Wei Ta-Sen, Liu Peng-Ta, Chang Liang-Wey, Liu Sen-Yung
Institute of Biomedical Engineering, Colleges of Engineering and Medicine, National Taiwan University, Taipei, Taiwan.
Department of Physical Medicine and Rehabilitation & Fall Prevention Center, Changhua Christian Hospital, Changhua, Taiwan.
PLoS One. 2017 May 23;12(5):e0177136. doi: 10.1371/journal.pone.0177136. eCollection 2017.
Falls are the leading cause of injury in stroke patients. However, the cause of a fall is complicated, and several types of risk factors are involved. Therefore, a comprehensive model to predict falls with high sensitivity and specificity is needed.
This study was a prospective study of 112 inpatients in a rehabilitation ward with follow-up interviews in patients' homes. Evaluations were performed 1 month after stroke and included the following factors: (1) status of cognition, depression, fear of fall and limb spasticity; (2) functional assessments [walking velocity and the Functional Independence Measure (FIM)]; and (3) objective, computerized gait and balance analyses. The outcome variable was the number of accidental falls during the 6-month follow-up period after baseline measurements.
The non-faller group exhibited significantly better walking velocity and FIM scale compared to the faller group (P < .001). The faller group exhibited higher levels of spasticity in the affected limbs, asymmetry of gait parameters in single support (P < .001), double support (P = .027), and step time (P = .003), and lower stability of center of gravity in the medial-lateral direction (P = .008). Psychological assessments revealed that the faller group exhibited more severe depression and lower confidence without falling. A multivariate logistic regression model identified three independent predictors of falls with high sensitivity (82.6%) and specificity (86.5%): the asymmetry ratio of single support [adjusted odds ratio, aOR = 2.2, 95% CI (1.2-3.8)], the level of spasticity in the gastrocnemius [aOR = 3.2 (1.4-7.3)], and the degree of depression [aOR = 1.4 (1.2-1.8)].
This study revealed depression, in additional to gait asymmetry and spasticity, as another independent factor for predicting falls. These results suggest that appropriate gait training, reduction of ankle spasticity, and aggressive management of depression may be critical to prevent falls in stroke patients.
跌倒为卒中患者受伤的首要原因。然而,跌倒原因复杂,涉及多种危险因素。因此,需要一种具有高敏感性和特异性的综合跌倒预测模型。
本研究为前瞻性研究,纳入112名康复病房的住院患者,并在患者家中进行随访访谈。在卒中后1个月进行评估,包括以下因素:(1)认知、抑郁、跌倒恐惧和肢体痉挛状态;(2)功能评估[步行速度和功能独立性测量(FIM)];(3)客观的计算机化步态和平衡分析。结局变量为基线测量后6个月随访期内的意外跌倒次数。
与跌倒组相比,未跌倒组的步行速度和FIM量表明显更好(P <.001)。跌倒组患侧肢体痉挛程度更高,单支撑(P <.001)、双支撑(P =.027)和步长时间(P =.003)的步态参数不对称,且在内外侧方向上重心稳定性更低(P =.008)。心理评估显示,跌倒组表现出更严重的抑郁和更低的无跌倒信心。多因素logistic回归模型确定了三个具有高敏感性(82.6%)和特异性(86.5%)的跌倒独立预测因素:单支撑不对称率[调整优势比,aOR = 2.2,95%CI(1.2 - 3.8)]、腓肠肌痉挛程度[aOR = 3.2(1.4 - 7.3)]和抑郁程度[aOR = 1.4(1.2 - 1.8)]。
本研究表明,除步态不对称和痉挛外,抑郁也是预测跌倒的另一个独立因素。这些结果表明,适当的步态训练、减轻踝关节痉挛以及积极治疗抑郁对于预防卒中患者跌倒可能至关重要。