使用CNN和Inception V3迁移学习设计深度学习混合检测儿童深度强迫症的攻击水平

Q4 Biochemistry, Genetics and Molecular Biology
Mukesh Madanan, B. Sayed
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引用次数: 4

摘要

人工智能在医学领域的应用已被证明是检测和诊断几种疾病的游戏规则改变者。在当前的数字时代,有压力性医疗问题的儿童正遭受深度强迫症(DOCD)的折磨。这种精神压力发生在儿童身上,是因为他们不断使用手机、使用游戏机玩游戏、在平板电脑上看视频等小工具。在大多数情况下,单身儿童都会受到一些困扰,比如顽固的活动、为自私的优先事项而战等等,这些类型的复杂行为变化被识别为DOCD。遗传行为有时在少数儿童群体中也被视为一种模态差异。由于症状是精神障碍,这样的孩子会保持孤立、异常沉默、痴迷和重复无关的单词、高压力或焦虑。所有的医学挑战都可以作为医疗保健研究指标来对待,这一代儿童DOCD障碍的逐渐增加也可以被考虑。DOCD的早期检测至关重要,因为它可以帮助早期诊断,但目前还没有这样的技术。深度学习是一种人工智能方法,可用于检测、诊断和治疗DOCD,并使儿童具有积极的性格。可以使用迁移学习算法对儿童的行为变化进行分类和检测。在新冠肺炎大流行的情况下,3%的DOCD作为一种疾病增加到10-15%。这些信息是通过监测儿童的负面活动、咬指甲、摘下眼镜放错地方、多看平板电脑、手机和电视等异常行为来获取的。使用卷积神经网络(CNN),诸如MRI(磁共振成像)的输入用于实验从图像数据集中分析的高维行为的变化。使用具有Inception V3-的迁移学习,可以对发音错误水平的CNN泛化进行统计分析,以避免过拟合问题。通过使用人工智能技术,可以使用数据增强方法预测攻击性水平,该方法比现有系统具有更好的准确性和较低的错误率。在研究中观察到,与使用的现有CNN模型相比,使用使用Inception-V3迁移学习CNN的模型可以实现对攻击水平的更好预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing a Deep Learning Hybrid Using CNN and Inception V3 Transfer Learning to Detect the Aggression Level of Deep Obsessive Compulsive Disorder in Children
The usage of Artificial intelligence in medical arena has proved to be a game changer in the detection and diagnosis of several medical conditions. In the current digital era, children with stressful medical issues are suffering from Deep Obsessive-Compulsive Disorder (DOCD). This kind of mental stress occurs in children because of the continuous usage of gadgets such as mobile phone, playing games using play stations, watching videos on tablets, etc. In most of the possibilities, single children are the ones affected with several obsessions such as stubborn activities, fighting for selfish priorities and so on. In medical terms, these kinds of complex behavioral changes are identified as DOCD. Genetic behaviors sometimes in a few group of children are also noticed as a modality difference. As symptoms are psychiatric impairment, such a child remains isolated, abnormal silence, being obsessive and repeating irrelevant words, high stress or anxiety. All medical challenges could be treated as healthcare research metrics and the gradual increase in DOCD disorder among children of this generation can be considered too. Early detection of DOCD is essential as it can help in early diagnosis but techniques to do so is unavailable currently. Deep learning-an artificial intelligence method can be utilized to detect DOCD, diagnose and treat it and bring about a positive character in children. Behavior changes in children can be classified and detected using transfer learning algorithms. In COVID-19 pandemic situation, 3% of DOCD has increased to 10-15% as a disorder. This information is retrieved from children by monitoring negative activities, unusual behavior such as nail biting, removing spectacles and placing them in the wrong place, watching tablets, mobile phones and television for more hours. Using Convolutional Neural Networks (CNN), input such as MRI (Magnetic resonance Imaging) is used for experimenting the variations in behavior with the high dimension that are analyzed from the image dataset. Using Transfer Learning with Inception V3-, CNN generalization of misophonia level can be statistically analyzed to avoid overfitting problems. By employing AI techniques, the aggression level can be predicted using data augmentation method with better accuracy and a low error rate than the existing systems. In the research it is observed that using the model employing Inception-V3 transfer learning CNN a better prediction of aggression levels can be achieved in comparison to the existing CNN model used.
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来源期刊
International Journal of Biology and Biomedical Engineering
International Journal of Biology and Biomedical Engineering Biochemistry, Genetics and Molecular Biology-Biochemistry, Genetics and Molecular Biology (all)
自引率
0.00%
发文量
42
期刊介绍: Topics: Molecular Dynamics, Biochemistry, Biophysics, Quantum Chemistry, Molecular Biology, Cell Biology, Immunology, Neurophysiology, Genetics, Population Dynamics, Dynamics of Diseases, Bioecology, Epidemiology, Social Dynamics, PhotoBiology, PhotoChemistry, Plant Biology, Microbiology, Immunology, Bioinformatics, Signal Transduction, Environmental Systems, Psychological and Cognitive Systems, Pattern Formation, Evolution, Game Theory and Adaptive Dynamics, Bioengineering, Biotechnolgies, Medical Imaging, Medical Signal Processing, Feedback Control in Biology and Chemistry, Fluid Mechanics and Applications in Biomedicine, Space Medicine and Biology, Nuclear Biology and Medicine.
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