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Deformation modeling and classification using deep convolutional neural networks for computerized analysis of neuropsychological drawings

机译:多卷积神经网络对神经心理学绘图计算机分析的变形建模与分类

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摘要

Drawing-based tests are cost-effective, noninvasive screening methods, popularly employed by psychologists for the early detection and diagnosis of various neuropsychological disorders. Computerized analysis of such drawings is a complex task due to the high degree of deformations present in the responses and reliance on extensive clinical manifestations for their inferences. Traditional rule-based approaches employed in visual analysis-based systems prove insufficient to model all possible clinical deformations. Meanwhile, procedural analysis-based techniques may contradict with the standard test conduction and evaluation protocols. Leveraging on the increasing popularity of convolutional neural networks (CNNs), we propose an effective technique for modeling and classifying dysfunction indicating deformations in drawings without modifying clinical standards. Contrary to conventional sketch recognition applications where CNNs are trained to diminish intra-shape class variations, we employ deformation-specific augmentation to enhance the presence of specific deviations that are defined by clinical practitioners. The performance of our proposed technique is evaluated using Lacks' scoring of the Bender-Gestalt test, as a case study. The results of our experimentation substantiate that our proposed approach can represent domain knowledge sufficiently without extensive heuristics and can effectively identify drawing-based biomarkers for various neuropsychological disorders.
机译:基于绘制的测试是具有成本效益的非侵入性筛选方法,受到心理学家的普遍存在的是,用于早期检测和诊断各种神经心理学疾病。由于响应中存在的高度变形以及对其推论的广泛临床表现,因此,这种附图的计算机化分析是一种复杂的任务。基于视觉分析的系统中使用的传统规则方法证明了不足以建模所有可能的临床变形。同时,基于程序分析的技术可能与标准测试传导和评估方案相矛盾。利用卷积神经网络的日益普及(CNNS),我们提出了一种有效的技术,用于在不改变临床标准的情况下进行建模和分类功能障碍指示功能的功能障碍。与传统的草图识别应用相反,其中CNN培训以减少形状帧内级别变化,我们采用变形特异性的增强以增强由临床从业者定义的特定偏差的存在。通过缺乏对BENDER-GESTALT测试的评估,评估了我们提出的技术的性能,作为案例研究。我们的实验结果证实了我们所提出的方法可以充分地表示具有广泛启发式的域知识,并且可以有效地识别各种神经心理学疾病的基于绘制的生物标志物。

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