Yucel Zeynep, Sara Yildirim, Duygulu Pinar, Onur Rustu, Esen Emre, Ozguler A Bulent
Department of Electrical and Electronics Engineering, Bilkent University, Ankara, Turkey.
J Neurosci Methods. 2009 Jun 15;180(2):234-42. doi: 10.1016/j.jneumeth.2009.03.014. Epub 2009 Mar 27.
We developed an inexpensive computer vision-based method utilizing an algorithm which differentiates drug-induced behavioral alterations. The mice were observed in an open-field arena and their activity was recorded for 100 min. For each animal the first 50 min of observation were regarded as the drug-free period. Each animal was exposed to only one drug and they were injected (i.p.) with either amphetamine or cocaine as the stimulant drugs or morphine or diazepam as the inhibitory agents. The software divided the arena into virtual grids and calculated the number of visits (sojourn counts) to the grids and instantaneous speeds within these grids by analyzing video data. These spatial distributions of sojourn counts and instantaneous speeds were used to construct feature vectors which were fed to the classifier algorithms for the final step of matching the animals and the drugs. The software decided which of the animals were drug-treated at a rate of 96%. The algorithm achieved 92% accuracy in sorting the data according to the increased or decreased activity and then determined which drug was delivered. The method differentiated the type of psychostimulant or inhibitory drugs with a success ratio of 70% and 80%, respectively. This method provides a new way to automatically evaluate and classify drug-induced behaviors in mice.
我们开发了一种基于计算机视觉的低成本方法,该方法利用一种算法来区分药物引起的行为改变。在旷场实验箱中观察小鼠,并记录它们100分钟的活动情况。对于每只动物,观察的前50分钟被视为无药物期。每只动物仅接触一种药物,分别腹腔注射苯丙胺或可卡因作为兴奋性药物,或吗啡或地西泮作为抑制性药物。该软件将实验箱划分为虚拟网格,并通过分析视频数据计算小鼠对网格的访问次数(停留计数)以及这些网格内的瞬时速度。停留计数和瞬时速度的这些空间分布用于构建特征向量,这些特征向量被输入到分类算法中,用于动物与药物匹配的最后一步。该软件以96%的准确率判定哪些动物接受了药物处理。该算法在根据活动增加或减少对数据进行分类时的准确率达到92%,然后确定给予了哪种药物。该方法区分精神兴奋性药物或抑制性药物类型的成功率分别为70%和80%。这种方法为自动评估和分类小鼠药物诱导行为提供了一种新途径。