3D-Printed Replica and Porcine Explants for Pre-Clinical Optimization of Endoscopic Tumor Treatment by Magnetic Targeting
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Development of Patient-Specific 3D Replicas
- Step 1.
- Carry out computer tomography scans (CT scans) as NIFTI (neuroimaging informatics) files of patients with locally advanced PDAC.Mesh refinement:
- Step 2.
- Create a mesh in “ITK Snap”, version 3.8, by Paul Yushkevich and Guido Gerig [20]:
- Marking of relevant structures (organs, vessels, etc.) on each slide with different colors;
- Segmenting relevant structures (this makes a 3D mesh from 2D layer data). We generated 6 different meshes, the stomach, pancreas, veins, arteries, tumor, and splint;
- Exporting as stereolithography (STL) file.
- Step 3.
- Mesh refinement with Meshmixer, version 3.5.474, by Autodesk:
- Smoothing (to reduce the striations from 2D layers and anomalies from the segmentation step);
- Joining (if any segments were not fully connected during the segmentation step);
- Adding hooks or other structures for physical model (to join and hold the different parts of the replica together more easily).
- Step 4.
- Additional processing using Cinema 4D, version R19.053, student by Maxon:
- Further mesh editing (e.g., making the flange of the stomach to be able to open and close it);
- Optional video making.
- Step 5.
- Importing into Lulzbot Cura 3.6.20 (printer-specific):
- Selecting the default printing profile for polylactic acid (PLA) with a layer height of 0.18 mm; selected for a sufficiently high surface quality. Smaller layer heights will result in higher surface quality components.
- Printing temperature changed to 230 °C as per the PLA material requirement;
- Option to change amount of infill (infill is part of the 3D-printed part and not to be removed) and support (support should be removed);
- Slicing of model and generating computer-readable G-Code (G-Code is code that tells the 3D printer how to move and create the part; it is mostly a series of commands dictating movement in x-, y-, and z-direction, nozzle temperature, and nozzle feed).
3D printing: - Step 6.
- 3D printing on Lulzbot Mini (some machine parameters include: nozzle diameter of 0.5 mm, printing temperature of 230 °C, wire diameter of 2.85 mm):
- Material was Polylite PLA by Polymaker;
- Different colors by changing the filament spools: each spool was the same material type from the same manufacturer so print settings remained the same;
- Step 7.
- Post-processing of 3D-printed replica:
- Removal of infill or support material (breaking it out with pliers or sharp knives);
- Manual grinding for surface smoothing with a Dremel 4000 tool (using alumina grit sanding bands);
- Drilling holes with drill press or Dremel 4000 tool at relevant positions (for endoscope or tissue fixturing).
- Step 8.
- Assembly of replica parts:
- Using zip ties or thread to hold the replica parts together;
- Tissue sewing.
2.2. Experimental Design for a Magnetic Field Trap
3. Results
3.1. Development of Patient-Specific 3D Replica
3.2. Further Design Improvements
- Must/compulsory requirements for the 3D-printed replica:
- Must mirror the anatomical characteristics of a patient as closely as possible (organ size, shape and location);
- Must use the stomach, proximal end of duodenum, pancreas, and relevant vessels;
- Stomach must be able to attach to the porcine stomach wall;
- Single 3D-printed organs have to fit together;
- Must hold the possibility to measure a magnetic field at the tumor site.
- Can/optional requirements for the 3D-printed replica:
- Should mirror the haptic characteristics of the organs;
- Organ shapes can be personalized to different patients (satisfied in our application);
- Can mirror the elasticity of organs;
- Can mimic the mechanical characteristics of the tissue;
- Can open the anterior wall, which can be used to look inside (satisfied in our application);
- Can use different colors for different organs (satisfied in our application);
- Vessels can be hollow;
- Bile duct can be hollow, which could be used to help the operating room strategy.
3.3. Experimental Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
3D | three dimensional |
3R | reducing, refining and replacing animal experiments |
CO | Colorado, |
CT | computer tomography |
G-code | computer readable code for the 3D printer |
IRB | institutional review board |
kWh | kilo Watt hour |
LANUV | State Agency for Nature, Environment and Consumer Protection, North Rhine-Westphalia |
MNP | magnetic nanoparticles |
N | Newton |
NIFTI | Neuroimaging Informatics |
PDAC | pancreatic ductal adenocarcinoma |
PLA | polylactide acid |
SMA | superior mesenteric artery |
SLS | selective laser sintering |
STL | stereolithography |
USA | United States of America |
USD | US Dollar |
W | Watt |
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Replica | Material Costs | Electricity Costs |
---|---|---|
Pancreas | 52.56 g × 0.025USD/g = USD 1.314 | 350 min × 90 W × 0.13 USD/kWh = USD 0.068 |
Stomach | 57.78 g × 0.025USD/g = USD 1.445 | 600 min × 90 W × 0.13 USD/kWh = USD 0.117 |
Vessels | 17.12 g × 0.025USD/g = USD 0.43 | 400 min × 90 W × 0.13 $/kWh = USD 0.078 |
Total costs | USD 3.189 | USD 0.263 |
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Roeth, A.A.; Garretson, I.; Beltz, M.; Herbold, T.; Schulze-Hagen, M.; Quaisser, S.; Georgens, A.; Reith, D.; Slabu, I.; Klink, C.D.; et al. 3D-Printed Replica and Porcine Explants for Pre-Clinical Optimization of Endoscopic Tumor Treatment by Magnetic Targeting. Cancers 2021, 13, 5496. https://doi.org/10.3390/cancers13215496
Roeth AA, Garretson I, Beltz M, Herbold T, Schulze-Hagen M, Quaisser S, Georgens A, Reith D, Slabu I, Klink CD, et al. 3D-Printed Replica and Porcine Explants for Pre-Clinical Optimization of Endoscopic Tumor Treatment by Magnetic Targeting. Cancers. 2021; 13(21):5496. https://doi.org/10.3390/cancers13215496
Chicago/Turabian StyleRoeth, Anjali A., Ian Garretson, Maja Beltz, Till Herbold, Maximilian Schulze-Hagen, Sebastian Quaisser, Alex Georgens, Dirk Reith, Ioana Slabu, Christian D. Klink, and et al. 2021. "3D-Printed Replica and Porcine Explants for Pre-Clinical Optimization of Endoscopic Tumor Treatment by Magnetic Targeting" Cancers 13, no. 21: 5496. https://doi.org/10.3390/cancers13215496
APA StyleRoeth, A. A., Garretson, I., Beltz, M., Herbold, T., Schulze-Hagen, M., Quaisser, S., Georgens, A., Reith, D., Slabu, I., Klink, C. D., Neumann, U. P., & Linke, B. S. (2021). 3D-Printed Replica and Porcine Explants for Pre-Clinical Optimization of Endoscopic Tumor Treatment by Magnetic Targeting. Cancers, 13(21), 5496. https://doi.org/10.3390/cancers13215496