Quantitative phase-contrast microscopy
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Acronym | QPCM, QPM, QPI |
---|---|
Other names | Phase microscope, Quantitative phase microscopy, Quantitative phase imaging |
Uses | Microscopic observation and quantification of unstained biological material |
Related items | Phase contrast microscopy, Differential interference contrast microscopy, Hoffman modulation contrast microscopy |
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Quantitative phase contrast microscopy or quantitative phase imaging are the collective names for a group of microscopy methods that quantify the phase shift that occurs when light waves pass through a more optically dense object.[1][2]
Translucent objects, like a living human cell, absorb and scatter small amounts of light. This makes translucent objects much easier to observe in ordinary light microscopes. Such objects do, however, induce a phase shift that can be observed using a phase contrast microscope. Conventional phase contrast microscopy and related methods, such as differential interference contrast microscopy, visualize phase shifts by transforming phase shift gradients into intensity variations. These intensity variations are mixed with other intensity variations, making it difficult to extract quantitative information.
Quantitative phase contrast methods are distinguished from conventional phase contrast methods in that they create a second so-called phase shift image or phase image, independent of the intensity (bright field) image. Phase unwrapping methods are generally applied to the phase shift image to give absolute phase shift values in each pixel, as exemplified by Figure 1.
The principal methods for measuring and visualizing phase shifts include ptychography and various types of holographic microscopy methods such as digital holographic microscopy, holographic interference microscopy and digital in-line holographic microscopy. Common to these methods is that an interference pattern (hologram) is recorded by a digital image sensor. From the recorded interference pattern, the intensity and the phase shift image is numerically created by a computer algorithm.[4]
Quantitative phase contrast microscopy is primarily used to observed unstained living cells. Measuring the phase delay images of biological cells provides quantitative information about the morphology and the drymass of individual cells.[5] Contrary to conventional phase contrast images[citation needed], phase shift images of living cells are suitable to be processed by image analysis software. This has led to the development of non-invasive live cell imaging and automated cell culture analysis systems based on quantitative phase contrast microscopy.[6]
See also
[edit]- Cytometry
- Digital holographic microscopy
- Holographic interference microscopy
- Live cell imaging
- Phase-contrast microscopy
- Ptychography
- Time stretch quantitative phase imaging
References
[edit]- ^ Etienne Cuche; Frédéric Bevilacqua; Christian Depeursinge (1999). "Digital holography for quantitative phase-contrast imaging". Optics Letters. 24 (5): 291–293. Bibcode:1999OptL...24..291C. doi:10.1364/OL.24.000291. PMID 18071483.
- ^ Park Y, Depeursinge C, Popescu G (2018). "Quantitative phase imaging in biomedicine". Nature Photonics. 12 (10): 578–589. Bibcode:2018NaPho..12..578P. doi:10.1038/s41566-018-0253-x. S2CID 256704142.
- ^ Manuel Kemmler; Markus Fratz; Dominik Giel; Norbert Saum; Albrecht Brandenburg; Christian Hoffmann (2007). "Noninvasive time-dependent cytometry monitoring by digital holography". Journal of Biomedical Optics. 12 (6): 064002. Bibcode:2007JBO....12f4002K. doi:10.1117/1.2804926. PMID 18163818. S2CID 40335328.
- ^ Myung K. Kim (2010). "Principles and techniques of digital holographic microscopy". SPIE Reviews. 1: 018005. Bibcode:2010SPIER...1a8005K. doi:10.1117/6.0000006.
- ^ Zangle T, Teitell M (2014). "Live-cell mass profiling: an emerging approach in quantitative biophysics". Nature Methods. 11 (12): 1221–1228. doi:10.1038/nmeth.3175. PMC 4319180. PMID 25423019.
- ^ Chen, Claire Lifan; Mahjoubfar, Ata; Tai, Li-Chia; Blaby, Ian K.; Huang, Allen; Niazi, Kayvan Reza; Jalali, Bahram (2016). "Deep Learning in Label-free Cell Classification". Scientific Reports. 6: 21471. Bibcode:2016NatSR...621471C. doi:10.1038/srep21471. PMC 4791545. PMID 26975219.published under CC BY 4.0 licensing