论文标题

蚊帐:一种基于深度学习的CADX系统,用于疟疾诊断以及使用GradCAM和类激活图的模型解释

MOSQUITO-NET: A deep learning based CADx system for malaria diagnosis along with model interpretation using GradCam and class activation maps

论文作者

Kumar, Aayush, Singh, Sanat B, Satapathy, Suresh Chandra, Rout, Minakhi

论文摘要

疟疾被认为是当今世界上最致命的疾病之一,每年会导致数千人死亡。负责疟疾的寄生虫是科学的疟原虫,它会感染人类的​​红细胞。这些寄生虫是由女性蚊子类别传播的,称为蚊子。疟疾的诊断需要在微观血液涂片中对医生对寄生细胞进行识别和手动计数。由于资源不可用,其诊断准确性在很大程度上受到大规模筛查的影响。基于深度学习算法(例如CNN)的最先进的计算机辅助诊断技术,具有端到端的功能提取和分类,已广泛为各种图像识别任务做出了贡献。在本文中,我们评估了定制的Convnet蚊帐的性能,以对受感染和未感染的细胞进行疟疾诊断的分类,该细胞可以部署在边缘和移动设备上,因为其较少的参数和较小的计算能力。因此,在缺乏医疗设施的偏远和乡村地区诊断可能非常喜欢它。

Malaria is considered one of the deadliest diseases in today world which causes thousands of deaths per year. The parasites responsible for malaria are scientifically known as Plasmodium which infects the red blood cells in human beings. The parasites are transmitted by a female class of mosquitos known as Anopheles. The diagnosis of malaria requires identification and manual counting of parasitized cells by medical practitioners in microscopic blood smears. Due to the unavailability of resources, its diagnostic accuracy is largely affected by large scale screening. State of the art Computer-aided diagnostic techniques based on deep learning algorithms such as CNNs, with end to end feature extraction and classification, have widely contributed to various image recognition tasks. In this paper, we evaluate the performance of custom made convnet Mosquito-Net, to classify the infected and uninfected cells for malaria diagnosis which could be deployed on the edge and mobile devices owing to its fewer parameters and less computation power. Therefore, it can be wildly preferred for diagnosis in remote and countryside areas where there is a lack of medical facilities.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源