利用人工智能诊断神经发育障碍的新方法

P. Vashisht, A. Jatain
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引用次数: 1

摘要

人工智能(AI)在医学领域发展迅速。当今世界上最重要的医学领域之一是神经发育,诊断任何与此相关的疾病都是压倒性的。考虑到神经发育在孩子的成长和营养中起着重要的作用,这句话是一种讽刺,因为父母不希望自己的孩子比同龄的孩子拥有更低的能力。事实上,测试孩子的金属生长是一项繁琐的任务,每次都要去看医生,花费大量的时间。本文的建议是利用计算机辅助技术来识别神经发育障碍,从而克服上述困难。提出的框架以数学和深度学习(DL)模型为基础,这些模型有助于诊断四种不同的神经发育障碍,这些障碍通常发生在儿童生命的早期阶段。在此提出的申请,将为家长和老师提供适当的治疗方法和策略,帮助他们的孩子从疾病中恢复过来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Approach for Diagnosing Neuro-Developmental Disorders using Artificial Intelligence
Artificial Intelligence (AI) has been rapidly advancing especially in the field of medicine. One of the highly considerable medical fields in the world today is that of neurodevelopment and diagnosing any disorders pertaining to the same can be overwhelming. Considering the fact that neurodevelopment plays a significant role in the growth and nourishment of a child, the former sentence is an irony as parents wouldn’t wish for their children to possess reduced capabilities in comparison to other children of the same age. In fact, testing the metal growth of a child is a tedious task which involves visiting the doctor each time and spending a lot of time. The proposition of this paper overcomes the above--mentioned hassles by utilizing computer aided techniques for identifying neurodevelopmental disorder. The proposed framework has its foundation over mathematical and Deep Learning (DL) models which helps in the diagnosis of four varied neurodevelopmental disorders which often tend to occur in the early phases of a child’s life. The application put forward here would suggest suitable remedies and strategies to parents and teachers which they can adopt to help their child recover from the illness.
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