Asselborn Thibault, Gargot Thomas, Kidziński Łukasz, Johal Wafa, Cohen David, Jolly Caroline, Dillenbourg Pierre
1CHILI Lab, EPFL, Route Cantonale, 1015 Lausanne, Switzerland.
2Psychiatrie de l'Enfant et de l'Adolescent, Pitié Salpêtriére - Charles Foix, Assistance Publique Hôpitaux de Paris, 47/83 boulevard de l'Hôpital, 75013 Paris, France.
NPJ Digit Med. 2018 Aug 31;1:42. doi: 10.1038/s41746-018-0049-x. eCollection 2018.
The academic and behavioral progress of children is associated with the timely development of reading and writing skills. Dysgraphia, characterized as a handwriting learning disability, is usually associated with dyslexia, developmental coordination disorder (dyspraxia), or attention deficit disorder, which are all neuro-developmental disorders. Dysgraphia can seriously impair children in their everyday life and require therapeutic care. Early detection of handwriting difficulties is, therefore, of great importance in pediatrics. Since the beginning of the 20th century, numerous handwriting scales have been developed to assess the quality of handwriting. However, these tests usually involve an expert investigating visually sentences written by a subject on paper, and, therefore, they are subjective, expensive, and scale poorly. Moreover, they ignore potentially important characteristics of motor control such as writing dynamics, pen pressure, or pen tilt. However, with the increasing availability of digital tablets, features to measure these ignored characteristics are now potentially available at scale and very low cost. In this work, we developed a diagnostic tool requiring only a commodity tablet. To this end, we modeled data of 298 children, including 56 with dysgraphia. Children performed the BHK test on a digital tablet covered with a sheet of paper. We extracted 53 handwriting features describing various aspects of handwriting, and used the Random Forest classifier to diagnose dysgraphia. Our method achieved 96.6% sensibility and 99.2% specificity. Given the intra-rater and inter-rater levels of agreement in the BHK test, our technique has comparable accuracy for experts and can be deployed directly as a diagnostics tool.
儿童的学业和行为进步与读写技能的及时发展相关。书写障碍被定义为一种书写学习障碍,通常与诵读困难、发育性协调障碍(运动障碍)或注意力缺陷障碍相关,这些都是神经发育障碍。书写障碍会严重影响儿童的日常生活,需要进行治疗护理。因此,早期发现书写困难在儿科中非常重要。自20世纪初以来,已经开发了许多书写量表来评估书写质量。然而,这些测试通常需要专家直观地检查受试者在纸上书写的句子,因此它们主观、昂贵且扩展性差。此外,它们忽略了运动控制的潜在重要特征,如书写动态、笔压或笔倾斜度。然而,随着数字平板电脑的日益普及,现在有可能以低成本大规模获取测量这些被忽略特征的功能。在这项工作中,我们开发了一种仅需普通平板电脑的诊断工具。为此,我们对298名儿童的数据进行了建模,其中包括56名患有书写障碍的儿童。儿童在覆盖有一张纸的数字平板电脑上进行了BHK测试。我们提取了53个描述书写各个方面的手写特征,并使用随机森林分类器来诊断书写障碍。我们的方法灵敏度达到96.6%,特异性达到99.2%。考虑到BHK测试中的评分者内和评分者间的一致性水平,我们的技术对专家来说具有相当的准确性,并且可以直接作为一种诊断工具进行部署。