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A machine learning model of microscopic agglutination test for diagnosis of leptospirosis
- Source :
- PLoS ONE, PLoS ONE, Vol 16, Iss 11 (2021), PLoS ONE, Vol 16, Iss 11, p e0259907 (2021)
- Publication Year :
- 2021
-
Abstract
- Leptospirosis is a zoonosis caused by the pathogenic bacterium Leptospira. The Microscopic Agglutination Test (MAT) is widely used as the gold standard for diagnosis of leptospirosis. In this method, diluted patient serum is mixed with serotype-determined Leptospiras, and the presence or absence of aggregation is determined under a dark-field microscope to calculate the antibody titer. Problems of the current MAT method are 1) a requirement of examining many specimens per sample, and 2) a need of distinguishing contaminants from true aggregates to accurately identify positivity. Therefore, increasing efficiency and accuracy are the key to refine MAT. It is possible to achieve efficiency and standardize accuracy at the same time by automating the decision making process. In this study, we built an automatic identification algorithm of MAT using a machine learning method to determine aggregation within microscopic images. The machine learned the features from 316 positive and 230 negative MAT images created with sera of Leptospira- infected (positive) and non-infected (negative) hamsters, respectively. In addition to the acquired original images, wavelet-transformed images were also considered as features. We utilized a support vector machine (SVM) as a proposed decision method. We validated the trained SVMs with 210 positive and 154 negative images. When the features were obtained from original or wavelet-transformed images, all negative images were misjudged as positive, and the classification performance was very low with sensitivity of 1 and specificity of 0. In contrast, when the histograms of wavelet coefficients were used as features, the performance was greatly improved with sensitivity of 0.99 and specificity of 0.99. We confirmed that the current algorithm judges the positive or negative of agglutinations in MAT images and gives the further possibility of automatizing MAT procedure.
- Subjects :
- Male
Bacterial Diseases
Support Vector Machine
Computer science
Image Processing
Kernel Functions
computer.software_genre
Pathology and Laboratory Medicine
Machine Learning
Wavelet
Medical Conditions
Direct agglutination test
Cricetinae
Zoonoses
Medicine and Health Sciences
Operator Theory
Leptospira
Microscopy
Multidisciplinary
biology
Light Microscopy
Dark Field Microscopy
Leptospirosis
Bacterial Pathogens
Infectious Diseases
Medical Microbiology
Physical Sciences
Medicine
Engineering and Technology
Pathogens
Algorithms
Research Article
Neglected Tropical Diseases
Computer and Information Sciences
Imaging Techniques
Science
Wavelet Analysis
Image processing
Machine learning
Research and Analysis Methods
Sensitivity and Specificity
Microbiology
Artificial Intelligence
Histogram
Agglutination Tests
Support Vector Machines
Image Interpretation, Computer-Assisted
medicine
Animals
Sensitivity (control systems)
Microbial Pathogens
Bacteria
business.industry
Organisms
Biology and Life Sciences
Gold standard (test)
biology.organism_classification
medicine.disease
Decision Support Systems, Clinical
Tropical Diseases
Support vector machine
Agglutination (biology)
Signal Processing
Artificial intelligence
business
computer
Mathematics
Subjects
Details
- ISSN :
- 19326203
- Volume :
- 16
- Issue :
- 11
- Database :
- OpenAIRE
- Journal :
- PloS one
- Accession number :
- edsair.doi.dedup.....077d3b22e989e8190e9bb68bf675c5e5