Stalenhoef P A, Diederiks J P, Knottnerus J A, de Witte L P, Crebolder H F
Department of General Practice, Maastricht University, Postbox 616, 6200 MD Maastricht, The Netherlands.
Fam Pract. 2000 Dec;17(6):490-6. doi: 10.1093/fampra/17.6.490.
Predictive models of fall risk in the elderly living in the community may contribute to the identification of elderly at risk for recurrent falling.
Our aim was to investigate occurrence, determinants and health consequences of falls in a community-dwelling elderly population and the contribution of data from patient records to a risk model of recurrent falls.
A population survey was carried out using a postal questionnaire. The questionnaire on occurrence, determinants and health consequences of falls was sent to 2744 elderly persons of 70 years and over, registered in four general practices (n = 27 000). Data were analysed by bivariate techniques and logistic regression.
A total of 1660 (60%) responded. Falls (> or =1 fall) in the previous year were reported by 44%: one-off falls by 25% and recurrent falls (> or =2 falls) by 19%. Women had significantly more falls than men. Major injury was reported by 8% of the fallers; minor injury by 49%. Treatment of injuries was by the GP in 67% of cases. From logistic regression, a risk model for recurrent falls, consisting of the risk factors female gender, age 80 years or over, presence of a chronic neurological disorder, use of antidepressants, problems of balance and sense organs and complaints of muscles and joints was developed. The model predicted recurrent falls with a sensitivity of 64%, a specificity of 71%, a positive predictive value of 42% and a negative predictive value of 86%.
A risk model consisting of six variables usually known to the GP from the patient records may be a useful tool in the identification of elderly people living in the community at risk for recurrent falls.
社区老年人跌倒风险预测模型可能有助于识别有反复跌倒风险的老年人。
我们的目的是调查社区居住老年人群体中跌倒的发生率、决定因素和健康后果,以及患者记录数据对反复跌倒风险模型的贡献。
采用邮政问卷进行人群调查。关于跌倒发生率、决定因素和健康后果的问卷被发送给在四个全科诊所登记的2744名70岁及以上的老年人(总数为27000人)。数据通过双变量技术和逻辑回归进行分析。
共有1660人(60%)做出回应。44%的人报告上一年有跌倒(≥1次跌倒):一次性跌倒占25%,反复跌倒(≥2次跌倒)占19%。女性跌倒次数明显多于男性。8%的跌倒者报告有重伤;轻伤占49%。67%的受伤情况由全科医生治疗。通过逻辑回归,建立了一个反复跌倒风险模型,该模型由女性性别、80岁及以上年龄、慢性神经系统疾病、使用抗抑郁药、平衡和感觉器官问题以及肌肉和关节不适等风险因素组成。该模型预测反复跌倒的敏感性为64%,特异性为71%,阳性预测值为42%,阴性预测值为86%。
一个由六个通常全科医生从患者记录中就能知晓的变量组成的风险模型,可能是识别社区中有反复跌倒风险老年人的有用工具。