Machine Learning-based Evaluation of Heart Rate Variability Response in Children with Autism Spectrum Disorder

Vazeer Ali Mohammed, Mehmood Ali Mohammed, Murtuza Ali Mohammed, J. Logeshwaran, Nasmin Jiwani
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引用次数: 6

Abstract

At present, various electronic devices are used to monitor human heart rates. However, its functions are to avoid predicting the problems caused by heart rate variability in advance and analyzing its implications. It makes it difficult to diagnose problems caused by heart rate variability. A human should have an average heart rate of 72. At the same time, the newborn's heart should beat between 120 and 160 beats per minute. A baby born with autism spectrum disorder may have a lower-than-average heart rate. Complete blockage of the heart at birth is rare. Abnormal heart rate leads to heart block. So, there is a high chance of the child's death due to permanent heart blockage at any time. Most heart diseases in children with Autism Spectrum Disorder (ASD) are present at birth. A significant congenital disability is a hole in the heart. Many people do not realize that having holes in the heart is a common occurrence. Before the baby is born, tiny holes form in the muscular wall that divides the heart into the right and left halves. This paper proposed Machine Learning-Based Evaluation to identify the Heart Rate Variability Response in Children with Autism Spectrum Disorder with Autism Spectrum Disorder. The reasons for this are yet to be identified. However, 70 per cent of perforations resolve spontaneously before or after birth. Exceptionally, Children with Autism Spectrum Disorder with perforations that do not close properly may require surgery or a perforator brace, depending on the location and size of the perforation.
基于机器学习的自闭症谱系障碍儿童心率变异性反应评估
目前,各种电子设备被用来监测人体心率。然而,它的功能是避免提前预测心率变异性引起的问题并分析其影响。这使得诊断由心率变异性引起的问题变得困难。人类的平均心率应该是72。同时,新生儿的心跳应该在每分钟120到160次之间。患有自闭症谱系障碍的婴儿的心率可能低于平均水平。出生时心脏完全堵塞是罕见的。心率异常会导致心脏传导阻滞。所以这孩子随时都有可能因永久性心脏阻塞而死亡。大多数患有自闭症谱系障碍(ASD)的儿童在出生时就患有心脏病。一种重要的先天性残疾是心脏上有一个洞。许多人没有意识到心脏上有洞是一种常见的现象。在婴儿出生前,肌肉壁上就形成了小孔,将心脏分成左右两半。本文提出了基于机器学习的评估方法来识别自闭症谱系障碍儿童的心率变异性反应。其原因尚不清楚。然而,70%的穿孔会在出生前或出生后自行消退。在特殊情况下,患有自闭症谱系障碍的儿童如果穿孔不能正常闭合,可能需要手术或穿孔支架,这取决于穿孔的位置和大小。
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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