Brito Laura, Cepa Beatriz, Brito Cláudia, Leite Ângela, Pereira M Graça
Psychology Research Centre, School of Psychology, University of Minho, 4710-057 Braga, Portugal.
INESC TEC, 4200-465 Porto, Portugal.
Eur J Investig Health Psychol Educ. 2025 Mar 20;15(3):41. doi: 10.3390/ejihpe15030041.
Alzheimer's disease (AD) places a profound global challenge, driven by its escalating prevalence and the multifaceted strain it places on individuals, families, and societies. Family caregivers (FCs), who are pivotal in supporting family members with AD, frequently endure substantial emotional, physical, and psychological demands. To better understand the determinants of family caregiving strain, this study employed machine learning (ML) to develop predictive models identifying factors that contribute to caregiver burden over time. Participants were evaluated across sociodemographic clinical, psychophysiological, and psychological domains at baseline (T1; = 130), six months (T2; = 114), and twelve months (T3; = 92). Results revealed three distinct risk profiles, with the first focusing on T2 data, highlighting the importance of distress, forgiveness, age, and heart rate variability. The second profile integrated T1 and T2 data, emphasizing additional factors like family stress. The third profile combined T1 and T2 data with sociodemographic and clinical features, underscoring the importance of both assessment moments on distress at T2 and forgiveness at T1 and T2, as well as family stress at T1. By employing computational methods, this research uncovers nuanced patterns in caregiver burden that conventional statistical approaches might overlook. Key drivers include psychological factors (distress, forgiveness), physiological markers (heart rate variability), contextual stressors (familial dynamics, sociodemographic disparities). The insights revealed enable early identification of FCs at higher risk of burden, paving the way for personalized interventions. Such strategies are urgently needed as AD rates rise globally, underscoring the imperative to safeguard both patients and the caregivers who support them.
阿尔茨海默病(AD)对全球构成了严峻挑战,其患病率不断攀升,给个人、家庭和社会带来了多方面的压力。家庭照料者(FCs)在支持患有AD的家庭成员方面起着关键作用,他们经常承受着巨大的情感、身体和心理负担。为了更好地理解家庭照料压力的决定因素,本研究采用机器学习(ML)来开发预测模型,以识别随着时间推移导致照料者负担的因素。在基线(T1;n = 130)、六个月(T2;n = 114)和十二个月(T3;n = 92)时,对参与者在社会人口统计学、临床、心理生理和心理领域进行了评估。结果揭示了三种不同的风险概况,第一种侧重于T2数据,突出了痛苦、宽恕、年龄和心率变异性的重要性。第二种概况整合了T1和T2数据,强调了家庭压力等其他因素。第三种概况将T1和T2数据与社会人口统计学和临床特征相结合,强调了T2时痛苦评估时刻以及T1和T2时宽恕以及T1时家庭压力的重要性。通过采用计算方法,本研究揭示了传统统计方法可能忽略的照料者负担的细微模式。关键驱动因素包括心理因素(痛苦、宽恕)、生理指标(心率变异性)、情境压力源(家庭动态、社会人口统计学差异)。所揭示的见解能够早期识别负担风险较高的家庭照料者,为个性化干预铺平道路。随着全球AD发病率上升,迫切需要此类策略,这凸显了保护患者及其照料者的紧迫性。