High hospitalization rates due to the global spread of Covid-19 bring about a need for improvements to classical triaging workflows. To this end, convolutional neural networks (CNNs) can effectively differentiate critical from non-critical images so that critical cases may be addressed quickly, so long as there exists some representative image for the illness. Presented is a conglomerate neural network system consisting of multiple VGG16 CNNs; the system trains on weighted skin disease images re-labelled as critical or non-critical, to then attach to input images a critical index between 0 and 10. A critical index offers a more comprehensive rating system compared to binary critical/non-critical labels. Results for batches of input images run through the trained network are promising. A batch is shown being re-ordered by the proposed architecture from most critical to least critical roughly accurately.
翻译:由于Covid-19的全球传播导致住院率高,因此有必要改进典型的三角工作流程。为此,进化神经网络(CNNs)可以有效地区分关键和非关键图像,以便快速处理关键病例,只要该疾病有某种具有代表性的图像即可。提出的是一个由多个VGG16有线电视新闻网组成的联合神经网络系统;加权皮肤疾病图像的系统列车重新标注为关键或非关键,然后在输入图像上附加一个0至10之间的关键指数。 与二进制关键/非关键标签相比,关键指数提供了更加全面的评级系统。 通过培训网络运行的成批输入图像的结果很有希望。 一组输入图像被拟议的结构从最关键到最不准确的组合重新排序。