Extracting Social Network Contents to Classify ADHD Types Based on Behavioral Symptoms and Activities

Pornsiri Chatpreecha, Sasiporn Usanavasin
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引用次数: 1

Abstract

The Attention Deficit Hyperactivity Disorder (ADHD) is a complex mental health disorder that affects children's learning activities and also their relationships with other children. There are various types of ADHD symptoms, which some of them can be easily recognized as indicators of having ADHD and some of them are difficult to specify as symptoms. Generally, the average age for diagnosing ADHD in children is around seven years old. It is better to early discover these symptoms in children and classify their ADHD types so appropriate and necessary treatments can be effectively applied to improve ADHD children’s behaviors and learning activities. The ADHD diagnosis takes a lot longer for children under six years old. This research aims to improve the ADHD diagnosis and attempt to discover symptoms and behavioral activities that can be the important indicators for classifying ADHD types of the children. Today, many parents share knowledge and experiences about their children in social networks. These shareable contents can be useful to help identify some ADHD symptoms as well as recommended treatments or activities for the children. Thus, in this work, we propose an approach to extract contents from social media (e.g., Facebook contents) in order to discover the information regarding ADHD symptoms and use this extracted information to classify ADHD types based on the behavioral symptoms and activities. To verify our results, we use three sets of criteria from the Diagnostic and Manual of Mental Disorders (DSM) that are used by many ADHD specialists and medical doctors. The three sets of criteria include SNAP-IV, Vanderbilt Assessment Scale, and KUS-SI. Our research goal is to provide a way to help parents to find relevant information and learn about ADHD types and their related symptoms as well as recommended activities for improving ADHD conditions in children.
基于行为症状和活动提取社交网络内容分类ADHD类型
注意缺陷多动障碍(ADHD)是一种复杂的心理健康障碍,影响儿童的学习活动以及他们与其他孩子的关系。ADHD症状有多种类型,其中一些很容易被识别为患有ADHD的指标,而另一些则很难被指定为症状。一般来说,诊断儿童多动症的平均年龄在7岁左右。最好在儿童早期发现这些症状,并对ADHD类型进行分类,以便有效地进行适当和必要的治疗,以改善ADHD儿童的行为和学习活动。对于六岁以下的儿童,ADHD的诊断需要更长的时间。本研究旨在提高ADHD的诊断水平,并试图发现症状和行为活动可以作为区分儿童ADHD类型的重要指标。今天,许多父母在社交网络上分享他们孩子的知识和经验。这些可共享的内容可以帮助识别ADHD的一些症状,以及为孩子推荐的治疗方法或活动。因此,在这项工作中,我们提出了一种从社交媒体(例如Facebook内容)中提取内容的方法,以发现有关ADHD症状的信息,并使用这些提取的信息根据行为症状和活动对ADHD类型进行分类。为了验证我们的结果,我们使用了许多ADHD专家和医生使用的《精神疾病诊断与手册》(DSM)中的三套标准。三套标准包括SNAP-IV、Vanderbilt Assessment Scale和KUS-SI。我们的研究目标是提供一种方法,帮助家长找到相关信息,了解ADHD类型及其相关症状,以及改善儿童ADHD状况的推荐活动。
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