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Predicting outcome of Morris water maze test in vascular dementia mouse model with deep learning

机译:深度学习预测血管性痴呆小鼠模型中Morris水迷宫测试的结果

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摘要

The Morris water maze test (MWM) is one of the most popular and established behavioral tests to evaluate rodents’ spatial learning ability. The conventional training period is around 5 days, but there is no clear evidence or guidelines about the appropriate duration. In many cases, the final outcome of the MWM seems predicable from previous data and their trend. So, we assumed that if we can predict the final result with high accuracy, the experimental period could be shortened and the burden on testers reduced. An artificial neural network (ANN) is a useful modeling method for datasets that enables us to obtain an accurate mathematical model. Therefore, we constructed an ANN system to estimate the final outcome in MWM from the previously obtained 4 days of data in both normal mice and vascular dementia model mice. Ten-week-old male C57B1/6 mice (wild type, WT) were subjected to bilateral common carotid artery stenosis (WT-BCAS) or sham-operation (WT-sham). At 6 weeks after surgery, we evaluated their cognitive function with MWM. Mean escape latency was significantly longer in WT-BCAS than in WT-sham. All data were collected and used as training data and test data for the ANN system. We defined a multiple layer perceptron (MLP) as a prediction model using an open source framework for deep learning, Chainer. After a certain number of updates, we compared the predicted values and actual measured values with test data. A significant correlation coefficient was derived form the updated ANN model in both WT-sham and WT-BCAS. Next, we analyzed the predictive capability of human testers with the same datasets. There was no significant difference in the prediction accuracy between human testers and ANN models in both WT-sham and WT-BCAS. In conclusion, deep learning method with ANN could predict the final outcome in MWM from 4 days of data with high predictive accuracy in a vascular dementia model.
机译:莫里斯水迷宫测试(MWM)是评估啮齿动物空间学习能力的最流行和公认的行为测试之一。常规培训时间大约为5天,但是没有适当时间的明确证据或指南。在许多情况下,MWM的最终结果似乎可以根据先前的数据及其趋势来预测。因此,我们假设,如果我们可以高精度地预测最终结果,则可以缩短实验周期并减轻测试人员的负担。人工神经网络(ANN)是一种有用的数据集建模方法,可使我们获得准确的数学模型。因此,我们构建了一个ANN系统,以从先前在正常小鼠和血管性痴呆模型小鼠中获得的4天数据评估MWM的最终结果。对十周大的雄性C57B1 / 6小鼠(野生型,WT)进行双侧颈总动脉狭窄(WT-BCAS)或假手术(WT-sham)。术后6周,我们用MWM评估了他们的认知功能。 WT-BCAS中的平均逃避潜伏期明显长于WT-sham。收集了所有数据,并将其用作ANN系统的训练数据和测试数据。我们使用深度学习的开源框架Chainer将多层感知器(MLP)定义为预测模型。经过一定数量的更新后,我们将预测值和实际测量值与测试数据进行了比较。 WT-sham和WT-BCAS中更新后的ANN模型都得出了显着的相关系数。接下来,我们分析了具有相同数据集的人类测试人员的预测能力。在WT-sham和WT-BCAS中,人类测试人员和ANN模型之间的预测准确性没有显着差异。总而言之,采用ANN的深度学习方法可以从4天的数据中预测出MWM的最终结果,该数据在血管性痴呆模型中具有很高的预测准确性。

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