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Deep learning prediction of falls among nursing home residents with Alzheimer's disease

机译:阿尔茨海默病疗养院居民跌倒的深度学习预测

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Aim This study aimed to use a convolutional neural network (CNN) to investigate the associations between the time of falling and multiple complicating factors, including age, dementia severity, lower extremity strength and physical function, among nursing home residents with Alzheimer's disease. Methods A total of 42 people with Alzheimer's disease were enrolled. We evaluated falling events from nursing home admission (baseline) to 300?days later. We assessed the knee extension strength and Functional Independence Measure locomotion item and carried out the Mini‐Mental State Examination at baseline. To predict falling, participants were categorized into three classes: those who fell within the first 150 (or 300) days from baseline or those who did not experience a fall within the study period. For each class, 1000 bootstrap datasets were generated using 42 actual sample datasets, and were used to propose a CNN algorithm and cross‐validate the algorithm. Results Eight (19.0), 11 (26.2) and 31 participants (73.8) fell within 150 or 300?days after the baseline assessment or did not fall until 300?days or later, respectively. The highest accuracy rate of the CNN classification was 0.647 in the factor combination extracted from the Mini‐Mental State Examination score, knee extension strength and Functional Independence Measure locomotion item score. Conclusions A CNN based on multiple complicating factors could predict the time of falling in nursing home residents with Alzheimer's disease. Geriatr Gerontol Int 2020; ??: ??–?? .
机译:目的 利用卷积神经网络(CNN)探讨阿尔茨海默病养老院居民跌倒时间与年龄、痴呆严重程度、下肢力量和身体机能等多种复杂因素的关联。方法 选取42例阿尔茨海默病患者为研究对象。我们评估了从疗养院入院(基线)到 300 天后的下降事件。我们评估了膝关节伸展强度和功能独立性测量运动项目,并在基线时进行了简易精神状态检查。为了预测跌倒,参与者被分为三类:那些在基线前150(或300天)内跌倒的人或那些在研究期间没有经历过跌倒的人。对于每个类,使用 42 个实际样本数据集生成了 1000 个 bootstrap 数据集,用于提出 CNN 算法并交叉验证该算法。结果 8例(19.0%)、11例(26.2%)和31例(73.8%)分别在基线评估后150、300 d内跌倒,或300 d及以后才跌倒。在从简易精神状态检查评分、膝关节伸展力量和功能独立性测量运动项目评分中提取的因素组合中,CNN 分类的最高准确率为 0.647。结论 基于多种复杂因素的CNN可以预测阿尔茨海默病疗养院居民的跌倒时间。Geriatr Gerontol Int 2020; ??: ??–??.

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