Canadian Center for Behavioural Neuroscience, University of Lethbridge, Lethbridge, Alberta, Canada.
Coastline Automation, San Jose, California, United States of America.
PLoS Biol. 2019 Nov 21;17(11):e3000516. doi: 10.1371/journal.pbio.3000516. eCollection 2019 Nov.
Behavior provides important insights into neuronal processes. For example, analysis of reaching movements can give a reliable indication of the degree of impairment in neurological disorders such as stroke, Parkinson disease, or Huntington disease. The analysis of such movement abnormalities is notoriously difficult and requires a trained evaluator. Here, we show that a deep neural network is able to score behavioral impairments with expert accuracy in rodent models of stroke. The same network was also trained to successfully score movements in a variety of other behavioral tasks. The neural network also uncovered novel movement alterations related to stroke, which had higher predictive power of stroke volume than the movement components defined by human experts. Moreover, when the regression network was trained only on categorical information (control = 0; stroke = 1), it generated predictions with intermediate values between 0 and 1 that matched the human expert scores of stroke severity. The network thus offers a new data-driven approach to automatically derive ratings of motor impairments. Altogether, this network can provide a reliable neurological assessment and can assist the design of behavioral indices to diagnose and monitor neurological disorders.
行为提供了对神经元过程的重要见解。例如,对伸手动作的分析可以可靠地表明中风、帕金森病或亨廷顿病等神经疾病的损害程度。这种运动异常的分析非常困难,需要经过训练的评估者。在这里,我们表明,深度神经网络能够以专家的准确性对中风的啮齿动物模型进行行为损伤评分。同一网络还经过训练,可以成功对各种其他行为任务的运动进行评分。神经网络还揭示了与中风相关的新的运动改变,这些改变对中风体积的预测能力高于人类专家定义的运动成分。此外,当回归网络仅基于分类信息(对照 = 0;中风 = 1)进行训练时,它会生成介于 0 和 1 之间的中间值预测,与人类专家对中风严重程度的评分相匹配。因此,该网络为自动得出运动损伤评分提供了一种新的数据驱动方法。总的来说,该网络可以提供可靠的神经评估,并有助于设计用于诊断和监测神经疾病的行为指标。