Institute of Medical Microbiology and Hygiene, Saarland University, Homburg, Germany.
Laboratory of Tropical Medicine and Parasitology, Dokkyo Medical University, Mibu, Tochigi, Japan.
Parasit Vectors. 2023 Jan 19;16(1):20. doi: 10.1186/s13071-022-05604-0.
Schistosomiasis is a major neglected tropical disease that affects up to 250 million individuals worldwide. The diagnosis of human schistosomiasis is mainly based on the microscopic detection of the parasite's eggs in the feces (i.e., for Schistosoma mansoni or Schistosoma japonicum) or urine (i.e., for Schistosoma haematobium) samples. However, these techniques have limited sensitivity, and microscopic expertise is waning outside endemic areas. Matrix-assisted laser desorption/ionization time-of-flight (MALDI-TOF) mass spectrometry (MS) has become the gold standard diagnostic method for the identification of bacteria and fungi in many microbiological laboratories. Preliminary studies have recently shown promising results for parasite identification using this method. The aims of this study were to develop and validate a species-specific database for adult Schistosoma identification, and to evaluate the effects of different storage solutions (ethanol and RNAlater) on spectra profiles.
Adult worms (males and females) of S. mansoni and S. japonicum were obtained from experimentally infected mice. Species identification was carried out morphologically and by cytochrome oxidase 1 gene sequencing. Reference protein spectra for the creation of an in-house MALDI-TOF MS database were generated, and the database evaluated using new samples. We employed unsupervised (principal component analysis) and supervised (support vector machine, k-nearest neighbor, Random Forest, and partial least squares discriminant analysis) machine learning algorithms for the identification and differentiation of the Schistosoma species.
All the spectra were correctly identified by internal validation. For external validation, 58 new Schistosoma samples were analyzed, of which 100% (58/58) were correctly identified to genus level (log score values ≥ 1.7) and 81% (47/58) were reliably identified to species level (log score values ≥ 2). The spectra profiles showed some differences depending on the storage solution used. All the machine learning algorithms classified the samples correctly.
MALDI-TOF MS can reliably distinguish adult S. mansoni from S. japonicum.
血吸虫病是一种主要的被忽视的热带病,影响全球多达 2.5 亿人。人类血吸虫病的诊断主要基于在粪便(即曼氏血吸虫或日本血吸虫)或尿液(即埃及血吸虫)样本中检测寄生虫卵。然而,这些技术的灵敏度有限,并且在流行地区以外,显微镜专业知识正在减少。基质辅助激光解吸/电离飞行时间(MALDI-TOF)质谱(MS)已成为许多微生物学实验室中鉴定细菌和真菌的金标准诊断方法。最近的初步研究表明,该方法在寄生虫鉴定方面有很好的结果。本研究旨在开发和验证用于鉴定成体血吸虫的种特异性数据库,并评估不同储存溶液(乙醇和 RNAlater)对光谱谱图的影响。
从实验感染的小鼠中获得曼氏血吸虫和日本血吸虫的成虫(雌雄)。通过形态学和细胞色素氧化酶 1 基因测序进行种属鉴定。为创建内部 MALDI-TOF MS 数据库生成了参考蛋白光谱,并使用新样本评估了该数据库。我们使用无监督(主成分分析)和有监督(支持向量机、k-最近邻、随机森林和偏最小二乘判别分析)机器学习算法来鉴定和区分血吸虫种属。
所有光谱均通过内部验证正确识别。对于外部验证,分析了 58 个新的血吸虫样本,其中 100%(58/58)正确鉴定到属水平(对数得分值≥1.7),81%(47/58)可靠地鉴定到种水平(对数得分值≥2)。根据使用的储存溶液,光谱谱图显示出一些差异。所有机器学习算法都正确地对样本进行了分类。
MALDI-TOF MS 可可靠地区分曼氏血吸虫和日本血吸虫的成虫。