underlying themes of social health and develop a new measure of quantified social health using exploratory and confirmatory factor analysis (CFA), and (2) a validation cohort (31% [86 of 275]) used to test and internally validate the findings on data not used in its development. During the validation process, we found inconsistencies in the correlations of quantified social health with levels of discomfort and capability between the learning and validation cohort that could not be resolved or explained despite various sensitivity analyses. We therefore identified an additional cohort of 356 eligible patients (February 2023 to June 2023) to complete a new extended subset of items directed at financial security and social support (5 items from the initial stage and 11 new items derived from the Interpersonal Support Evaluation List, Financial Well-Being Scale, Multidimensional Scale of Perceived Social Support, Medical Outcomes Study Social Support Survey, and 6-item Social Support Questionnaire, and \"I have to work multiple jobs in order to finance my life\" was self-created), of whom 95% (338 of 356; 53% women; mean ± SD age 48 ± 16 years; 38% White, 48% Hispanic; 31% Spanish speaking; 47% completed high school or less) completed all items required to perform factor analysis and were included. We repeated factor analysis to identify the underlying themes of social health and then applied item response theory-based graded response modeling to identify the items that were best able to measure differences in social health (high item discrimination) with the lowest possible floor and ceiling effects (proportion of participants with lowest or highest possible score, respectively; a range of different item difficulties). We also assessed the CFA factor loadings (correlation of an individual item with the identified factor) and modification indices (parameters that suggest whether specific changes to the model would improve model fit appreciably). We then iteratively removed items based on low factor loadings (< 0.4, generally regarded as threshold for items to be considered stable) and high modification indices until model fit in CFA was acceptable (root mean square of error approximation [RMSEA] < 0.05). We then assessed local dependencies among the remaining items (strong relationships between items unrelated to the underlying factor) using Yen Q3 and aimed to combine only items with local dependencies of < 0.25. Because we exhausted our set of items, we were not able to address all local dependencies. Among the remaining items, we then repeated CFA to assess model fit (RMSEA) and used Cronbach alpha to assess internal consistency (the extent to which different subsets of the included items would provide the same measurement outcomes). We performed a differential item functioning analysis to assess whether certain items are rated discordantly based on differences in self-reported age, gender, race, or level of education, which can introduce bias. Last, we assessed the correlations of the new quantified social health measure with various self-reported sociodemographic characteristics (external validity) as well as level of discomfort, capability, general health, and mental health (clinical relevance) using bivariate and multivariable linear regression analyses.</p><p><strong>Results: </strong>We identified two factors representing financial security (11 items) and social support (5 items). After removing problematic items based on our prespecified protocol, we selected 5 items to address financial security (including \"I am concerned that the money I have or will save won't last\") and 4 items to address social support (including \"There is a special person who is around when I am in need\"). The selected items of the new quantified social health measure (Social Health Scale [SHS]) displayed good model fit in CFA (RMSEA 0.046, confirming adequate factor structure) and good internal consistency (Cronbach α = 0.80 to 0.84), although there were some remaining local dependencies that could not be resolved by removing items because we exhausted our set of items. We found that more disadvantaged quantitative social health was moderately associated with various sociodemographic characteristics (self-reported Black race [regression coefficient (RC) 2.6 (95% confidence interval [CI] 0.29 to 4.9)], divorced [RC 2.5 (95% CI 0.23 to 4.8)], unemployed [RC 1.7 (95% CI 0.023 to 3.4)], uninsured [RC 3.5 (95% CI 0.33 to 6.7)], and earning less than USD 75,000 per year [RC 2.7 (95% CI 0.020 to 5.4) to 6.8 (95% CI 4.3 to 9.3)]), slightly with higher levels of discomfort (RC 0.055 [95% CI 0.16 to 0.093]), slightly with lower levels of capability (RC -0.19 [95% CI -0.34 to -0.035]), slightly with worse general health (RC 0.13 [95% CI 0.069 to 0.18]), moderately with higher levels of unhelpful thoughts (RC 0.17 [95% CI 0.13 to 0.22]), and moderately with greater feelings of distress (RC 0.23 [95% CI 0.19 to 0.28]).</p><p><strong>Conclusion: </strong>A quantitative measure of social health with domains of financial security and social support had acceptable psychometric properties and seems clinically relevant given the associations with levels of discomfort, capability, and general health. It is important to mention that people with disadvantaged social health should not be further disadvantaged by using a quantitative measure of social health to screen or cherry pick in contexts of incentivized or mandated reporting, which could worsen inequities in access and care. Rather, one should consider disadvantaged social health and its associated stressors as one of several previously less considered and potentially modifiable aspects of comprehensive musculoskeletal health.</p><p><strong>Clinical relevance: </strong>A personalized, quantitative measure of social health would be useful to better capture and understand the role of social health in comprehensive musculoskeletal specialty care. The SHS can be used to measure the distinct contribution of social health to various aspects of musculoskeletal health to inform development of personalized, whole-person care pathways. 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引用次数: 0

Abstract

Background: A better understanding of the correlation between social health and mindsets, comfort, and capability could aid the design of individualized care models. However, currently available social health checklists are relatively lengthy, burdensome, and designed for descriptive screening purposes rather than quantitative assessment for clinical research, patient monitoring, or quality improvement. Alternatives such as area deprivation index are prone to overgeneralization, lack depth in regard to personal circumstances, and evolve rapidly with gentrification. To fill this void, we aimed to identify the underlying themes of social health and develop a new, personalized and quantitative social health measure.

Questions/purposes: (1) What underlying themes of social health (factors) among a subset of items derived from available legacy checklists and questionnaires can be identified and quantified using a brief social health measure? (2) How much of the variation in levels of discomfort, capability, general health, feelings of distress, and unhelpful thoughts regarding symptoms is accounted for by quantified social health?

Methods: In this two-stage, cross-sectional study among people seeking musculoskeletal specialty care in an urban area in the United States, all English and Spanish literate adults (ages 18 to 89 years) were invited to participate in two separate cohorts to help develop a provisional new measure of quantified social health. In a first stage (December 2021 to August 2022) , 291 patients rated a subset of items derived from commonly used social health checklists and questionnaires (Tool for Health and Resilience in Vulnerable Environments [THRIVE]; Protocol for Responding to and Assessing Patient Assets, Risks and Experiences [PRAPARE]; and Accountable Health Communities Health-Related Social Needs Screening Tool [HRSN]), of whom 95% (275 of 291; 57% women; mean ± SD age 49 ± 16 years; 51% White, 33% Hispanic; 21% Spanish speaking; 38% completed high school or less) completed all items required to perform factor analysis and were included. Given that so few patients decline participation (estimated at < 5%), we did not track them. We then randomly parsed participants into (1) a learning cohort (69% [189 of 275]) used to identify underlying themes of social health and develop a new measure of quantified social health using exploratory and confirmatory factor analysis (CFA), and (2) a validation cohort (31% [86 of 275]) used to test and internally validate the findings on data not used in its development. During the validation process, we found inconsistencies in the correlations of quantified social health with levels of discomfort and capability between the learning and validation cohort that could not be resolved or explained despite various sensitivity analyses. We therefore identified an additional cohort of 356 eligible patients (February 2023 to June 2023) to complete a new extended subset of items directed at financial security and social support (5 items from the initial stage and 11 new items derived from the Interpersonal Support Evaluation List, Financial Well-Being Scale, Multidimensional Scale of Perceived Social Support, Medical Outcomes Study Social Support Survey, and 6-item Social Support Questionnaire, and "I have to work multiple jobs in order to finance my life" was self-created), of whom 95% (338 of 356; 53% women; mean ± SD age 48 ± 16 years; 38% White, 48% Hispanic; 31% Spanish speaking; 47% completed high school or less) completed all items required to perform factor analysis and were included. We repeated factor analysis to identify the underlying themes of social health and then applied item response theory-based graded response modeling to identify the items that were best able to measure differences in social health (high item discrimination) with the lowest possible floor and ceiling effects (proportion of participants with lowest or highest possible score, respectively; a range of different item difficulties). We also assessed the CFA factor loadings (correlation of an individual item with the identified factor) and modification indices (parameters that suggest whether specific changes to the model would improve model fit appreciably). We then iteratively removed items based on low factor loadings (< 0.4, generally regarded as threshold for items to be considered stable) and high modification indices until model fit in CFA was acceptable (root mean square of error approximation [RMSEA] < 0.05). We then assessed local dependencies among the remaining items (strong relationships between items unrelated to the underlying factor) using Yen Q3 and aimed to combine only items with local dependencies of < 0.25. Because we exhausted our set of items, we were not able to address all local dependencies. Among the remaining items, we then repeated CFA to assess model fit (RMSEA) and used Cronbach alpha to assess internal consistency (the extent to which different subsets of the included items would provide the same measurement outcomes). We performed a differential item functioning analysis to assess whether certain items are rated discordantly based on differences in self-reported age, gender, race, or level of education, which can introduce bias. Last, we assessed the correlations of the new quantified social health measure with various self-reported sociodemographic characteristics (external validity) as well as level of discomfort, capability, general health, and mental health (clinical relevance) using bivariate and multivariable linear regression analyses.

Results: We identified two factors representing financial security (11 items) and social support (5 items). After removing problematic items based on our prespecified protocol, we selected 5 items to address financial security (including "I am concerned that the money I have or will save won't last") and 4 items to address social support (including "There is a special person who is around when I am in need"). The selected items of the new quantified social health measure (Social Health Scale [SHS]) displayed good model fit in CFA (RMSEA 0.046, confirming adequate factor structure) and good internal consistency (Cronbach α = 0.80 to 0.84), although there were some remaining local dependencies that could not be resolved by removing items because we exhausted our set of items. We found that more disadvantaged quantitative social health was moderately associated with various sociodemographic characteristics (self-reported Black race [regression coefficient (RC) 2.6 (95% confidence interval [CI] 0.29 to 4.9)], divorced [RC 2.5 (95% CI 0.23 to 4.8)], unemployed [RC 1.7 (95% CI 0.023 to 3.4)], uninsured [RC 3.5 (95% CI 0.33 to 6.7)], and earning less than USD 75,000 per year [RC 2.7 (95% CI 0.020 to 5.4) to 6.8 (95% CI 4.3 to 9.3)]), slightly with higher levels of discomfort (RC 0.055 [95% CI 0.16 to 0.093]), slightly with lower levels of capability (RC -0.19 [95% CI -0.34 to -0.035]), slightly with worse general health (RC 0.13 [95% CI 0.069 to 0.18]), moderately with higher levels of unhelpful thoughts (RC 0.17 [95% CI 0.13 to 0.22]), and moderately with greater feelings of distress (RC 0.23 [95% CI 0.19 to 0.28]).

Conclusion: A quantitative measure of social health with domains of financial security and social support had acceptable psychometric properties and seems clinically relevant given the associations with levels of discomfort, capability, and general health. It is important to mention that people with disadvantaged social health should not be further disadvantaged by using a quantitative measure of social health to screen or cherry pick in contexts of incentivized or mandated reporting, which could worsen inequities in access and care. Rather, one should consider disadvantaged social health and its associated stressors as one of several previously less considered and potentially modifiable aspects of comprehensive musculoskeletal health.

Clinical relevance: A personalized, quantitative measure of social health would be useful to better capture and understand the role of social health in comprehensive musculoskeletal specialty care. The SHS can be used to measure the distinct contribution of social health to various aspects of musculoskeletal health to inform development of personalized, whole-person care pathways. Clinicians may also use the SHS to identify and monitor patients with disadvantaged social circumstances. This line of inquiry may benefit from additional research including a larger number of items focused on a broader range of social health to further develop the SHS.

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一项量化社会健康的新措施与寻求肌肉骨骼专科护理的患者的不适、能力、心理和一般健康水平有关。
背景:更好地了解社会健康与心态、舒适和能力之间的关系有助于个性化护理模式的设计。然而,目前可用的社会健康检查表相对冗长、繁琐,而且是为描述性筛查目的而设计的,而不是为临床研究、患者监测或质量改进进行定量评估。区域剥夺指数等替代指标容易过于一般化,缺乏对个人情况的深度考虑,并随着士绅化而迅速演变。为了填补这一空白,我们旨在确定社会健康的潜在主题,并开发一种新的、个性化的、定量的社会健康测量方法。问题/目的:(1)从现有的遗留清单和问卷中得出的一组项目中,哪些潜在的社会健康主题(因素)可以通过一个简短的社会健康测量来确定和量化?(2)在不适、能力、总体健康、痛苦感和有关症状的无益想法的水平变化中,有多少是由量化的社会健康来解释的?方法:在这项两阶段的横断面研究中,在美国城市地区寻求肌肉骨骼专科治疗的人群中,所有会英语和西班牙语的成年人(18至89岁)被邀请参加两个单独的队列,以帮助制定量化社会健康的临时新措施。在第一阶段(2021年12月至2022年8月),291名患者对常用的社会健康清单和问卷(脆弱环境中的健康和复原力工具[THRIVE];应对和评估患者资产、风险和经验方案;负责任的健康社区与健康有关的社会需求筛查工具[HRSN]),其中95%(291人中的275人;57%的女性;年龄49±16岁;51%白人,33%西班牙裔;21%说西班牙语;(38%完成高中或以下)完成了进行因子分析所需的所有项目并被纳入。考虑到很少有患者拒绝参与(估计小于5%),我们没有对他们进行跟踪。然后,我们将参与者随机解析为:(1)学习队列(69%[189 / 275]),用于识别社会健康的潜在主题,并使用探索性和验证性因素分析(CFA)开发量化社会健康的新措施;(2)验证队列(31%[86 / 275])用于测试和内部验证未在其开发中使用的数据的发现。在验证过程中,我们发现量化的社会健康与学习和验证队列之间的不适和能力水平的相关性不一致,尽管进行了各种敏感性分析,但仍无法解决或解释。因此,我们确定了356名符合条件的患者(2023年2月至2023年6月)的额外队列,以完成针对经济安全和社会支持的新扩展项目子集(来自初始阶段的5个项目和来自人际支持评估表的11个新项目,财务幸福量表,感知社会支持多维量表,医疗结果研究社会支持调查和6项社会支持问卷)。和“我必须做多份工作来资助我的生活”是自己创造的),其中95%(356人中有338人;53%的女性;平均±SD年龄48±16岁;38%的白人,48%的西班牙裔;31%说西班牙语;47%完成高中或以下)完成了进行因素分析所需的所有项目并被纳入。我们重复因子分析以确定社会健康的潜在主题,然后应用基于项目反应理论的分级反应模型来确定最能衡量社会健康差异的项目(高项目歧视),最低限度和最高限度效应(分别为最低或最高可能得分的参与者比例;一系列不同的道具难度)。我们还评估了CFA因子负荷(单个项目与确定因子的相关性)和修正指数(表明对模型进行特定更改是否会显著改善模型拟合的参数)。然后,我们根据低因子负荷(< 0.4,通常被认为是项目稳定的阈值)和高修正指数迭代删除项目,直到CFA模型拟合可接受(误差均方根近似[RMSEA] < 0.05)。然后,我们使用Yen Q3评估剩余项目之间的本地依赖性(与潜在因素无关的项目之间的强关系),并旨在仅组合本地依赖性< 0.25的项目。因为我们用尽了我们的条目集,所以我们无法处理所有的本地依赖项。 在剩下的项目中,我们重复使用CFA来评估模型拟合(RMSEA),并使用Cronbach alpha来评估内部一致性(所包含项目的不同子集提供相同测量结果的程度)。我们进行了差异项目功能分析,以评估某些项目是否因自我报告的年龄、性别、种族或教育水平的差异而评分不一致,这些差异可能会引入偏见。最后,我们使用双变量和多变量线性回归分析评估了新的量化社会健康指标与各种自我报告的社会人口学特征(外部效度)以及不适程度、能力、一般健康和心理健康(临床相关性)的相关性。结果:我们确定了代表经济保障(11项)和社会支持(5项)的两个因素。在根据我们预先设定的协议删除了有问题的项目后,我们选择了5个项目来解决经济安全问题(包括“我担心我已经或将要存的钱不会长久”)和4个项目来解决社会支持问题(包括“当我有需要的时候,有一个特别的人在我身边”)。新量化社会健康测量(社会健康量表[SHS])的选择项目在CFA (RMSEA 0.046,证实了适当的因素结构)和良好的内部一致性(Cronbach α = 0.80至0.84)中显示出良好的模型拟合,尽管由于我们耗尽了我们的项目集,仍然存在一些无法通过删除项目来解决的局部依赖关系。我们发现,更不利的定量社会健康与各种社会人口特征(自我报告的黑人[回归系数(RC) 2.6(95%可信区间[CI] 0.29至4.9)]、离婚[RC 2.5(95%可信区间[CI] 0.23至4.8)]、失业[RC 1.7(95%可信区间[CI] 0.023至3.4)]、无保险[RC 3.5(95%可信区间为0.33至6.7)]、年收入低于75,000美元[RC 2.7(95%可信区间为0.020至5.4)至6.8(95%可信区间为4.3至9.3)])中度相关。轻度不适程度较高(RC = 0.055 [95% CI = 0.16 ~ 0.093]),轻度能力水平较低(RC = -0.19 [95% CI = -0.34 ~ -0.035]),轻度总体健康状况较差(RC = 0.13 [95% CI = 0.069 ~ 0.18]),中度有较高程度的无益思想(RC = 0.17 [95% CI = 0.13 ~ 0.22]),中度有较大程度的痛苦感(RC = 0.23 [95% CI = 0.19 ~ 0.28])。结论:经济安全和社会支持领域的社会健康定量测量具有可接受的心理测量特性,并且考虑到与不适、能力和一般健康水平的关联,似乎具有临床相关性。必须指出的是,在奖励或强制报告的情况下,不应使用社会健康的定量措施进行筛选或挑选,从而使社会健康处于不利地位的人进一步处于不利地位,因为这可能加剧获取和护理方面的不平等。相反,人们应该考虑到不利的社会健康及其相关的压力源,作为以前很少考虑和潜在的综合肌肉骨骼健康的几个方面之一。临床相关性:个性化的社会健康定量测量将有助于更好地捕捉和理解社会健康在综合肌肉骨骼专业护理中的作用。SHS可用于衡量社会健康对肌肉骨骼健康各个方面的独特贡献,为个性化、全人护理途径的发展提供信息。临床医生也可以使用SHS来识别和监测处于不利社会环境的患者。这方面的调查可能受益于更多的研究,包括更多的项目,侧重于更广泛的社会健康,以进一步发展社会健康信息系统。
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来源期刊
CiteScore
7.00
自引率
11.90%
发文量
722
审稿时长
2.5 months
期刊介绍: Clinical Orthopaedics and Related Research® is a leading peer-reviewed journal devoted to the dissemination of new and important orthopaedic knowledge. CORR® brings readers the latest clinical and basic research, along with columns, commentaries, and interviews with authors.
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