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Deep learning-based optical field screening for robust optical diffraction tomography.
Ryu, DongHun; Jo, YoungJu; Yoo, Jihyeong; Chang, Taean; Ahn, Daewoong; Kim, Young Seo; Kim, Geon; Min, Hyun-Seok; Park, YongKeun.
Afiliación
  • Ryu D; Department of Physics, Korea Advanced Institute of Science and Technology (KAIST), 34141, Daejeon, Republic of Korea.
  • Jo Y; KAIST Institute for Health Science and Technology, 34141, Daejeon, Republic of Korea.
  • Yoo J; Department of Physics, Korea Advanced Institute of Science and Technology (KAIST), 34141, Daejeon, Republic of Korea.
  • Chang T; KAIST Institute for Health Science and Technology, 34141, Daejeon, Republic of Korea.
  • Ahn D; Tomocube, Inc., 34109, Daejoen, Republic of Korea.
  • Kim YS; Department of Applied Physics, Stanford University, Stanford, CA, 94305, USA.
  • Kim G; Tomocube, Inc., 34109, Daejoen, Republic of Korea.
  • Min HS; Department of Physics, Korea Advanced Institute of Science and Technology (KAIST), 34141, Daejeon, Republic of Korea.
  • Park Y; KAIST Institute for Health Science and Technology, 34141, Daejeon, Republic of Korea.
Sci Rep ; 9(1): 15239, 2019 10 23.
Article en En | MEDLINE | ID: mdl-31645595
ABSTRACT
In tomographic reconstruction, the image quality of the reconstructed images can be significantly degraded by defects in the measured two-dimensional (2D) raw image data. Despite the importance of screening defective 2D images for robust tomographic reconstruction, manual inspection and rule-based automation suffer from low-throughput and insufficient accuracy, respectively. Here, we present deep learning-enabled quality control for holographic data to produce robust and high-throughput optical diffraction tomography (ODT). The key idea is to distil the knowledge of an expert into a deep convolutional neural network. We built an extensive database of optical field images with clean/noisy annotations, and then trained a binary-classification network based upon the data. The trained network outperformed visual inspection by non-expert users and a widely used rule-based algorithm, with >90% test accuracy. Subsequently, we confirmed that the superior screening performance significantly improved the tomogram quality. To further confirm the trained model's performance and generalisability, we evaluated it on unseen biological cell data obtained with a setup that was not used to generate the training dataset. Lastly, we interpreted the trained model using various visualisation techniques that provided the saliency map underlying each model inference. We envision the proposed network would a powerful lightweight module in the tomographic reconstruction pipeline.

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Diagnostic_studies / Screening_studies Idioma: En Revista: Sci Rep Año: 2019 Tipo del documento: Article

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Tipo de estudio: Diagnostic_studies / Screening_studies Idioma: En Revista: Sci Rep Año: 2019 Tipo del documento: Article
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