用机器学习算法自动化、分析和改进瞳孔测量

György Kalmár, A. Büki, G. Kékesi, G. Horváth, L. G. Nyúl
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引用次数: 2

摘要

瞳孔光反射(PLR)的研究是提供自主神经系统功能信息的一种众所周知的方法。瞳孔测定法是一种非侵入性技术,用于研究一种名为WISKET的新型精神分裂症样大鼠亚株的PLR变化。用红外摄像机记录瞳孔对光脉冲的反应;对视频进行自动处理,提取特征。除了经典的统计分析(ANOVA)外,还应用特征选择和分类来揭示对照组和WISKET动物之间PLR参数的显著差异。在此基础上,分析了该方法的缺点,对测量过程进行了重新设计和改进。自动瞳孔检测方法也适应了新的视频。对2564张图像进行人工标注,并用于训练一个全卷积神经网络来生成瞳孔掩膜图像。该方法在329张测试图像上进行了评估,平均相对误差为4%。实验结果表明,该方法对瞳孔的检测更加可靠,数据采集也具有较好的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automating, Analyzing and Improving Pupillometry with Machine Learning Algorithms
The investigation of the pupillary light reflex (PLR) is a well-known method to provide information about the functionality of the autonomic nervous system. Pupillometry, a non-invasive technique, was applied to study the PLR alterations in a new, schizophrenia-like rat substrain, named WISKET. The pupil responses to light impulses were recorded with an infrared camera; the videos were automatically processed and features were extracted. Besides the classical statistical analysis (ANOVA), feature selection and classification were applied to reveal the significant differences in the PLR parameters between the control and WISKET animals. Based on these results, the disadvantages of this method were analyzed and the measurement process was redesigned and improved. The automated pupil detection method has also been adapted to the new videos. 2564 images were annotated manually and used to train a fully-convolutional neural network to produce pupil mask images. The method was evaluated on 329 test images and achieved 4% median relative error. With the new setup, the pupil detection became reliable and the new data acquisition offers robustness to the experiments.
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