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Deep learning-enabled whole slide imaging (DeepWSI): oil-immersion quality using dry objectives, longer depth of field, higher system throughput, and better functionality

Chengfei Guo, Shaowei Jiang, Liming Yang, Pengming Song, Tianbo Wang, Xiaopeng Shao, Zibang Zhang, Michael Murphy, Guoan Zheng

2021Optics Express22 citationsDOIOpen Access PDF

Abstract

Whole slide imaging (WSI) has moved the traditional manual slide inspection process to the era of digital pathology. A typical WSI system translates the sample to different positions and captures images using a high numerical aperture (NA) objective lens. Performing oil-immersion microscopy is a major obstacle for WSI as it requires careful liquid handling during the scanning process. Switching between dry objective and oil-immersion lens is often impossible as it disrupts the acquisition process. For a high-NA objective lens, the sub-micron depth of field also poses a challenge to acquiring in-focus images of samples with uneven topography. Additionally, it implies a small field of view for each tile, thus limiting the system throughput and resulting in a long acquisition time. Here we report a deep learning-enabled WSI platform, termed DeepWSI, to substantially improve the system performance and imaging throughput. With this platform, we show that images captured with a regular dry objective lens can be transformed into images comparable to that of a 1.4-NA oil immersion lens. Blurred images with defocus distance from -5 µm to +5 µm can be virtually refocused to the in-focus plane post measurement. We demonstrate an equivalent data throughput of >2 gigapixels per second, the highest among existing WSI systems. Using the same deep neural network, we also report a high-resolution virtual staining strategy and demonstrate it for Fourier ptychographic WSI. The DeepWSI platform may provide a turnkey solution for developing high-performance diagnostic tools for digital pathology.

Topics & Concepts

Depth of fieldComputer scienceOil immersionThroughputLens (geology)Immersion (mathematics)Artificial intelligenceImage qualityAutofocusOpticsComputer visionMaterials scienceFocus (optics)PhysicsMathematicsTelecommunicationsPure mathematicsImage (mathematics)WirelessAdvanced X-ray Imaging TechniquesImage Processing Techniques and ApplicationsDigital Holography and Microscopy
Deep learning-enabled whole slide imaging (DeepWSI): oil-immersion quality using dry objectives, longer depth of field, higher system throughput, and better functionality | Litcius