| Literature DB >> 28676821 |
Siming Bayer1, Andreas Maier1, Martin Ostermeier2, Rebecca Fahrig2.
Abstract
Intraoperative brain shift during neurosurgical procedures is a well-known phenomenon caused by gravity, tissue manipulation, tumor size, loss of cerebrospinal fluid (CSF), and use of medication. For the use of image-guided systems, this phenomenon greatly affects the accuracy of the guidance. During the last several decades, researchers have investigated how to overcome this problem. The purpose of this paper is to present a review of publications concerning different aspects of intraoperative brain shift especially in a tumor resection surgery such as intraoperative imaging systems, quantification, measurement, modeling, and registration techniques. Clinical experience of using intraoperative imaging modalities, details about registration, and modeling methods in connection with brain shift in tumor resection surgery are the focuses of this review. In total, 126 papers regarding this topic are analyzed in a comprehensive summary and are categorized according to fourteen criteria. The result of the categorization is presented in an interactive web tool. The consequences from the categorization and trends in the future are discussed at the end of this work.Entities:
Year: 2017 PMID: 28676821 PMCID: PMC5476838 DOI: 10.1155/2017/6028645
Source DB: PubMed Journal: Int J Biomed Imaging ISSN: 1687-4188
A summary of the clinical result by using iMRI for tumor resection.
| Publication | Author | Year | Contribution | Number of patients | Result |
|---|---|---|---|---|---|
| [ | Hadani et al. | 2001 | iMR development | 20 | Total resection of all low grade tumors |
| [ | Knauth et al. | 1999 | Clinical usage evaluation | 41 | Complete resection was diagnosed in 15 cases but was performed in 31 cases with iMRI |
| [ | Hall et al. | 2000 | iMR development | 30 | Complete resection in 24 cases |
| [ | Hall et al. | 2000 | Clinical usage evaluation | 30 | Complete resection in 24 cases |
| [ | Nimsky et al. | 2001 | Clinical usage evaluation | 16 | Complete resection in 14 cases |
| [ | Black et al. | 1999 | Clinical usage evaluation | 31 | In more than one-third of the cases, tumor residual was detected with iMRI where the surgeon considered a complete removal without iMRI |
A summary of publications regarding measurement and quantification of intraoperative brain shift.
| Publication | Author | Year | Modality | Global transformation | Registration basis | Similarity measurement | Quantification object |
|---|---|---|---|---|---|---|---|
| [ | Maurer et al. | 1998 | Coagulation | Rigid | Feature-based | Magnitude, direction, risk factor | |
| [ | Nimsky et al. | 2000 | iMR | Rigid | Feature-based | Euclidean distance | Magnitude, direction, risk factor |
| [ | Hartkens et al. | 2003 | iMR | Nonrigid | Intensity-based | Mutual information | Magnitude |
| [ | Trantakis et al. | 2003 | iMR | Nonrigid | Intensity-based | Mutual information | Magnitude, direction |
| [ | Benveniste and Germano | 2005 | Risk factor | ||||
| [ | Maurer et al. | 1998 | iMR | Nonrigid | Intensity-based | Mutual information | Magnitude |
| [ | Hill et al. | 1999 | iMR | Nonrigid | Intensity-based | Mutual information | Magnitude, direction |
| [ | Hastreiter et al. | 2004 | iMR | Rigid | Feature-based | Mutual information | Magnitude, direction, risk factor |
| [ | Hill et al. | 1997 | Coagulation | Rigid | Magnitude | ||
| [ | Letteboer et al. | 2005 | iUS | Rigid | Mutual information | Magnitude, direction | |
| [ | Dorward et al. | 1998 | Coagulation | Magnitude, direction |
A summary about the compensation techniques for brain shift.
| Modality | iMR | [ |
| iUS | [ | |
| Laser Range Scanner | [ | |
| Stereo Vision | [ | |
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| Compensation strategy | Image registration based | [ |
| Model-based | [ | |
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| Global transformation | Rigid | [ |
| Nonrigid | [ | |
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| Transformation model | Thin plate spline | [ |
| Radial based function | [ | |
| Spline | [ | |
| Free form deformation | [ | |
| Optical flow | [ | |
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| Registration basis | Intensity-based | [ |
| Feature-based | [ | |
| Hybrid | [ | |
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| Optimization technique | Gradient descent | [ |
| Powell | [ | |
| Expectation maximization | [ | |
| Levenberg-Marquardt | [ | |
| Multiresolution | [ | |
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| Computational platform | GPU | [ |
| Cluster computer | [ | |
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| Similarity measurement | Euclidean distance | [ |
| (Normalized) mutual information | [ | |
| (Normalized) correlation coefficient | [ | |
| Sum of Squared Difference | [ | |
| Chamfer similarity | [ | |
| Correlation ratio | [ | |
| Gaussian mixture model | [ | |
| Energy function | [ | |
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| Validation | Phantom | [ |
| Clinical | [ | |
| Animal | [ | |
A summary of publications about brain shift modeling.
| Constitutive model | Linear elastic | [ |
| Nonlinear elastic | [ | |
| Viscoelastic | [ | |
| Biphasic | [ | |
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| Mesh element | Tetrahedral | [ |
| Quadrilateral | [ | |
| Pentahedral | [ | |
| Hexahedral | [ | |
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| Validation | Clinical | [ |
| Phantom | [ | |
| Animal | [ | |