Pattern Recognition Lab, Department of Computer and Information Sciences, Pakistan Institute of Engineering and Applied Sciences, Nilore, Islamabad 45650, Pakistan.
Department of Computer Systems Engineering, University of Engineering and Applied Sciences, Swat 19060, Pakistan.
Microscopy (Oxf). 2022 Oct 6;71(5):271-282. doi: 10.1093/jmicro/dfac027.
Malaria is a life-threatening infection that infects the red blood cells and gradually grows throughout the body. The plasmodium parasite is transmitted by a female Anopheles mosquito bite and severely affects numerous individuals within the world every year. Therefore, early detection tests are required to identify parasite-infected cells. The proposed technique exploits the learning capability of deep convolutional neural network (CNN) to distinguish the parasite-infected patients from healthy individuals using thin blood smear. In this regard, the detection is accomplished using a novel STM-SB-RENet block-based CNN that employs the idea of split-transform-merge (STM) and channel squeezing-boosting (SB) in a modified fashion. In this connection, a new convolutional block-based STM is developed, which systematically implements region and edge operations to explore the parasitic infection pattern of malaria related to region homogeneity, structural obstruction and boundary-defining features. Moreover, the diverse boosted feature maps are achieved by incorporating the new channel SB and transfer learning (TL) idea in each STM block at abstract, intermediate and target levels to capture minor contrast and texture variation between parasite-infected and normal artifacts. The malaria input images for the proposed models are initially transformed using discrete wavelet transform to generate enhanced and reduced feature space. The proposed architectures are validated using hold-out cross-validation on the National Institute of Health Malaria dataset. The proposed methods outperform training from scratch and TL-based fine-tuned existing techniques. The considerable performance (accuracy: 97.98%, sensitivity: 0.988, F-score: 0.980 and area under the curve: 0.996) of STM-SB-RENet suggests that it can be utilized to screen malaria-parasite-infected patients. Graphical Abstract.
疟疾是一种危及生命的感染,会感染红细胞并在全身逐渐生长。疟原虫寄生虫通过雌性疟蚊叮咬传播,每年严重影响全球众多个体。因此,需要进行早期检测测试以识别寄生虫感染的细胞。所提出的技术利用深度卷积神经网络(CNN)的学习能力,使用薄血涂片从健康个体中区分寄生虫感染患者。在这方面,检测是使用一种新颖的基于 STM-SB-RENet 块的 CNN 完成的,该 CNN 以改进的方式采用了分割-转换-合并(STM)和通道挤压-增强(SB)的思想。在这方面,开发了一种新的基于卷积块的 STM,它系统地实现了区域和边缘操作,以探索与区域同质性、结构阻塞和边界定义特征相关的疟疾寄生虫感染模式。此外,通过在每个 STM 块的抽象、中间和目标级别引入新的通道 SB 和迁移学习(TL)思想,实现了多样化的增强特征图,以捕捉寄生虫感染和正常伪影之间的细微对比度和纹理变化。所提出模型的疟疾输入图像最初使用离散小波变换进行转换,以生成增强和减少的特征空间。在所提出的数据集上使用保留交叉验证对国家卫生研究院疟疾数据集进行验证。所提出的方法优于从头开始训练和基于 TL 的微调现有技术。STM-SB-RENet 的出色性能(准确性:97.98%,灵敏度:0.988,F 分数:0.980 和曲线下面积:0.996)表明它可用于筛查疟疾寄生虫感染患者。