| Literature DB >> 29352405 |
Eisuke Ito1, Takaaki Sato1, Daisuke Sano2, Etsuko Utagawa3, Tsuyoshi Kato4,5,6.
Abstract
A new computational method for the detection of virus particles in transmission electron microscopy (TEM) images is presented. Our approach is to use a convolutional neural network that transforms a TEM image to a probabilistic map that indicates where virus particles exist in the image. Our proposed approach automatically and simultaneously learns both discriminative features and classifier for virus particle detection by machine learning, in contrast to existing methods that are based on handcrafted features that yield many false positives and require several postprocessing steps. The detection performance of the proposed method was assessed against a dataset of TEM images containing feline calicivirus particles and compared with several existing detection methods, and the state-of-the-art performance of the developed method for detecting virus was demonstrated. Since our method is based on supervised learning that requires both the input images and their corresponding annotations, it is basically used for detection of already-known viruses. However, the method is highly flexible, and the convolutional networks can adapt themselves to any virus particles by learning automatically from an annotated dataset.Entities:
Keywords: Convolutional neural network; Feline calicivirus; Image processing; Machine learning; Transmission electron microscopy; Virus detection
Mesh:
Year: 2018 PMID: 29352405 DOI: 10.1007/s12560-018-9335-7
Source DB: PubMed Journal: Food Environ Virol ISSN: 1867-0334 Impact factor: 2.778