Has Machine Learning Enhanced the Diagnosis of Autism Spectrum Disorder?

Rudresh Deepak Shirwaikar, Iram Sarwari, Mehwish Najam, Shama H M
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Abstract

Autism spectrum disorder (ASD) is a complex neurological condition that limits an individual's capacity for communication and learning throughout their life. Although symptoms of Autism can be diagnosed in individuals of different ages, it is labeled as a developmental disorder because symptoms typically start to show up in the initial 2 years of childhood. Autism has no single known cause but multiple factors contribute to its etiology in children. Because symptoms and severity of ASD vary in every individual, there could be many causes. Detection of ASD in the early stages is crucial for providing a path for rehabilitation that enhances the quality of life and integrates the ASD person into the social, family, and professional spheres. Assessment of ASD includes experienced observers in neutral environments, which brings constraints and biases to a lack of credibility and fails to accurately reflect performance in terms of real-world scenarios. To get around these limitations, the conducted review offers a thorough analysis of the impact on the individual and the ones living around them and most recent research on how these techniques are implemented in the diagnosis of ASD. As a result of improvements in technology, assessments now include processing unconventional data than can be collected from measurements arising out of laboratory chemistry or of electrophysiological origin. Examples of these technologies include virtual reality and sensors including eye-tracking imaging. Studies have been conducted towards recognition of emotion and brain networks to identify functional connectivity and discriminate between people with ASD and people who are thought to be typically developing. Diagnosis of Autism has recently made substantial use of long short term memory (LSTM), convolutional neural network (CNN) and its variants, the random forest (RF) and naive Bayes (NB) machine learning techniques. It is hoped that researchers will develop methodologies that increase the probability of identification of ASD in its varied forms and contribute towards improved lifestyle for patients with ASD and those affected by the pathology.

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机器学习是否增强了自闭症谱系障碍的诊断?
自闭症谱系障碍(ASD)是一种复杂的神经系统疾病,它限制了个体一生的沟通和学习能力。虽然自闭症的症状可以在不同年龄的个体中诊断出来,但它被标记为一种发育障碍,因为症状通常在儿童的头两年开始出现。自闭症没有单一的已知病因,但多种因素导致其在儿童中的病因。由于自闭症谱系障碍的症状和严重程度因人而异,可能有很多原因。早期发现ASD对于提供康复途径,提高生活质量,使ASD患者融入社会、家庭和专业领域至关重要。对ASD的评估包括在中立环境中有经验的观察者,这给缺乏可信度带来了限制和偏见,并且不能准确地反映现实场景中的表现。为了克服这些限制,本综述对这些技术对个体及其周围环境的影响进行了全面分析,并对这些技术在自闭症谱系障碍诊断中的应用进行了最新研究。由于技术的进步,现在的评估包括处理非常规数据,而不是从实验室化学或电生理来源的测量中收集数据。这些技术的例子包括虚拟现实和包括眼球追踪成像在内的传感器。研究人员对情绪和大脑网络的识别进行了研究,以确定功能连接,并区分自闭症患者和被认为是正常发展的人。自闭症诊断最近大量使用了长短期记忆(LSTM)、卷积神经网络(CNN)及其变体、随机森林(RF)和朴素贝叶斯(NB)机器学习技术。希望研究人员能够开发出方法,增加各种形式的ASD的识别可能性,并为改善ASD患者和受病理影响的患者的生活方式做出贡献。
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来源期刊
Critical Reviews in Biomedical Engineering
Critical Reviews in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
1.80
自引率
0.00%
发文量
25
期刊介绍: Biomedical engineering has been characterized as the application of concepts drawn from engineering, computing, communications, mathematics, and the physical sciences to scientific and applied problems in the field of medicine and biology. Concepts and methodologies in biomedical engineering extend throughout the medical and biological sciences. This journal attempts to critically review a wide range of research and applied activities in the field. More often than not, topics chosen for inclusion are concerned with research and practice issues of current interest. Experts writing each review bring together current knowledge and historical information that has led to the current state-of-the-art.
期刊最新文献
A Review on Implantable Neuroelectrodes. Using Fuzzy Mathematical Model in the Differential Diagnosis of Pancreatic Lesions Using Ultrasonography and Echographic Texture Analysis. Has Machine Learning Enhanced the Diagnosis of Autism Spectrum Disorder? Smart Microfluidics: Synergy of Machine Learning and Microfluidics in the Development of Medical Diagnostics for Chronic and Emerging Infectious Diseases. Engineers in Medicine: Foster Innovation by Traversing Boundaries.
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