Phase–contrast X–ray computed tomography for observing biological soft tissues

Author:  ["Atsushi Momose","Tohoru Takeda","Yuji Itai","Keiichi Hirano"]

Publication:  Nature Medicine

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Tags:     Medicine

Abstract

Biological soft tissues are almost transparent to hard X rays and therefore cannot be investigated without enhancement with a contrast medium, such as iodine. On the other hand, phase–contrast X–ray imaging is sensitive to light elements1–8. This is because the X–ray phase shift cross section is almost a thousand times larger than the X–ray absorption cross section for light elements such as hydrogen, carbon, nitrogen and oxygen4,5. Hence, phase–contrast X–ray imaging is a promising technique for observing the structure inside biological soft tissues without the need for staining and without serious radiation exposure. We have devised a means of observing biological tissues in three dimensions using a novel X–ray computed tomography (CT) by modifying the phase–contrast technique. To generate appropriate CT input data, we used phase–mapping images obtained using an X–ray interferometer6 and computer analysis of interference patterns9. Now, we present a three–dimensional observation result of a nonstained sample of a cancerous rabbit liver, using a synchrotron X–ray source. Phase–contrast X–ray CT was able to clearly differentiate the cancer lesion from the normal tissue. Moreover, fine structures corresponding to cancerous degeneration and fibrous tissues were clearly depicted.

Cite this article

Momose, A., Takeda, T., Itai, Y. et al. Phase–contrast X–ray computed tomography for observing biological soft tissues. Nat Med 2, 473–475 (1996). https://doi.org/10.1038/nm0496-473

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