[Retracted] Unsupervised Hyperspectral Microscopic Image Segmentation Using Deep Embedded Clustering Algorithm
Hyperspectral microscopy in biology and minerals, unsupervised deep learning neural
network denoising SRS photos: hyperspectral resolution enhancement and denoising one …
network denoising SRS photos: hyperspectral resolution enhancement and denoising one …
Optofluidic imaging meets deep learning: from merging to emerging
Propelled by the striking advances in optical microscopy and deep learning (DL), the role of
imaging in lab-on-a-chip has dramatically been transformed from a silo inspection tool to a …
imaging in lab-on-a-chip has dramatically been transformed from a silo inspection tool to a …
Advances in cellular and tissue-based imaging techniques for sarcoid granulomas
J Kim, G Dwivedi, BA Boughton… - American Journal of …, 2024 - journals.physiology.org
Sarcoidosis embodies a complex inflammatory disorder spanning multiple systems, with its
origin remaining elusive. It manifests as the infiltration of inflammatory cells that coalesce …
origin remaining elusive. It manifests as the infiltration of inflammatory cells that coalesce …
[HTML][HTML] Self-supervised learning of hologram reconstruction using physics consistency
Existing applications of deep learning in computational imaging and microscopy mostly
depend on supervised learning, requiring large-scale, diverse and labelled training data …
depend on supervised learning, requiring large-scale, diverse and labelled training data …
Deep learning-enabled realistic virtual histology with ultraviolet photoacoustic remote sensing microscopy
The goal of oncologic surgeries is complete tumor resection, yet positive margins are
frequently found postoperatively using gold standard H&E-stained histology methods …
frequently found postoperatively using gold standard H&E-stained histology methods …
Virtual tissue staining in pathology using machine learning
Pathology is a medical discipline dealing with diagnosing and studying diseases. Through
recognizing structural histological alterations, pathologists acquire valuable information on …
recognizing structural histological alterations, pathologists acquire valuable information on …
Rapid and label-free histological imaging of unprocessed surgical tissues via dark-field reflectance ultraviolet microscopy
S Ye, J Zou, C Huang, F **ang, Z Wen, N Wang, J Yu… - iScience, 2023 - cell.com
Routine examination for intraoperative histopathologic assessment is lengthy and laborious.
Here, we present the dark-field reflectance ultraviolet microscopy (DRUM) that enables label …
Here, we present the dark-field reflectance ultraviolet microscopy (DRUM) that enables label …
Noninvasive Nonlinear Optical Computational Histology
Cancer remains a global health challenge, demanding early detection and accurate
diagnosis for improved patient outcomes. An intelligent paradigm is introduced that elevates …
diagnosis for improved patient outcomes. An intelligent paradigm is introduced that elevates …
[HTML][HTML] Multiplexing ultraviolet-excited ultrasound and autofluorescence enables slide-free and label-free intraoperative histopathology imaging
W Song, X Wang, Y Zhuang, Y Wang, Q Ye, Y Wang… - APL Photonics, 2024 - pubs.aip.org
Histological examination of tissue remains the gold standard for analysis of various diseases
in both clinical diagnosis and basic research. However, long-standing challenges in …
in both clinical diagnosis and basic research. However, long-standing challenges in …
Exceeding the limit for microscopic image translation with a deep learning-based unified framework
Deep learning algorithms have been widely used in microscopic image translation. The
corresponding data-driven models can be trained by supervised or unsupervised learning …
corresponding data-driven models can be trained by supervised or unsupervised learning …