Identifying and Predicting Subgroups of Veterans With Mild Traumatic Brain Injury Based on Distinct Configurations of Postconcussive Symptom Endorsement: A Latent Class Analysis.

IF 2.4 3区 医学 Q2 CLINICAL NEUROLOGY Journal of Head Trauma Rehabilitation Pub Date : 2024-07-01 Epub Date: 2024-01-23 DOI:10.1097/HTR.0000000000000890
Adam R Kinney, Alexandra L Schneider, Samuel E King, Xiang-Dong Yan, Jeri E Forster, Nazanin H Bahraini, Lisa A Brenner
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Abstract

Objective: To identify distinct subgroups of veterans with mild traumatic brain injury (mTBI) based on configurations of postconcussive symptom (PCS) endorsement, and to examine predictors of subgroup membership.

Setting: Outpatient Veterans Health Administration (VHA).

Participants: Veterans with clinician-confirmed mTBI who completed the Neurobehavioral Symptom Inventory (NSI), determined using the Comprehensive Traumatic Brain Injury Evaluation database. Individuals who tended to overreport symptoms were excluded via an embedded symptom validity scale.

Design: Retrospective cohort study leveraging national VHA clinical data from 2012 to 2020. Latent class analysis (LCA) with a split-sample cross-validation procedure was used to identify subgroups of veterans. Multinomial logistic regression was used to examine predictors of subgroup membership.

Main measures: Latent classes identified using NSI items.

Results: The study included 72 252 eligible veterans, who were primarily White (73%) and male (94%). The LCA supported 7 distinct subgroups of veterans with mTBI, characterized by diverging patterns of risk for specific PCS across vestibular (eg, dizziness), somatosensory (eg, headache), cognitive (eg, forgetfulness), and mood domains (eg, anxiety). The most prevalent subgroup was Global (20.7%), followed by Cognitive-Mood (16.3%), Headache-Cognitive-Mood (H-C-M; 16.3%), Headache-Mood (14.2%), Anxiety (13.8%), Headache-Sleep (10.3%), and Minimal (8.5%). The Global class was used as the reference class for multinomial logistic regression because it was distinguished from others based on elevated risk for PCS across all domains. Female (vs male), Black (vs White), and Hispanic veterans (vs non-Hispanic) were less likely to be members of most subgroups characterized by lesser PCS endorsement relative to the Global class (excluding Headache-Mood).

Conclusion: The 7 distinct groups identified in this study distill heterogenous patterns of PCS endorsement into clinically actionable phenotypes that can be used to tailor clinical management of veterans with mTBI. Findings reveal empirical support for potential racial, ethnic, and sex-based disparities in PCS among veterans, informing efforts aimed at promoting equitable recovery from mTBI in this population.

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根据脑震荡后症状认可的不同构型识别和预测轻度脑损伤退伍军人亚群:潜类分析
目的:根据撞击后症状(PCS)认可的配置,确定轻度脑外伤(mTBI)退伍军人的不同亚群,并研究亚群成员资格的预测因素:地点:退伍军人健康管理局(VHA)门诊:临床医生确诊为 mTBI 的退伍军人,他们填写了神经行为症状量表 (NSI),该量表是通过脑外伤综合评估数据库确定的。通过嵌入式症状有效性量表排除了倾向于过度报告症状的个人:设计:利用 2012 年至 2020 年美国退伍军人管理局的全国临床数据进行回顾性队列研究。采用潜类分析(LCA)和分离样本交叉验证程序来识别退伍军人亚群。多项式逻辑回归用于研究亚群成员资格的预测因素:主要测量指标:使用 NSI 项目识别出的潜在类别:研究包括 72 252 名符合条件的退伍军人,他们主要是白人(73%)和男性(94%)。LCA支持7个不同的mTBI退伍军人亚组,其特点是前庭(如头晕)、躯体感觉(如头痛)、认知(如健忘)和情绪领域(如焦虑)的特定PCS风险模式各不相同。最常见的亚组是全局(20.7%),其次是认知-情绪(16.3%)、头痛-认知-情绪(H-C-M;16.3%)、头痛-情绪(14.2%)、焦虑(13.8%)、头痛-睡眠(10.3%)和轻微(8.5%)。全球分级被用作多项式逻辑回归的参考分级,因为它与其他分级的区别在于,全球分级在所有领域中的 PCS 风险都较高。女性退伍军人(与男性退伍军人相比)、黑人退伍军人(与白人退伍军人相比)和西班牙裔退伍军人(与非西班牙裔退伍军人相比)成为大多数亚组成员的可能性较小,这些亚组的特点是相对于全局组(不包括头痛-情绪组)而言,PCS认可度较低:本研究确定的 7 个不同群体将 PCS 认可的不同模式提炼为临床上可操作的表型,可用于对患有 mTBI 的退伍军人进行量身定制的临床管理。研究结果表明,退伍军人中可能存在基于种族、民族和性别的 PCS 差异,这为促进这一人群从 mTBI 中公平康复提供了依据。
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来源期刊
CiteScore
4.80
自引率
4.20%
发文量
153
审稿时长
6-12 weeks
期刊介绍: The Journal of Head Trauma Rehabilitation is a leading, peer-reviewed resource that provides up-to-date information on the clinical management and rehabilitation of persons with traumatic brain injuries. Six issues each year aspire to the vision of “knowledge informing care” and include a wide range of articles, topical issues, commentaries and special features. It is the official journal of the Brain Injury Association of America (BIAA).
期刊最新文献
Effects of Home Neighborhood Tree Canopy Coverage on Mental Health Outcomes: A Traumatic Brain Injury Model Systems Investigation. Reciprocal Causation Among Pain, Physical Health, and Mental Health 1 Year Post-Traumatic Brain Injury: A Cross-Lagged Panel Model From the TRACK-TBI Study. Association of Frailty, Comorbidities and Muscularity With GOS and 30-Day Mortality After TBI in Elderly Patients-A Retrospective Study in 1104 Patients. Relationships Between Neighborhood Disadvantage, Race/Ethnicity, and Neurobehavioral Symptoms Among Veterans With Mild Traumatic Brain Injury. Cross-Lagged Associations Among Sleep, Headache, and Pain in Pediatric Mild Traumatic Brain Injury: An A-CAP Study.
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