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PANDAS: Paediatric Attention-Deficit/Hyperactivity Disorder Application Software*

机译:PANDAS:小儿注意力缺陷/多动症应用软件*

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Attention-deficit/hyperactivity disorder (ADHD) is a common neuropsychiatric disorder that impairs social, academic, and occupational functioning in children, adolescents and adults. In South Africa, youth prevalence of ADHD is estimated as 10%. It is therefore necessary to further investigate methods that objectively diagnose, treat, and manage the disorder. The aim of the study was to develop a novel method that could be used as an aid to provide screening for ADHD. The study comprised of a beta-testing phase that included 30 children (19 non-ADHD and 11 ADHD) between the ages of 5 and 16 years old. The strategy was to use a tablet-based game that gathered real-time user data during game-play. This data was then used to train a linear binary support vector machine (SVM). The objective of the SVM was to differentiate between an ADHD individual versus a non-ADHD individual. A feature set was extracted from the gathered data and sequential forward selection (SFS) was performed to select the most significant features. The test set accuracy of 85.7% and leave-one-out cross-validation (LOOCV) accuracy of 83.5% were achieved. Overall, the classification accuracy of the trained SVM was 86.5%. Finally, the sensitivity of the model was 75% and this was seen as a moderate result. Since the sample size was fairly small, the results of the classifier were only seen as suggestive rather than conclusive. Therefore, the performance of the classifier was indicative that a quantitative tool could indeed be developed to perform screening for ADHD.
机译:注意缺陷/多动障碍(ADHD)是一种常见的神经精神疾病,会损害儿童,青少年和成人的社交,学术和职业功能。在南非,青少年多动症的患病率估计为10%。因此,有必要进一步研究客观诊断,治疗和控制该疾病的方法。这项研究的目的是开发一种新方法,可以用作对多动症进行筛查的辅助手段。该研究包括一个beta测试阶段,其中包括30位5至16岁的儿童(19位非ADHD和11位ADHD)。策略是使用基于平板电脑的游戏,该游戏在游戏过程中收集实时用户数据。然后,该数据用于训练线性二进制支持向量机(SVM)。 SVM的目的是区分ADHD个人和非ADHD个人。从收集的数据中提取特征集,并进行顺序前向选择(SFS)以选择最重要的特征。测试集的准确度为85.7%,留一法交叉验证(LOOCV)的准确度为83.5%。总体而言,训练有素的SVM的分类准确性为86.5%。最终,模型的敏感性为75%,这被认为是中等程度的结果。由于样本量很小,分类器的结果仅被视为具有启发性,而不是结论性的。因此,分类器的性能表明确实可以开发出定量工具来进行多动症筛查。

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