Department of Industrial and Systems Engineering, Virginia Tech, Blacksburg, VA, 24060, USA.
Department of Psychology, The University of Alabama, Tuscaloosa, AB, USA.
J Autism Dev Disord. 2020 Nov;50(11):4039-4052. doi: 10.1007/s10803-020-04463-x.
Traditional self-injurious behavior (SIB) management can place compliance demands on the caregiver and have low ecological validity and accuracy. To support an SIB monitoring system for autism spectrum disorder (ASD), we evaluated machine learning methods for detecting and distinguishing diverse SIB types. SIB episodes were captured with body-worn accelerometers from children with ASD and SIB. The highest detection accuracy was found with k-nearest neighbors and support vector machines (up to 99.1% for individuals and 94.6% for grouped participants), and classification efficiency was quite high (offline processing at ~ 0.1 ms/observation). Our results provide an initial step toward creating a continuous and objective smart SIB monitoring system, which could in turn facilitate the future care of a pervasive concern in ASD.
传统的自我伤害行为(SIB)管理可能会对照顾者提出合规要求,并且具有低生态有效性和准确性。为了支持自闭症谱系障碍(ASD)的 SIB 监测系统,我们评估了用于检测和区分不同 SIB 类型的机器学习方法。通过佩戴在 ASD 和 SIB 儿童身上的加速度计来捕捉 SIB 发作。发现最高检测准确率是使用 k-最近邻和支持向量机(个人最高可达 99.1%,分组参与者最高可达 94.6%),分类效率也非常高(离线处理速度约为 0.1ms/观察)。我们的研究结果为创建一个连续和客观的智能 SIB 监测系统提供了初步步骤,这反过来又可以促进 ASD 中普遍关注的未来护理。