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New medical imaging technique 3D X-ray histotomography takes diagnosis to next level
New medical imaging technique 3D tissue imaging technique called X-ray histotomography shall take CT scanning and diagnosis to the next level, assert researchers.
To diagnose and treat diseases like cancer, scientists and doctors must understand how cells respond to different medical conditions and treatments. Researchers have developed a new way to study disease at the cellular level.
Dr. Keith Cheng, distinguished professor of pathology, pharmacology, and biochemistry and molecular biology at Penn State College of Medicine, and a team of X-ray imaging physicists at the University of Chicago have developed a new, 3D tissue imaging technique, called x-ray histotomography. The technique allows researchers to study the details of cells in a tissue sample without having to cut it into slices. And that could lead to better diagnosis and treatment for a variety of diseases, including cancer.
“The quantitative and objective measurements made possible by histotomography could potentially allow us to distinguish between subtypes of cancer and other diseases that presently look the same using traditional histology so that they may be more appropriately treated,” Cheng said.
Traditional histology involves taking thin slices of tissues from patients, staining them, and examining them for irregular features under a microscope. Physical sectioning of the sample introduces tissue loss and distortion that leads to incomplete sampling and imperfect visualizations. According to researchers, X-ray histotomography avoids these problems and allows the three-dimensional features of cells like shape and volume to be measured accurately.
Over ten years, Cheng and his team developed the technique by combining the principles of human computer tomography (CT) scanning and histology to image small organisms and tissues at a greater resolution in 3D.
“X-ray histotomography uses the same principles as a human CT scan,” Cheng said. “CT involves shooting a series of X-rays of a subject, each at a slightly different angle. A computer program then uses the set of x-rays to create a 3D image.”
The Cheng lab had previously used micro-CT, a smaller-scale version of human CT, to image small organisms and tissues. University of Chicago’s Patrick La Rivière, associate professor of radiology, introduced Cheng to the use of a powerful x-ray source, the synchrotron, which allowed the research team to enhance their micro-CT scanning with increased resolution and faster imaging times. The synchrotron-based micro-CT might help pathologists someday answer questions like:
What are the individual characteristics of the disease the patient has? How many diseased cells are there? What are the individualized treatment options based on what I’m seeing?
The technology needed to answer questions like those was not available commercially, Cheng said, so he and a team of engineers, physicists, data scientists and biologists set out to develop the technique themselves.
After a decade of optimizing the sample preparation and imaging, the team created 3D reconstructions of young zebrafish that can be examined from the whole organism down to a cellular level. Zebrafish were chosen to develop this technology because their size from larvae to adults is nearly the same as samples used by physicians to evaluate cancerous tumors.
According to Cheng, researchers and clinicians can now examine features like 3D shape, volume, location and number of cells that previously couldn’t be studied using traditional histology. The technique will allow pathologists to study a full tissue sample after it has been stained and prepared. It is no longer necessary to cut a single slice of tissue out of the entire sample.
Clinical scientists can evaluate microscopic and three-dimensional features of cells due to the increased clarity and resolution of the images.
“The beauty and complexity of the tissue I saw were mind-bending,” Cheng said of the images released in the journal eLife with the research on June 11.
Computational tools combined with the imaging allow the size, shape, volume, and density of cells to be calculated and catalogued. This ability enables the characteristics of disease pathology to be studied in a novel way that may improve clinical care and facilitate drug discovery.
Advances in computer technology allow the large image files of the zebrafish - at 100 gigabytes each - to be processed and viewed. Researchers can examine the traits of disease at the organ system, tissue or cellular level simultaneously, slice-by-slice or in 3D context. They may even be able to see and interact with the cellular structure of organisms using the same technology used by virtual reality gamers.
Future research by the Cheng team aims to increase the resolution, sample size, throughput, analytical power and accessibility of the technique.
Other researchers from Penn State College of Medicine include Yifu Ding, Daniel Vanselow, Maksim Yakovlev, Spencer Katz, Alex Lin, Xuying Xin, Jean Copper, Victor Canfield, and assistant professors of pathology Khai Chung Ang and Damian van Rossum.
Also working on the project were Darin Clark, now at Duke University Medical Center; Phillip Vargas, University of Chicago; Yuxin Wang, Omnivision Technologies; and Xianghui Xiao and Francesco De Carlo, Argonne National Laboratory.
The National Institutes of Health, the Jake Gittlen Laboratories for Cancer Research at Penn State College of Medicine, the Huck Institutes of the Life Sciences and the Institute for Cyber Science at Penn State helped to support this work.
The authors declared no conflict of interest.
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