A statistical procedure to assist dysgraphia detection through dynamic modelling of handwriting

Yunjiao Lu, Jean-Charles Quinton, Caroline Jolly, Vincent Brault
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Abstract

Dysgraphia is a neurodevelopmental condition in which children encounter difficulties in handwriting. Dysgraphia is not a disorder per se, but is secondary to neurodevelopmental disorders, mainly dyslexia, Developmental Coordination Disorder (DCD, also known as dyspraxia) or Attention Deficit Hyperactivity Disorder (ADHD). Since the mastering of handwriting is central for the further acquisition of other skills such as orthograph or syntax, an early diagnosis and handling of dysgraphia is thus essential for the academic success of children. In this paper, we investigated a large handwriting database composed of 36 individual symbols (26 isolated letters of the Latin alphabet written in cursive and the 10 digits) written by 545 children from 6,5 to 16 years old, among which 66 displayed dysgraphia (around 12\%). To better understand the dynamics of handwriting, mathematical models of nonpathological handwriting have been proposed, assuming oscillatory and fluid generation of strokes (Parsimonious Oscillatory Model of Handwriting [Andr\'e, 2014]). The purpose of this work is to study how such models behave when applied to children dysgraphic handwriting, and whether a lack of fit may help in the diagnosis, using a two-layer classification procedure with different compositions of classification algorithms.
通过笔迹动态建模辅助书写障碍检测的统计程序
书写障碍是一种神经发育疾病,儿童在书写时会遇到困难。书写障碍本身并不是一种疾病,但它是神经发育障碍的次要疾病,主要是阅读障碍、发育协调障碍(DCD,又称肢体障碍)或注意力缺陷多动障碍(ADHD)。由于掌握书写是进一步掌握其他技能(如正字法或句法)的关键,因此,对书写障碍的诊断和处理对儿童学业的成功至关重要。本文研究了一个大型手写数据库,该数据库由 545 名 6.5 至 16 岁儿童书写的 36 个独立符号(草书书写的 26 个拉丁字母和 10 个数字)组成,其中 66 名儿童有书写障碍(约占 12%)。为了更好地理解笔迹的动态变化,有人提出了非病理性笔迹的数学模型,假定笔迹的振荡和流动生成(笔迹的解析振荡模型 [Andr\'e, 2014])。这项工作的目的是研究这些模型在应用于儿童书写障碍时的表现,以及缺乏拟合是否有助于诊断,研究中使用了一种具有不同分类算法组合的双层分类程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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