Division of Experimental Medicine, Faculty of Medicine and Health Sciences, McGill University, 5252 de Maisonneuve, Montreal, QC, H4A 3S5, Canada.
Center for Outcome Research and Evaluation (CORE), Research Institute of the McGill University Health Center, Montreal, QC, Canada.
Qual Life Res. 2023 Dec;32(12):3439-3452. doi: 10.1007/s11136-023-03475-1. Epub 2023 Jul 10.
In research people are often asked to fill out questionnaires about their health and functioning and some of the questions refer to serious health concerns. Typically, these concerns are not identified until the statistician analyses the data. An alternative is to use an individualized measure, the Patient Generated Index (PGI) where people are asked to self-nominate areas of concern which can then be dealt with in real-time. This study estimates the extent to which self-nominated areas of concern related to mood, anxiety and cognition predict the presence or occurrence of brain health outcomes such as depression, anxiety, psychological distress, or cognitive impairment among people aging with HIV at study entry and for successive assessments over 27 months.
The data comes from participants enrolled in the Positive Brain Health Now (+ BHN) cohort (n = 856). We analyzed the self-nominated areas that participants wrote on the PGI and classified them into seven sentiment groups according to the type of sentiment expressed: emotional, interpersonal, anxiety, depressogenic, somatic, cognitive and positive sentiments. Tokenization was used to convert qualitative data into quantifiable tokens. A longitudinal design was used to link these sentiment groups to the presence or emergence of brain health outcomes as assessed using standardized measures of these constructs: the Hospital Anxiety and Depression Scale (HADS), the Mental Health Index (MHI) of the RAND-36, the Communicating Cognitive Concerns Questionnaire (C3Q) and the Brief Cognitive Ability Measure (B-CAM). Logistic regressions were used to estimate the goodness of fit of each model using the c-statistic.
Emotional sentiments predicted all of the brain health outcomes at all visits with adjusted odds ratios (OR) ranging from 1.61 to 2.00 and c-statistics > 0.73 (good to excellent prediction). Nominating an anxiety sentiment was specific to predicting anxiety and psychological distress (OR 1.65 & 1.52); nominating a cognitive concern was specific to predicting self-reported cognitive ability (OR 4.78). Positive sentiments were predictive of good cognitive function (OR 0.36) and protective of depressive symptoms (OR 0.55).
This study indicates the value of using this semi-qualitative approach as an early-warning system in predicting brain health outcomes.
在研究中,人们经常被要求填写关于他们的健康和功能的问卷,其中一些问题涉及严重的健康问题。通常,这些问题只有在统计学家分析数据时才会被发现。另一种方法是使用个体化的衡量标准,即患者生成指数(PGI),让人们自行提名关注的领域,然后可以实时处理这些领域。本研究估计,与情绪、焦虑和认知相关的自我提名关注领域在多大程度上可以预测艾滋病毒感染者在研究开始时以及在接下来的 27 个月内出现大脑健康结果的可能性,如抑郁、焦虑、心理困扰或认知障碍。
数据来自参加积极大脑健康现在(+ BHN)队列的参与者(n=856)。我们分析了参与者在 PGI 上填写的自我提名领域,并根据所表达的情绪类型将其分为七种情绪组:情绪、人际关系、焦虑、抑郁产生、躯体、认知和积极情绪。标记化被用来将定性数据转换为可量化的标记。使用纵向设计将这些情绪组与大脑健康结果的出现或出现联系起来,这些结果使用这些结构的标准化测量来评估:医院焦虑和抑郁量表(HADS)、RAND-36 的心理健康指数(MHI)、沟通认知问题问卷(C3Q)和简要认知能力测量(B-CAM)。使用 c 统计量估计每个模型的拟合优度,使用逻辑回归。
情绪情绪预测了所有的大脑健康结果在所有访问,调整后的优势比(OR)范围从 1.61 到 2.00 和 c 统计量> 0.73(良好至优秀的预测)。提名焦虑情绪与预测焦虑和心理困扰具有特异性(OR 1.65 和 1.52);提名认知问题与自我报告的认知能力预测具有特异性(OR 4.78)。积极情绪对良好的认知功能具有预测性(OR 0.36),对抑郁症状具有保护作用(OR 0.55)。
本研究表明,使用这种半定性方法作为预测大脑健康结果的早期预警系统具有价值。