Image Mining (IM) Group, Institut Pasteur Korea, Seongnam-si, Gyeonggi-do, South Korea.
PLoS One. 2013 Apr 23;8(4):e61812. doi: 10.1371/journal.pone.0061812. Print 2013.
With more than 40% of the world's population at risk, 200-300 million infections each year, and an estimated 1.2 million deaths annually, malaria remains one of the most important public health problems of mankind today. With the propensity of malaria parasites to rapidly develop resistance to newly developed therapies, and the recent failures of artemisinin-based drugs in Southeast Asia, there is an urgent need for new antimalarial compounds with novel mechanisms of action to be developed against multidrug resistant malaria. We present here a novel image analysis algorithm for the quantitative detection and classification of Plasmodium lifecycle stages in culture as well as discriminating between viable and dead parasites in drug-treated samples. This new algorithm reliably estimates the number of red blood cells (isolated or clustered) per fluorescence image field, and accurately identifies parasitized erythrocytes on the basis of high intensity DAPI-stained parasite nuclei spots and Mitotracker-stained mitochondrial in viable parasites. We validated the performance of the algorithm by manual counting of the infected and non-infected red blood cells in multiple image fields, and the quantitative analyses of the different parasite stages (early rings, rings, trophozoites, schizonts) at various time-point post-merozoite invasion, in tightly synchronized cultures. Additionally, the developed algorithm provided parasitological effective concentration 50 (EC50) values for both chloroquine and artemisinin, that were similar to known growth inhibitory EC50 values for these compounds as determined using conventional SYBR Green I and lactate dehydrogenase-based assays.
由于全球超过 40%的人口面临风险,每年有 2 亿至 3 亿例感染,估计每年有 120 万人死亡,因此疟疾仍然是当今人类最重要的公共卫生问题之一。由于疟原虫迅速产生抗药性的倾向,以及青蒿素类药物在东南亚最近的失败,迫切需要开发具有新作用机制的新型抗疟化合物来对抗多药耐药性疟疾。我们在此提出了一种新的图像分析算法,用于定量检测和分类培养中的疟原虫生命周期阶段,并区分药物处理样本中的存活和死亡寄生虫。这种新算法能够可靠地估计每个荧光图像场中的红细胞数量(孤立或聚集),并根据高强度 DAPI 染色的寄生虫核斑点和活寄生虫中的 Mitotracker 染色的线粒体准确识别寄生红细胞。我们通过在多个图像场中手动计数感染和未感染的红细胞,以及在紧密同步培养物中对不同寄生虫阶段(早期环、环、滋养体、裂殖体)在疟原虫入侵后各个时间点的定量分析,验证了该算法的性能。此外,该算法还提供了氯喹和青蒿素的寄生虫有效浓度 50(EC50)值,与使用传统 SYBR Green I 和乳酸脱氢酶检测法确定的这些化合物的已知生长抑制 EC50 值相似。