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Hybrid Microscope Improves Efficiency of Tissue Pathology

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Researchers at the University of Illinois at Urbana-Champaign have paired infrared capabilities with high-resolution optical microscopy and machine learning to bring cancer diagnostics into the digital era.
This side-by-side comparison of a breast tissue biopsy demonstrates some of the infrared-optical hybrid microscope’s capabilities. On the left, a tissue sample dyed by traditional methods. Center, a computed stain created from infrared-optical hybrid imaging. Right, tissue types identified with infrared data. The pink in this image signifies malignant cancer. Courtesy of Rohit Bhargava, University of Illinois.
This side-by-side comparison of a breast tissue biopsy demonstrates some of the infrared-optical hybrid microscope's capabilities. On the left, a tissue sample dyed by traditional methods. Center, a computed stain created from infrared-optical hybrid imaging. Right, tissue types identified with infrared data. The pink in this image signifies malignant cancer. Courtesy of Rohit Bhargava, University of Illinois.

The researchers developed the microscope by adding an infrared laser and a specialized microscope lens called an interference objective to an optical camera. The infrared-optical hybrid measures both infrared data and a high-resolution optical image with a light microscope, the most common type of microscope in clinics and labs.

“We built the hybrid microscope from off-the-shelf components. This is important because it allows others to easily build their own microscope or upgrade an existing microscope,” said Martin Schnell, a postdoctoral fellow in Bhargava research group and first author of the paper describing the research.

With the hybrid microscope, researchers were able to create digital biopsies that closely correlated with traditional pathology techniques and outperformed state-of-the-art infrared microscopes.

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Combining the techniques allows users to harness the high-resolution, large field of view and accessibility of an optical microscope, and the infrared data allows computational analysis without the need for dyes or stains that can damage tissues. Software is able to re-create different stains or even overlap them to create a more complete, all-digital picture of the tissue’s composition.

Traditional tissue pathology involves adding dyes or stains so that pathologists can discern the shapes and patterns of cells under a microscope. However, it can be difficult to distinguish cancer from healthy tissue or to pinpoint the boundaries of a tumor, and in many cases diagnosis can be subjective.

“For more than a century, we have relied on adding dyes to human tissue biopsies to diagnose tumors. However the shape and color induced by the dye provide very limited information about the underlying molecular changes that drive cancer,” team leader Rohit Bhargava said, professor of bioengineering and the director of the Cancer Center at Illinois.

The infrared-optical hybrid was able to achieve 10× larger coverage, greater consistency, and 4× higher resolution while allowing infrared imaging of larger samples and in less time and more detail as compared with state-of-the-art infrared microscopes.

“Infrared-optical hybrid microscopy is widely compatible with conventional microscopy in biomedical applications,” Schnell said. “We combine the ease of use and universal availability of optical microscopy with the wide palette of infrared molecular contrast and machine learning. And by doing so, we hope to change how we routinely handle, image, and understand microscopic tissue structure.”

The researchers plan to continue refining the computational tools used to analyze the hybrid images. They are working to optimize machine-learning programs that can measure multiple infrared wavelengths, creating images that readily distinguish between multiple cell types, and integrate that data with the detailed optical images to precisely map cancer within a sample. They also plan to explore further applications for hybrid microscope imaging, such as forensics, polymer science, and other biomedical applications.

Published: February 2020
Glossary
infrared
Infrared (IR) refers to the region of the electromagnetic spectrum with wavelengths longer than those of visible light, but shorter than those of microwaves. The infrared spectrum spans wavelengths roughly between 700 nanometers (nm) and 1 millimeter (mm). It is divided into three main subcategories: Near-infrared (NIR): Wavelengths from approximately 700 nm to 1.4 micrometers (µm). Near-infrared light is often used in telecommunications, as well as in various imaging and sensing...
machine learning
Machine learning (ML) is a subset of artificial intelligence (AI) that focuses on the development of algorithms and statistical models that enable computers to improve their performance on a specific task through experience or training. Instead of being explicitly programmed to perform a task, a machine learning system learns from data and examples. The primary goal of machine learning is to develop models that can generalize patterns from data and make predictions or decisions without being...
Research & TechnologyMicroscopyOpticsinfraredcancer diagnosticstissue pathologymachine learningBiophotonicsBioScan

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