Image fusion for dynamic contrast enhanced magnetic resonance imaging

Twellmann T, Saalbach A, Gerstung O, Leach MO, Nattkemper TW (2004)
Biomed Eng Online 3(1): 35.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
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Twellmann, ThorstenUniBi; Saalbach, Axel; Gerstung, Olaf; Leach, Martin O; Nattkemper, Tim WilhelmUniBi
Abstract / Bemerkung
BACKGROUND: Multivariate imaging techniques such as dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) have been shown to provide valuable information for medical diagnosis. Even though these techniques provide new information, integrating and evaluating the much wider range of information is a challenging task for the human observer. This task may be assisted with the use of image fusion algorithms. METHODS: In this paper, image fusion based on Kernel Principal Component Analysis (KPCA) is proposed for the first time. It is demonstrated that a priori knowledge about the data domain can be easily incorporated into the parametrisation of the KPCA, leading to task-oriented visualisations of the multivariate data. The results of the fusion process are compared with those of the well-known and established standard linear Principal Component Analysis (PCA) by means of temporal sequences of 3D MRI volumes from six patients who took part in a breast cancer screening study. RESULTS: The PCA and KPCA algorithms are able to integrate information from a sequence of MRI volumes into informative gray value or colour images. By incorporating a priori knowledge, the fusion process can be automated and optimised in order to visualise suspicious lesions with high contrast to normal tissue. CONCLUSION: Our machine learning based image fusion approach maps the full signal space of a temporal DCE-MRI sequence to a single meaningful visualisation with good tissue/lesion contrast and thus supports the radiologist during manual image evaluation.
Erscheinungsjahr
2004
Zeitschriftentitel
Biomed Eng Online
Band
3
Ausgabe
1
Art.-Nr.
35
ISSN
1475-925X
Page URI
https://pub.uni-bielefeld.de/record/1666510

Zitieren

Twellmann T, Saalbach A, Gerstung O, Leach MO, Nattkemper TW. Image fusion for dynamic contrast enhanced magnetic resonance imaging. Biomed Eng Online. 2004;3(1): 35.
Twellmann, T., Saalbach, A., Gerstung, O., Leach, M. O., & Nattkemper, T. W. (2004). Image fusion for dynamic contrast enhanced magnetic resonance imaging. Biomed Eng Online, 3(1), 35. https://doi.org/10.1186/1475-925X-3-35
Twellmann, Thorsten, Saalbach, Axel, Gerstung, Olaf, Leach, Martin O, and Nattkemper, Tim Wilhelm. 2004. “Image fusion for dynamic contrast enhanced magnetic resonance imaging”. Biomed Eng Online 3 (1): 35.
Twellmann, T., Saalbach, A., Gerstung, O., Leach, M. O., and Nattkemper, T. W. (2004). Image fusion for dynamic contrast enhanced magnetic resonance imaging. Biomed Eng Online 3:35.
Twellmann, T., et al., 2004. Image fusion for dynamic contrast enhanced magnetic resonance imaging. Biomed Eng Online, 3(1): 35.
T. Twellmann, et al., “Image fusion for dynamic contrast enhanced magnetic resonance imaging”, Biomed Eng Online, vol. 3, 2004, : 35.
Twellmann, T., Saalbach, A., Gerstung, O., Leach, M.O., Nattkemper, T.W.: Image fusion for dynamic contrast enhanced magnetic resonance imaging. Biomed Eng Online. 3, : 35 (2004).
Twellmann, Thorsten, Saalbach, Axel, Gerstung, Olaf, Leach, Martin O, and Nattkemper, Tim Wilhelm. “Image fusion for dynamic contrast enhanced magnetic resonance imaging”. Biomed Eng Online 3.1 (2004): 35.
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11 Zitationen in Europe PMC

Daten bereitgestellt von Europe PubMed Central.

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