LabMedica

Download Mobile App
Recent News Expo Clinical Chem. Molecular Diagnostics Hematology Immunology Microbiology Pathology Technology Industry Focus

AI-Based Tissue Staining Detects Amyloid Deposits Without Chemical Stains or Polarization Microscopy

By LabMedica International staff writers
Posted on 19 Sep 2024
Print article
Image: Virtual birefringence imaging and histological staining of amyloid deposits in label-free tissue (Photo courtesy of Ozcan Research Group)
Image: Virtual birefringence imaging and histological staining of amyloid deposits in label-free tissue (Photo courtesy of Ozcan Research Group)

Systemic amyloidosis, a disorder characterized by the buildup of misfolded proteins in organs and tissues, presents significant diagnostic difficulties. The condition affects millions of people each year, often resulting in severe organ damage, heart failure, and high mortality rates if not diagnosed and treated early. Traditionally, the detection of amyloid deposits has relied on Congo red staining viewed under polarized light microscopy, which has been considered the gold standard. However, this method is time-consuming, costly, and prone to variability that can lead to misdiagnoses. Researchers have now developed a groundbreaking method for imaging and detecting amyloid deposits in tissue samples. This innovative approach uses deep learning and autofluorescence microscopy to create virtual birefringence imaging and histological staining, removing the need for polarization imaging and traditional stains like Congo red.

The new technique, described in Nature Communications and developed by researchers at the University of California, Los Angeles (UCLA, Los Angeles, CA, USA), employs a single neural network to convert autofluorescence images of unstained tissue into high-resolution brightfield and polarized microscopy images. These images resemble those produced by conventional histochemical staining and polarization microscopy. The method was tested on cardiac tissue samples and demonstrated that the virtually stained images consistently and accurately identified amyloid patterns. This approach eliminates the need for chemical staining and specialized polarization microscopes, potentially accelerating diagnosis and lowering costs. The virtual staining process matched and even surpassed the quality of traditional methods, as confirmed by multiple board-certified pathologists from UCLA.

The study’s results indicate that this virtual staining technique could be easily incorporated into current clinical workflows, encouraging wider use of digital pathology. The method does not require specialized optical components and can be deployed on standard digital pathology scanners, making it accessible to a broad range of healthcare facilities. Researchers plan to extend their evaluations to other tissue types, including kidney, liver, and spleen, to further validate the technique's effectiveness across various forms of amyloidosis. They also aim to develop automated detection systems to assist pathologists in identifying problematic regions, potentially enhancing diagnostic accuracy and minimizing false negatives.

“Our deep learning model can perform both autofluorescence-to-birefringence and autofluorescence-to-brightfield image transformations, offering a reliable, consistent, and cost-effective alternative to traditional histology methods. This breakthrough could greatly enhance the speed and accuracy of amyloidosis diagnosis, reducing the risk of false negatives and improving patient outcomes,” said Dr. Aydogan Ozcan, the senior author of the study and the Volgenau Chair for Engineering Innovation at UCLA. “This innovation represents a significant step forward in the field of amyloidosis pathology. It not only simplifies the diagnostic process but also holds potential for expanding the use of digital pathology in routine clinical practice, particularly in resource-limited settings.”

Gold Member
Veterinary Hematology Analyzer
Exigo H400
Verification Panels for Assay Development & QC
Seroconversion Panels
New
Lyme Disease Test
Lyme IgG/IgM Rapid Test Cassette
New
Centrifuge
Hematocrit Centrifuge 7511M4

Print article

Channels

Molecular Diagnostics

view channel
Image: The experimental blood test accurately indicates severity and predicts potential recovery from spinal cord injury (Photo courtesy of 123RF)

Blood Test Identifies Multiple Biomarkers for Rapid Diagnosis of Spinal Cord Injury

The National Institutes of Health estimates that 18,000 individuals in the United States sustain spinal cord injuries (SCIs) annually, resulting in a staggering financial burden of over USD 9.... Read more

Immunology

view channel
Image: The findings were based on patients from the ADAURA clinical trial of the targeted therapy osimertinib for patients with NSCLC with EGFR-activated mutations (Photo courtesy of YSM Multimedia Team)

Post-Treatment Blood Test Could Inform Future Cancer Therapy Decisions

In the ongoing advancement of personalized medicine, a new study has provided evidence supporting the use of a tool that detects cancer-derived molecules in the blood of lung cancer patients years after... Read more

Microbiology

view channel
Image: Schematic representation illustrating the key findings of the study (Photo courtesy of UNIST)

Breakthrough Diagnostic Technology Identifies Bacterial Infections with Almost 100% Accuracy within Three Hours

Rapid and precise identification of pathogenic microbes in patient samples is essential for the effective treatment of acute infectious diseases, such as sepsis. The fluorescence in situ hybridization... Read more

Industry

view channel
Image: Tumor-associated macrophages visualized using the Multiomic LS Assay (Photo courtesy of ACD)

Leica Biosystems and Bio-Techne Expand Spatial Multiomic Collaboration

Bio-Techne Corporation (Minneapolis, MN, USA) has expanded the longstanding partnership between its spatial biology brand, Advanced Cell Diagnostics (ACD, Newark, CA, USA), and Leica Biosystems (Nussloch,... Read more
Sekisui Diagnostics UK Ltd.