Magotra Varun, Rohil Mukesh Kumar
Department of Computer Engineering, Sardar Patel Institute of Technology, Andheri West, Mumbai, 400053 Maharashtra, India.
Department of Computer Science and Information Systems, Birla Institute of Technology and Science, Pilani, 333031 Rajasthan, India.
Int J Telemed Appl. 2022 Apr 15;2022:4176982. doi: 10.1155/2022/4176982. eCollection 2022.
The applications of AI in the healthcare sector are increasing day by day. The application of convolutional neural network (CNN) and mask-region-based CNN (Mask-RCCN) to the medical domain has really revolutionized medical image analysis. CNNs have been prominently used for identification, classification, and feature extraction tasks, and they have delivered a great performance at these tasks. In our study, we propose a lightweight CNN, which requires less time to train, for identifying malaria parasitic red blood cells and distinguishing them from healthy red blood cells. To compare the accuracy of our model, we used transfer learning on two models, namely, the VGG-19 and the Inception v3. We train our model in three different configurations depending on the proportion of data being fed to the model for training. For all three configurations, our proposed model is able to achieve an accuracy of around 96%, which is higher than both the other models that we trained for the same three configurations. It shows that our model is able to perform better along with low computational requirements. Therefore, it can be used more efficiently and can be easily deployed for detecting malaria cells.
人工智能在医疗保健领域的应用日益增加。卷积神经网络(CNN)和基于掩码区域的卷积神经网络(Mask-RCCN)在医学领域的应用确实彻底改变了医学图像分析。卷积神经网络已被广泛用于识别、分类和特征提取任务,并且在这些任务中表现出色。在我们的研究中,我们提出了一种轻量级的卷积神经网络,它训练所需时间更少,用于识别疟原虫寄生的红细胞并将它们与健康红细胞区分开来。为了比较我们模型的准确性,我们在两个模型上使用了迁移学习,即VGG-19和Inception v3。我们根据输入模型进行训练的数据比例,在三种不同配置下训练我们的模型。对于所有三种配置,我们提出的模型能够达到约96%的准确率,这高于我们在相同三种配置下训练的其他两个模型。这表明我们的模型在计算要求较低的情况下能够表现得更好。因此,它可以更高效地使用,并且可以轻松部署用于检测疟原虫细胞。