Demircioglu Diren Deniz
Department of Information Systems and Technologies, Sakarya University, Türkiye.
Sakarya University Technology Development Zones Manager Co., Sakarya Teknokent, Sakarya, Türkiye.
Am J Alzheimers Dis Other Demen. 2025 Jan-Dec;40:15333175251374913. doi: 10.1177/15333175251374913. Epub 2025 Sep 14.
Handwriting is a preferred identifier in detecting Alzheimer's disease that enables diagnosis about people. The aim of this study is to evaluate the handwriting and make the early detection and diagnosis of Alzheimer's disease with the highest possible prediction rates. In this regard, 9 machine learning algorithms were used. Seven feature selection methods were used to determine the most effective features for Alzheimer's disease prediction to eliminate unnecessary ones and increase model prediction performance. The models were trained and tested on the DARWIN dataset with both train - test split and cross-validation methods. According to the results, it has been evaluated that the highest performance criterion values are generally achieved when the SHAP is used as the feature selection method. According to the results, the appropriate model that achieved the highest performance values was determined as the hybrid SHAP-Support Vector Machine model with 0.9623 accuracy, 0.9643 precision, 0.9630 recall and 0.9636 F1-Score.
笔迹是检测阿尔茨海默病的一种首选识别方式,它能够对人们进行诊断。本研究的目的是评估笔迹,并以尽可能高的预测率对阿尔茨海默病进行早期检测和诊断。在这方面,使用了9种机器学习算法。采用了7种特征选择方法来确定对阿尔茨海默病预测最有效的特征,以消除不必要的特征并提高模型预测性能。使用训练-测试分割和交叉验证方法在DARWIN数据集上对模型进行训练和测试。根据结果评估得出,当使用SHAP作为特征选择方法时,通常能达到最高的性能标准值。根据结果,确定实现最高性能值的合适模型为混合SHAP-支持向量机模型,其准确率为0.9623,精确率为0.9643,召回率为0.9630,F1分数为0.9636。