Copyright
©The Author(s) 2021.
World J Orthop. Sep 18, 2021; 12(9): 685-699
Published online Sep 18, 2021. doi: 10.5312/wjo.v12.i9.685
Published online Sep 18, 2021. doi: 10.5312/wjo.v12.i9.685
Table 1 Summary of machine learning for orthopaedic surgery risk assessment
Ref. | Conclusion |
Bevevino et al[26] | ANN capable of accurately estimating the likelihood of amputation |
Gowd et al[25] | Supervised ML outperformed ASA classification models in predicting adverse events, transfusion, extended length of stay, surgical site infection, return to operating room, and readmission |
Harris et al[24] | ML was moderately accurate in predicting 30-d mortality and cardiac complications after elective primary TJA |
Kim et al[23] | ANN more accurate than ASA in predicting mortality, VTE, cardiac and wound complications following posterior lumbar spine fusion |
Table 2 Summary of machine learning for orthopaedic surgery outcomes assessment
Ref. | Conclusion |
Bongers et al[40] | ML algorithm overestimated ability to predict 5-year survival in patients with chondrosarcoma |
Fontana et al[41] | Used ML to demonstrate fair-to-good ability in predicting 2-year postsurgical MCID following TJA |
Greenstein et al[51] | Used EMR-integrated ANN to predict discharge disposition after TJA on small data set |
Janssen et al[38] | Boosting ML algorithm far superior in training data sets to classic scoring system and nomogram in predicting survival in patients with long bone metastases at 30 days, 90 days, and 1 year |
Karnuta et al[50] | Bayes ML algorithm demonstrated excellent accuracy in prediction of length of stay and cost of an episode of care for hip fracture |
Menendez et al[44] | Used ML on patient-narrative analysis to show patient satisfaction after TSA is linked to hospital environment, nontechnical skills, and delays |
Navarro et al[46] | Created a valid ML algorithm that predicted length of stay and costs before primary TKA |
Pereira et al[55] | Boosting ML algorithm comparable to nomogram in its ability to predict survival in metastatic spine disease with testing data sets |
Ramkumar et al[45] | Created a valid and reliable ML algorithm that predicted length of stay and payment prior to primary THA |
Ramkumar et al[47] | Developed several ML based models for primary LEA that preoperatively predict cost, length of stay, and discharge disposition |
Thio et al[39] | Created a high performing ML algorithm that could predict 5-year survival in patients with chondrosarcoma |
Table 3 Summary of machine learning for orthopaedic surgery imaging applications
Ref. | Subspecialty | Conclusion |
Al-Helo et al[66] | Spine | Neural network (93.2% accurate) and k-means approach (98% accurate) used on CT scans for segmentation and prediction of lumbar wedge fractures |
Forsberg et al[62] | Spine | Annotated MRIs with information labels for each spine vertebrae used to accurately detect (99.8%) and label (97%) cervical and lumbar vertebrae |
Hetherington et al[64] | Spine | CNN successfully identified lumbar vertebral levels on ultrasound images of the sacrum |
Jamaludin et al[65] | Spine | CNN model achieved 95.6% accuracy comparable to experienced radiologists in disc detection and labeling of T2 weighted sagittal lumbar MRIs |
Pesteie et al[63] | Spine | Used ML system to detect laminae and facet joints in ultrasound images to assist in epidural steroid injection and facet joint injection administration |
Ashinsky et al[71] | Joints/arthritis | ML algorithm predicted clinically symptomatic OA on T2 weighted maps of central medial femoral condyle with 75% accuracy |
Liu et al[72] | Joints/arthritis | CNN performed rapid and accurate cartilage and bone segmentation within the knee joint |
Shah et al[73] | Joints/arthritis | CNN used to automate the segmentation and measurement of cartilage thickness based on MRIs of healthy knees |
Xue et al[70] | Joints/arthritis | CNN model trained to diagnose hip OA comparable to an attending physician with 10 years of experience in diagnosing hip OA |
Kruse et al[75] | Trauma | ML improved hip fracture detection beyond logistic regression using dual x-ray absorptiometry |
Olczak et al[74] | Trauma | DL networks identified fracture, laterality, body part, and exam view on orthopaedic trauma radiographs of the hand, wrist, and ankle |
Oh et al[78] | Oncology | ML showed superior predictive accuracy in predicting pathological femoral fractures in metastatic lung cancer |
Table 4 Summary of machine learning for orthopaedic surgery basic science applications
Ref. | Application | Conclusion |
Begg et al[83] | Gait analysis | Used SVM to automate recognition of gait changes due to aging |
Joyseeree et al[84] | Gait analysis | Used random forest, boosting, and SVM to identify disease on gait analysis data |
Sikka et al[85] | Wearable technology | Utilized ML analytics via wearable technology to improve sports performance and identify risk factors for injury in sports |
Cilla et al[86] | Implant design | ML techniques used to optimize short stem hip prosthesis to reduce stress shielding effects and achieve better short-stemmed implant performance |
- Citation: Lalehzarian SP, Gowd AK, Liu JN. Machine learning in orthopaedic surgery. World J Orthop 2021; 12(9): 685-699
- URL: https://www.wjgnet.com/2218-5836/full/v12/i9/685.htm
- DOI: https://dx.doi.org/10.5312/wjo.v12.i9.685