A Recurrent Neural Network (RNN) was used to perform video frame prediction of microbial growth for a population of two mutants of Pseudomonas aeruginosa. The RNN was trained on videos of 20 frames that were acquired using fluorescence microscopy and microfluidics. The network predicted the last 10 frames of each video, and the accuracy's of the predictions was assessed by comparing raw images, population curves, and the number and size of individual colonies. Overall, we found the predictions to be accurate using this approach. The implications this result has on designing autonomous experiments in microbiology, and the steps that can be taken to make the predictions even more accurate, are discussed.
翻译:利用一个经常性神经网络(NNN)对两个Pseudomonas euruginosa变种人的人口进行微生物生长的视频框架预测,对NNN进行了使用荧光显微镜和微氟化物获得的20个框架的视频培训,网络预测了每个视频的最后10个框架,通过比较原始图像、人口曲线和单个聚居点的数量和大小评估了预测的准确性。总的来说,我们发现使用这种方法的预测是准确的。讨论了这一结果对设计微生物学自主实验的影响,以及为使预测更加准确而可以采取的步骤。