Department of Information Engineering, Huzhou University, Huzhou, China.
School of Medicine and Nursing, Huzhou University, Huzhou, China.
J Alzheimers Dis. 2024;101(1):75-89. doi: 10.3233/JAD-240362.
Alzheimer's disease (AD) is a progressive neurodegenerative disease that is not easily detected in the early stage. Handwriting and walking have been shown to be potential indicators of cognitive decline and are often affected by AD.
This study proposes an assisted screening framework for AD based on multimodal analysis of handwriting and gait and explores whether using a combination of multiple modalities can improve the accuracy of single modality classification.
We recruited 90 participants (38 AD patients and 52 healthy controls). The handwriting data was collected under four handwriting tasks using dot-matrix digital pens, and the gait data was collected using an electronic trail. The two kinds of features were fused as inputs for several different machine learning models (Logistic Regression, SVM, XGBoost, Adaboost, LightGBM), and the model performance was compared.
The accuracy of each model ranged from 71.95% to 96.17%. Among them, the model constructed by LightGBM had the best performance, with an accuracy of 96.17%, sensitivity of 95.32%, specificity of 96.78%, PPV of 95.94%, NPV of 96.74%, and AUC of 0.991. However, the highest accuracy of a single modality was 93.53%, which was achieved by XGBoost in gait features.
The research results show that the combination of handwriting features and gait features can achieve better classification results than a single modality. In addition, the assisted screening model proposed in this study can achieve effective classification of AD, which has development and application prospects.
阿尔茨海默病(AD)是一种进行性神经退行性疾病,在早期不易被发现。书写和步态已被证明是认知能力下降的潜在指标,并且经常受到 AD 的影响。
本研究提出了一种基于手写和步态的多模态分析的 AD 辅助筛查框架,并探讨了使用多种模式的组合是否可以提高单模态分类的准确性。
我们招募了 90 名参与者(38 名 AD 患者和 52 名健康对照者)。手写数据是使用点阵数字笔在四项手写任务下收集的,步态数据是使用电子足迹收集的。将这两种特征融合作为几个不同的机器学习模型(逻辑回归、支持向量机、XGBoost、Adaboost、LightGBM)的输入,并比较模型性能。
每个模型的准确率在 71.95%到 96.17%之间。其中,由 LightGBM 构建的模型表现最佳,准确率为 96.17%,灵敏度为 95.32%,特异性为 96.78%,PPV 为 95.94%,NPV 为 96.74%,AUC 为 0.991。然而,单一模态的最高准确率为 93.53%,是由步态特征中的 XGBoost 实现的。
研究结果表明,手写特征和步态特征的组合可以比单一模态获得更好的分类结果。此外,本研究提出的辅助筛查模型可以实现 AD 的有效分类,具有开发和应用前景。