We use cookies to understand how you use our site and to improve your experience. This includes personalizing content and advertising. To learn more, click here. By continuing to use our site, you accept our use of cookies. Cookie Policy.

Features Partner Sites Information LinkXpress hp
Sign In
Advertise with Us
LGC Clinical Diagnostics

Download Mobile App




New AI Technology Outperforms Traditional Methods in Biomedical Image Segmentation

By LabMedica International staff writers
Posted on 28 Nov 2024
Print article
Image: The overall architecture, input and output of CelloType (Photo courtesy of Nature Methods: DOI: 10.1038/s41592-024-02513-1)
Image: The overall architecture, input and output of CelloType (Photo courtesy of Nature Methods: DOI: 10.1038/s41592-024-02513-1)

Spatial omics is an emerging field that integrates molecular profiling techniques like genomics, transcriptomics, and proteomics with spatial information, enabling researchers to pinpoint the location of various molecules within cells in complex tissues. This approach offers valuable insights into the cellular mechanisms behind disease development and progression, which is crucial for improving diagnostics and advancing targeted therapies, a central focus in translational research. Spatial omics allows the study of diseases like cancer and chronic kidney disease by revealing how cellular interactions and microenvironments influence disease progression and therapeutic responses. The first step in analyzing spatial omics data involves tasks such as cell segmentation, which defines cell boundaries, and classification, which assigns cell types. Recent advancements in spatial omics technologies enable the examination of intact tissues at the cellular level, providing unparalleled insights into the relationship between cellular architecture and the function of different tissues and organs.

With the increasing volume of spatial omics data, there is a growing demand for advanced computational tools for analysis. In response, researchers at Children’s Hospital of Philadelphia (CHOP, Philadelphia, PA, USA) have developed an artificial intelligence (AI) technology called CelloType, a comprehensive model designed to improve the accuracy of cell identification and classification in high-content tissue images. CHOP is involved in prominent projects such as the Human Tumor Atlas Network, the Human BioMolecular Atlas Program (HuBMAP), and the BRAIN initiative, which use similar technologies to map the spatial organization of both healthy and diseased tissues. The CelloType model utilizes transformer-based deep learning, a type of AI that automates complex, high-dimensional data analysis. Deep learning enables the model to identify complex relationships and context, making it highly effective for natural language processing and image analysis tasks. The model is optimized to enhance accuracy in cell detection, segmentation, and classification.

In their study, the researchers compared the performance of CelloType against various traditional methods using datasets from both animal and human tissues. Traditional approaches typically follow a two-stage process of segmentation followed by classification, which can be inefficient and inaccurate. In contrast, CelloType employs a multi-task learning strategy that integrates both segmentation and classification in one step, improving efficiency and accuracy. CelloType also outperformed existing segmentation methods across different types of images, including natural images, bright light images, and fluorescence images. For cell type classification, the study, published in Nature Methods, demonstrated that CelloType surpassed a model made up of state-of-the-art individual methods and a high-performance instance segmentation model, which uses AI to precisely outline objects in an image. Additionally, using a multiplexed tissue image—a type of advanced biomedical image that displays multiple biomarkers in a single tissue sample—researchers showcased how CelloType can perform multi-scale segmentation and classification of both cellular and non-cellular components within a tissue. This capability allows for more detailed analysis of both small and large cell structures, significantly expediting the process.

"We are just beginning to unlock the potential of this technology," said Kai Tan, PhD, the study's lead author and a professor in the Department of Pediatrics at CHOP. "This approach could redefine how we understand complex tissues at the cellular level, paving the way for transformative breakthroughs in healthcare."

Gold Member
Serological Pipet Controller
PIPETBOY GENIUS
Gold Member
Fully Automated Cell Density/Viability Analyzer
BioProfile FAST CDV
New
RNA/DNA Extraction Instrument
QIAcube Connect Instrument
New
Chagas Disease Test
Simple/Stick Chagas/WB

Print article

Channels

Hematology

view channel
Image: The new test could improve specialist transplant and transfusion practice as well as blood banking (Photo courtesy of NHS Blood and Transplant)

New Test Assesses Oxygen Delivering Ability of Red Blood Cells by Measuring Their Shape

The release of oxygen by red blood cells is a critical process for oxygenating the body's tissues, including organs and muscles, particularly in individuals receiving large blood transfusions.... Read more

Immunology

view channel
Image: Concept for the device. Memory B cells able to bind influenza virus remain stuck to channels despite shear forces (Photo courtesy of Steven George/UC Davis)

Microfluidic Chip-Based Device to Measure Viral Immunity

Each winter, a new variant of influenza emerges, posing a challenge for immunity. People who have previously been infected or vaccinated against the flu may have some level of protection, but how well... Read more

Microbiology

view channel
Image: The iFAST reader scans 5000 individual bacteria with each sample analyzed in less than a minute (Photo courtesy of iFAST)

High-Throughput AST System Uses Microchip Technology to Rapidly Analyze Bacterial Samples

Bacteria are becoming increasingly resistant to antibiotics, with resistance levels ranging from 20% to 98%, and these levels are unpredictable. Currently, antimicrobial susceptibility testing (AST) takes... Read more

Technology

view channel
Image: Human tear film protein sampling methods (Photo courtesy of Clinical Proteomics. 2024 Mar 13;21:23. doi: 10.1186/s12014-024-09475-8)

New Lens Method Analyzes Tears for Early Disease Detection

Bodily fluids, including tears and saliva, carry proteins that are released from different parts of the body. The presence of specific proteins in these biofluids can be a sign of health issues.... Read more
Copyright © 2000-2024 Globetech Media. All rights reserved.