弓形虫
学习迁移
病毒学
计算机科学
生物
人工智能
免疫学
抗体
作者
Sen Li,Aijia Li,Diego Alejandro Molina Lara,Jorge Enrique Gómez‐Marín,Mario Juhas,Yang Zhang
出处
期刊:MSystems
[American Society for Microbiology]
日期:2020-01-28
卷期号:5 (1)
被引量:25
标识
DOI:10.1128/msystems.00445-19
摘要
Toxoplasma gondii , one of the world’s most common parasites, can infect all types of warm-blooded animals, including one-third of the world’s human population. Artificial intelligence (AI) could provide accurate and rapid diagnosis in fighting Toxoplasma . So far, none of the previously reported deep learning methods have attempted to explore the advantages of transfer learning for Toxoplasma detection. The knowledge from parasitologists is that the Toxoplasma parasite is generally banana or crescent shaped. Based on this, we built connections between microscopic and macroscopic associated objects by embedding the fuzzy C-means cluster algorithm into the cycle generative adversarial network (Cycle GAN). Our approach achieves high accuracy and effectiveness in ×400 and ×1,000 Toxoplasma microscopic images.
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