Department of Computers and Informatics, Technical University of Košice, 04001, Košice, Slovakia.
Centre for Social and Psychological Sciences, Slovak Academy of Sciences, 04001, Košice, Slovakia.
Sci Rep. 2020 Dec 9;10(1):21541. doi: 10.1038/s41598-020-78611-9.
Dysgraphia, a disorder affecting the written expression of symbols and words, negatively impacts the academic results of pupils as well as their overall well-being. The use of automated procedures can make dysgraphia testing available to larger populations, thereby facilitating early intervention for those who need it. In this paper, we employed a machine learning approach to identify handwriting deteriorated by dysgraphia. To achieve this goal, we collected a new handwriting dataset consisting of several handwriting tasks and extracted a broad range of features to capture different aspects of handwriting. These were fed to a machine learning algorithm to predict whether handwriting is affected by dysgraphia. We compared several machine learning algorithms and discovered that the best results were achieved by the adaptive boosting (AdaBoost) algorithm. The results show that machine learning can be used to detect dysgraphia with almost 80% accuracy, even when dealing with a heterogeneous set of subjects differing in age, sex and handedness.
书写障碍是一种影响符号和单词书写表达的障碍,它会对小学生的学业成绩和整体幸福感产生负面影响。使用自动化程序可以使更多人能够接受书写障碍测试,从而为那些需要的人提供早期干预。在本文中,我们采用机器学习方法来识别受书写障碍影响的笔迹。为了实现这一目标,我们收集了一个新的手写数据集,其中包含多个手写任务,并提取了广泛的特征来捕捉笔迹的不同方面。这些特征被输入到机器学习算法中,以预测笔迹是否受到书写障碍的影响。我们比较了几种机器学习算法,发现自适应增强(AdaBoost)算法的效果最好。结果表明,即使在处理年龄、性别和惯用手不同的异构受试者集时,机器学习也可以用于检测书写障碍,准确率接近 80%。