Medicine:Computer-assisted orthopedic surgery

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Computer-assisted orthopedic surgery
Smart Correction Radigraphic Navigation Page - 1.jpg
Radiographic imaging is combined with computer technology to reduce a distal femoral fracture by aligning the red and green lines.
Other namesCAOS
Specialtyorthopedic

Computer-assisted orthopedic surgery or computer-assisted orthopaedic surgery (sometimes abbreviated as CAOS[1]) is a discipline where computer technology is applied pre-, intra- and/or post-operatively to improve the outcome of orthopedic surgical procedures.[2][3] Although records show that it has been implemented since the 1990s,[4] CAOS is still an active research discipline which brings together orthopedic practitioners with traditionally technical disciplines, such as engineering, computer science and robotics.

Goals and Targeted Outcomes

The principal idea behind CAOS is that operative outcomes will be improved through the use of computer technology. Taking the example of joint replacement, the task of the surgeon is to integrate the new joint components into the patient's existing anatomy; CAOS technologies allow the surgeon to:[2][4]

  • Plan the component placement in advance, including determination of the appropriate component sizes;
  • Measure the intra-operative placement of the components in real time, making sure that the plan is adhered to;
  • Measure the post-operative result

Procedural Approaches

CAOS does not substantially deviate from traditional surgical procedures, because the intended goal is to improve the overall operative outcome of the surgery. In image-based procedures, the patient still undergoes similar pre-operative screenings (consultations, scans, etc.).[2] However, CAOS allows the surgeon to also create a "patient jig",[4] which is a 3-D printed model of the skeletal structure of interest that aids the surgeon in the pre-operative planning stage. There are a variety of CAOS procedures depending on the system and navigation preferences. CAOS is initially divided into two categories:[2] an active system, in which the entire procedure can be completed by a robot with little or no help necessary from the surgeon; and a passive system, in which a robot or computerized program aids the surgeon in completing the procedure. Regardless of a passive or active system, CAOS requires a mode of navigation to accurately carry out procedures. There are three methods of navigation used to carry out the surgery.[2][4]

  • CT-Based: utilizes CT imaging to construct a 3-D* model of the patient's anatomy to guide the surgeon either: through a step-by-step walk through of the procedure; or providing real-time feedback of the operation to the surgeon. Both methods allow the surgeon to easier visualize anatomical landmarks, thus increasing both precision and accuracy of prosthetic implants.[2][4]
  • Fluoroscopy-Based: allows the surgeon to take multiple fluoroscopic images (at different angles) of the surgical site, which provides landmarks for instrument and prosthetic placement. Fluoroscopic imaging can be either 2-D or 3-D*, and is static - it does not provide video-like feedback to the surgeon due to its nature of using still images taken during the procedure, but it significantly reduces radiation exposure to the patient.[2][4]
  • Imageless: involves the computer constructing a digitized anatomical model of the area of interest by referencing the results of the patient's Orthopedic tests, such as joint rotation angles, flexion/extension angles, etc. Although a digital image is constructed by the computer, there are no image-taking processes in both the pre-operative and intra-operative stages thereby eliminating radiation exposure, and reducing operation time.[2][4]

*The 3-D images are created when the computer interacts with body parts via infrared lights and gate detectors.[4]

With CAOS, the surgeon can more accurately pinpoint anatomical landmarks that might be hard to see in a small incision. A chosen navigation system then guides the surgeon through different bone cuts and finally to implantation.

Shortcomings

Although CAOS has advantages in both the accuracy and precision of the procedure at hand, it is still not widely accepted within the orthopedic community for various reasons. One such reason is the increased medical costs to the patient.[5][3] Regardless of the navigation preference, the inclusion of computer technology results in increased hospital expenditures, which are then billed to the patient. Since CAOS is still an area of active research, insurance plans are also unlikely to cover the cost of the procedures.[3] Some studies suggest CAOS can be cost-effective for the hospital under the circumstance that a large volume of procedures are conducted on geriatric patients.[5] Other than costs, each of the navigation methods has a shortcoming: CT-based navigation systems increase radiation exposure to the patient;[2] fluoroscopy-based navigation increases the duration of the procedure due to the surgeon pausing to take images for an appropriate template;[2] and imageless navigation relies heavily upon the skill of the surgeon to input accurate values derived from Orthopedic tests.[2]

Current Development Status

There is evidence that implants and procedures undertaken with computer-assisted orthopedic surgery have significantly higher levels of accuracy and precision[6][7][8][9] However, it is not conclusive that CAOS technologies result in a significant long-term improvement in operative outcome, studies suggest that CAOS may lower revision rates.[10] Further, because of the functional adaptability of bone, errors in component placement may become unimportant in the long term.[3][11] Due to the relatively short time period over which CAOS has developed, long-term follow-up studies have not yet been possible.[11] Whilst the surgeon (or even medical students in laboratory studies[12][13]) can achieve better results in terms of planned vs. achieved placement of components, it is not clear whether the plan has been constructed optimally.

Currently, computer-assisted orthopedic surgery is mostly used in knee implant surgery because of the precision the surgeon get with femoral and tibial bone cuts.[3][4] It is also used to navigate acetabular components placement where correct cup inclination is crucial.[2][3][4] Although CAOS is still not widely accepted by many orthopedic surgeons, it is shown to be an incredibly useful tool in facilitating the training of new surgeons due to the creation of images to help visualize anatomical landmarks for procedures.[12][13] More developments are being made to reduce both costs, and radiation exposure while providing accurate guidance to the surgeon via ultrasound imaging.[14] This navigation method is still currently being tested, and is not readily available for clinical use.[3]

References

  1. Nolte Lutz P., Beutler Thomas (2004). "Basic principles of CAOS". Injury 35: 6–16. doi:10.1016/j.injury.2004.05.005. PMID 15183698. 
  2. 2.00 2.01 2.02 2.03 2.04 2.05 2.06 2.07 2.08 2.09 2.10 2.11 Mavrogenis, Andreas F.; Savvidou, Olga D.; Mimidis, George; Papanastasiou, John; Koulalis, Dimitrios; Demertzis, Nikolaos; Papagelopoulos, Panayiotis J. (2013-08-01). "Computer-assisted Navigation in Orthopedic Surgery" (in en). Orthopedics 36 (8): 631–642. doi:10.3928/01477447-20130724-10. ISSN 0147-7447. PMID 23937743. 
  3. 3.0 3.1 3.2 3.3 3.4 3.5 3.6 Joskowicz, Leo; Hazan, Eric J. (2016). "Computer Aided Orthopaedic Surgery: Incremental shift or paradigm change?". Medical Image Analysis 33: 84–90. doi:10.1016/j.media.2016.06.036. PMID 27407004. 
  4. 4.0 4.1 4.2 4.3 4.4 4.5 4.6 4.7 4.8 4.9 Zheng, Guoyan; Nolte, Lutz P. (2015). "Computer-Assisted Orthopedic Surgery: Current State and Future Perspective" (in English). Frontiers in Surgery 2: 66. doi:10.3389/fsurg.2015.00066. ISSN 2296-875X. PMID 26779486. 
  5. 5.0 5.1 Gøthesen, Øystein; Slover, James; Havelin, Leif; Askildsen, Jan Erik; Malchau, Henrik; Furnes, Ove (2013-07-06). "An economic model to evaluate cost-effectiveness of computer assisted knee replacement surgery in Norway" (in En). BMC Musculoskeletal Disorders 14 (1): 202. doi:10.1186/1471-2474-14-202. ISSN 1471-2474. PMID 23829478. 
  6. Sidon, Eli; Steinberg, Ely L. (2012). "Accuracy study of new computer-assisted orthopedic surgery software". European Journal of Radiology 81 (12): 4029–4034. doi:10.1016/j.ejrad.2012.07.016. PMID 22883531. 
  7. Du, Hailong; Hu, Lei; Li, Changsheng; Wang, Tianmiao; Zhao, Lu; Li, Yang; Mao, Zhi; Liu, Daohong et al. (2015-09-01). "Advancing computer-assisted orthopaedic surgery using a hexapod device for closed diaphyseal fracture reduction" (in en). The International Journal of Medical Robotics and Computer Assisted Surgery 11 (3): 348–359. doi:10.1002/rcs.1614. ISSN 1478-596X. PMID 25242630. 
  8. Stiehl, James B.; Heck, David A. (2015-01-01). "How Precise Is Computer-navigated Gap Assessment in TKA?" (in en). Clinical Orthopaedics and Related Research 473 (1): 115–118. doi:10.1007/s11999-014-3785-5. ISSN 0009-921X. PMID 25034979. 
  9. Dubois-Ferrière, Victor; Gamulin, Axel; Chowdhary, Ashwin; Fasel, Jean; Stern, Richard; Assal, Mathieu (2016). "Syndesmosis reduction by computer-assisted orthopaedic surgery with navigation: Feasibility and accuracy in a cadaveric study". Injury 47 (12): 2694–2699. doi:10.1016/j.injury.2016.10.009. PMID 27810152. 
  10. Lüring, C.; Kauper, M.; Bäthis, H.; Perlick, L.; Beckmann, J.; Grifka, J.; Tingart, M.; Rath, B. (2012-03-01). "A five to seven year follow-up comparing computer-assisted vs freehand TKR with regard to clinical parameters" (in en). International Orthopaedics 36 (3): 553–558. doi:10.1007/s00264-011-1297-4. ISSN 0341-2695. PMID 21674288. 
  11. 11.0 11.1 Burnett, R. Stephen J.; Barrack, Robert L. (2013-01-01). "Computer-assisted Total Knee Arthroplasty Is Currently of No Proven Clinical Benefit: A Systematic Review" (in en). Clinical Orthopaedics and Related Research 471 (1): 264–276. doi:10.1007/s11999-012-2528-8. ISSN 0009-921X. PMID 22948522. 
  12. 12.0 12.1 Cobb, J.P. et al.: Navigation Reduces the Learning Curve in Resurfacing Total Hip Arthroplasty, page 90, Clinical Orthopaedics & Related Research (463)
  13. 13.0 13.1 Picard, Frederic; Moholkar, Kirti; Gregori, Alberto; Deep, Kamal; Kinninmonth, Andrew (2014). "(vii) Role of Computer Assisted Surgery (CAS) in Training and Outcomes". Orthopaedics and Trauma 28 (5): 322–326. doi:10.1016/j.mporth.2014.08.006. 
  14. Billings, Seth; Kang, Hyun Jae; Cheng, Alexis; Boctor, Emad; Kazanzides, Peter; Taylor, Russell (2015-06-01). "Minimally invasive registration for computer-assisted orthopedic surgery: combining tracked ultrasound and bone surface points via the P-IMLOP algorithm" (in en). International Journal of Computer Assisted Radiology and Surgery 10 (6): 761–771. doi:10.1007/s11548-015-1188-z. ISSN 1861-6410. PMID 25895079. 

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