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Pattern recognition of the movement tracks of medaka (Oryzias latipes) in response to sub-lethal treatments of an insecticide by using artificial neural networks

机译:通过使用人工神经网络对杀虫剂的亚致死处理做出响应的高加索(Oryzias latipes)运动轨迹的模式识别

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Specimens of medaka (Oryzias latipes) were observed continuously through an automatic image recognition system before and after treatments of an anti-cholinesterase insecticide, diazinon (0.1 mg/1), for 4 days in semi-natural conditions (2 days before treatment and 2 days after treatment). The "smooth" pattern was typically shown as a normal movement behavior, while the "shaking" pattern was frequently observed after treatments of diazinon. These smooth and shaking patterns were selected for training with an artificial neural network. Parameters characterizing the movement tracks, such as speed, degree of backward movements, stop duration, turning rate, meander, and maximum distance movements in the y-axis of 1-min duration, were given as input (six nodes) to a multi-layer perceptron with the backpropagation algorithm. Binary information for the smooth and shaking patterns was separately given as the matching output (one node), while eight nodes were assigned to a single hidden layer. As new input data were given to the trained network, it was possible to recognize the smooth and shaking patterns of the new input data. Average recognition rates of the smooth pattern decreased significantly while those for the shaking pattern increased to a higher degree after treatments of diazinon. The trained network was able to reveal the difference in the shaking pattern in different light phases before treatments of diazinon. This study demonstrated that artificial neural networks could be useful for detecting the presence of toxic chemicals in the environment by serving as in-situ behavioral monitoring tools.
机译:在半自然条件下(治疗前2天和治疗2天),通过自动图像识别系统在抗胆碱酯酶杀虫剂二嗪农(0.1 mg / 1)处理之前和之后,连续不断地观察青(Oryzias latipes)的标本。天数)。通常将“平滑”模式显示为正常运动行为,而在处理二嗪农后经常观察到“摇动”模式。选择这些平滑和摇动的模式以通过人工神经网络进行训练。将代表运动轨迹的参数(例如速度,后退程度,停止持续时间,转弯速率,曲折和在1分钟持续时间的y轴上的最大距离运动)作为输入(六个节点)反向传播算法实现层感知器。平滑和抖动模式的二进制信息分别作为匹配输出(一个节点)给出,而八个节点被分配给单个隐藏层。当将新的输入数据提供给经过训练的网络时,可以识别出新输入数据的平滑和抖动模式。在处理二嗪农后,平滑模式的平均识别率显着下降,而振动模式的平均识别率则更高。经过训练的网络能够在处理二嗪农之前揭示不同光相中的振动模式差异。这项研究表明,人工神经网络可以用作现场行为监测工具,可用于检测环境中有毒化学物质的存在。

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