Kikkert Lisette H J, de Groot Maartje H, van Campen Jos P, Beijnen Jos H, Hortobágyi Tibor, Vuillerme Nicolas, Lamoth Claudine C J
University of Groningen, University Medical Center Groningen, Center for Human Movement Sciences, Groningen, The Netherlands.
Univ. Grenoble Alpes, EA AGEIS, Grenoble, France.
PLoS One. 2017 Jun 2;12(6):e0178615. doi: 10.1371/journal.pone.0178615. eCollection 2017.
Fall prediction in geriatric patients remains challenging because the increased fall risk involves multiple, interrelated factors caused by natural aging and/or pathology. Therefore, we used a multi-factorial statistical approach to model categories of modifiable fall risk factors among geriatric patients to identify fallers with highest sensitivity and specificity with a focus on gait performance. Patients (n = 61, age = 79; 41% fallers) underwent extensive screening in three categories: (1) patient characteristics (e.g., handgrip strength, medication use, osteoporosis-related factors) (2) cognitive function (global cognition, memory, executive function), and (3) gait performance (speed-related and dynamic outcomes assessed by tri-axial trunk accelerometry). Falls were registered prospectively (mean follow-up 8.6 months) and one year retrospectively. Principal Component Analysis (PCA) on 11 gait variables was performed to determine underlying gait properties. Three fall-classification models were then built using Partial Least Squares-Discriminant Analysis (PLS-DA), with separate and combined analyses of the fall risk factors. PCA identified 'pace', 'variability', and 'coordination' as key properties of gait. The best PLS-DA model produced a fall classification accuracy of AUC = 0.93. The specificity of the model using patient characteristics was 60% but reached 80% when cognitive and gait outcomes were added. The inclusion of cognition and gait dynamics in fall classification models reduced misclassification. We therefore recommend assessing geriatric patients' fall risk using a multi-factorial approach that incorporates patient characteristics, cognition, and gait dynamics.
预测老年患者跌倒情况仍然具有挑战性,因为跌倒风险增加涉及自然衰老和/或病理状况导致的多个相互关联的因素。因此,我们采用多因素统计方法对老年患者中可改变的跌倒风险因素类别进行建模,以识别具有最高敏感性和特异性的跌倒者,重点关注步态表现。患者(n = 61,年龄 = 79岁;41%为跌倒者)接受了三类广泛筛查:(1)患者特征(如握力、用药情况、骨质疏松相关因素)(2)认知功能(整体认知、记忆、执行功能),以及(3)步态表现(通过三轴躯干加速度计评估的速度相关和动态结果)。前瞻性记录跌倒情况(平均随访8.6个月)并回顾性记录一年的情况。对11个步态变量进行主成分分析(PCA)以确定潜在的步态特性。然后使用偏最小二乘判别分析(PLS-DA)建立三个跌倒分类模型,分别对跌倒风险因素进行单独分析和综合分析。PCA确定“步速”“变异性”和“协调性”为步态的关键特性。最佳PLS-DA模型的跌倒分类准确率为AUC = 0.93。仅使用患者特征的模型特异性为60%,但加入认知和步态结果后达到80%。在跌倒分类模型中纳入认知和步态动态可减少误分类。因此,我们建议采用多因素方法评估老年患者的跌倒风险,该方法应纳入患者特征、认知和步态动态。