Department of Biomedical Engineering, Faculty of Engineering, Universiti Malaya, Kuala Lumpur, Malaysia.
Department of Electrical Engineering, Faculty of Engineering, Universiti Malaya, Kuala Lumpur, Malaysia.
Trop Biomed. 2023 Jun 1;40(2):208-219. doi: 10.47665/tb.40.2.013.
Timely and rapid diagnosis is crucial for faster and proper malaria treatment planning. Microscopic examination is the gold standard for malaria diagnosis, where hundreds of millions of blood films are examined annually. However, this method's effectiveness depends on the trained microscopist's skills. With the increasing interest in applying deep learning in malaria diagnosis, this study aims to determine the most suitable deep-learning object detection architecture and their applicability to detect and distinguish red blood cells as either malaria-infected or non-infected cells. The object detectors Yolov4, Faster R-CNN, and SSD 300 are trained with images infected by all five malaria parasites and from four stages of infection with 80/20 train and test data partition. The performance of object detectors is evaluated, and hyperparameters are optimized to select the best-performing model. The best-performing model was also assessed with an independent dataset to verify the models' ability to generalize in different domains. The results show that upon training, the Yolov4 model achieves a precision of 83%, recall of 95%, F1-score of 89%, and mean average precision of 93.87% at a threshold of 0.5. Conclusively, Yolov4 can act as an alternative in detecting the infected cells from whole thin blood smear images. Object detectors can complement a deep learning classification model in detecting infected cells since they eliminate the need to train on single-cell images and have been demonstrated to be more feasible for a different target domain.
及时快速的诊断对于更快、更合理的疟疾治疗计划至关重要。显微镜检查是疟疾诊断的金标准,每年需要检查数亿张血片。然而,这种方法的有效性取决于训练有素的显微镜专家的技能。随着深度学习在疟疾诊断中的应用兴趣日益浓厚,本研究旨在确定最适合的深度学习目标检测架构及其在检测和区分疟原虫感染的红细胞和未感染的红细胞方面的适用性。使用受所有五种疟原虫感染的图像和四个感染阶段的图像(80/20 的训练和测试数据划分)来训练 Yolov4、Faster R-CNN 和 SSD 300 目标检测模型。评估目标检测模型的性能,并优化超参数以选择表现最佳的模型。使用独立数据集评估表现最佳的模型,以验证模型在不同领域的泛化能力。结果表明,在训练过程中,Yolov4 模型在阈值为 0.5 时达到了 83%的精度、95%的召回率、89%的 F1 分数和 93.87%的平均准确率。综上所述,Yolov4 可以作为从全薄血涂片图像中检测感染细胞的替代方法。目标检测可以补充深度学习分类模型来检测感染细胞,因为它们不需要在单细胞图像上进行训练,并且已经证明对于不同的目标域更可行。