| Literature DB >> 33582593 |
De Rong Loh1, Wen Xin Yong2, Jullian Yapeter3, Karupppasamy Subburaj4, Rajesh Chandramohanadas5.
Abstract
Accurate and early diagnosis is critical to proper malaria treatment and hence death prevention. Several computer vision technologies have emerged in recent years as alternatives to traditional microscopy and rapid diagnostic tests. In this work, we used a deep learning model called Mask R-CNN that is trained on uninfected and Plasmodium falciparum-infected red blood cells. Our predictive model produced reports at a rate 15 times faster than manual counting without compromising on accuracy. Another unique feature of our model is its ability to generate segmentation masks on top of bounding box classifications for immediate visualization, making it superior to existing models. Furthermore, with greater standardization, it holds much potential to reduce errors arising from manual counting and save a significant amount of human resources, time, and cost.Entities:
Keywords: Computer vision; Image analysis; Malaria diagnosis; Mask R-CNN
Year: 2021 PMID: 33582593 DOI: 10.1016/j.compmedimag.2020.101845
Source DB: PubMed Journal: Comput Med Imaging Graph ISSN: 0895-6111 Impact factor: 4.790