使用机器学习检测幼儿自闭症谱系障碍的早期诊断

S. Islam, Tahmina Akter, S. Zakir, Shareea Sabreen, Muhammad Iqbal Hossain
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引用次数: 4

摘要

自闭症谱系障碍(ASD)是一种患者无法表达和互动的疾病。最近,每59个儿童中就有一个被确定为自闭症谱系障碍患者,这是一个值得关注的问题。自闭症从儿童时期就开始出现,但成年后才会出现症状。这就是为什么这些儿童在很小的时候就不能得到适当的治疗,这使他们的健康更加复杂。研究表明,在早期诊断自闭症更为可靠和稳定。因此,我们的研究旨在比以往的研究更快地估计ASD(自闭症谱系障碍),提高准确性,降低医疗成本。在我们的论文中,我们希望通过使用机器学习方法来预测和区分自闭症和非自闭症儿童。首先,我们尽可能多地从监测方面收集数据。我们还设置了一些特定的问题,并试图找到所有问题的最准确的答案。此外,监督学习算法被应用于诊断儿童是否符合ASD的症状。在所有应用的算法中,KNN和随机森林的诊断准确率和速度最高。最重要的是,我们的最终目标是创建一个在线工具,可以为用户提供基于机器学习的分析,以便在早期精确检测自闭症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autism Spectrum Disorder Detection in Toddlers for Early Diagnosis Using Machine Learning
Autism spectrum disorder (ASD) is a disorder where patients are unable to express and interact. Recently it is an issue to be concerned that one in 59 children has identified as an autism spectrum disorder patient. ASDs start from childhood but symptoms can be detected in adulthood. That is why these children are not being able to have proper treatment at an early age and that causes more complexity in their health. Research shows that a diagnosis of autism at an earlier age can be more reliable and stable. Therefore, our study aims to estimate ASD (autism spectrum disorder) at a sooner possible time and increase more accuracy than the previous research and reduce medical costs. In our thesis paper, we want to predict and distinguish between autistic and non-autistic children by using a machine learning approach. Firstly, we have gathered data from the surveillance side as much as possible. We also set some particular questions and try to find maximum accurate answers to all questions. Furthermore, supervised learning algorithms are applied to diagnosis whether children meet the symptoms for ASD. Among all applied algorithms KNN and Random Forest shows maximum accuracy and speed to diagnosis. Above all, our final goal is to create an online tool that can provide machine learning-based analysis to a user to detect autism at an early age precisely.
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