Validation of Machine Learning Model Performance in Predicting Blood Transfusion After Primary and Revision Total Hip Arthroplasty

被引:7
作者
Buddhiraju, Anirudh [1 ]
Shimizu, Michelle Riyo [1 ]
Subih, Murad A. [1 ]
Chen, Tony Lin-Wei [1 ]
Seo, Henry Hojoon [1 ]
Kwon, Young-Min [1 ,2 ]
机构
[1] Harvard Med Sch, Bioengn Lab, Dept Orthopaed Surg, Massachusetts Gen Hosp, Boston, MA USA
[2] Harvard Med Sch, Dept Orthopaed Surg, Massachusetts Gen Hosp, 55 Fruit St, Boston, MA 02114 USA
关键词
machine learning; total hip arthroplasties; clinical prediction; validation; transfusion; ARTIFICIAL-INTELLIGENCE; SURGERY; RISK; CURVE;
D O I
10.1016/j.arth.2023.06.002
中图分类号
R826.8 [整形外科学]; R782.2 [口腔颌面部整形外科学]; R726.2 [小儿整形外科学]; R62 [整形外科学(修复外科学)];
学科分类号
摘要
Background: The rates of blood transfusion following primary and revision total hip arthroplasty (THA) remain as high as 9% and 18%, respectively, contributing to patient morbidity and healthcare costs. Existing predictive tools are limited to specific populations, thereby diminishing their clinical applicability. This study aimed to externally validate our previous institutionally developed machine learning (ML) algorithms to predict the risk of postoperative blood transfusion following primary and revision THA using national inpatient data.Methods: Five ML algorithms were trained and validated using data from 101,266 primary THA and 8,594 revision THA patients from a large national database to predict postoperative transfusion risk after primary and revision THA. Models were assessed and compared based on discrimination, calibration, and decision curve analysis.Results: The most important predictors of transfusion following primary and revision THA were preoperative hematocrit (<39.4%) and operation time (>157 minutes), respectively. All ML models demonstrated excellent discrimination (area under the curve (AUC) >0.8) in primary and revision THA patients, with artificial neural network (AUC = 0.84, slope = 1.11, intercept = -0.04, Brier score = 0.04), and elastic-net-penalized logistic regression (AUC = 0.85, slope = 1.08, intercept = -0.01, and Brier score = 0.12) performing best, respectively. On decision curve analysis, all 5 models demonstrated a higher net benefit than the conventional strategy of intervening for all or no patients in both patient cohorts.Conclusions: This study successfully validated our previous institutionally developed ML algorithms for the prediction of blood transfusion following primary and revision THA. Our findings highlight the potential generalizability of predictive ML tools developed using nationally representative data in THA patients.
引用
收藏
页码:1959 / 1966
页数:8
相关论文
共 51 条
[1]   Have Total Hip Arthroplasty Operative Times Changed Over the Past Decade? An Analysis of 157,574 Procedures [J].
Acuna, Alexander J. ;
Samuel, Linsen T. ;
Karnuta, Jaret M. ;
Jella, Tarun K. ;
Emara, Ahmed K. ;
Kamath, Atul F. .
JOURNAL OF ARTHROPLASTY, 2020, 35 (08) :2101-+
[2]   Machine Learning for the Orthopaedic Surgeon Uses and Limitations [J].
Alsoof, Daniel ;
McDonald, Christopher L. ;
Kuris, Eren O. ;
Daniels, Alan H. .
JOURNAL OF BONE AND JOINT SURGERY-AMERICAN VOLUME, 2022, 104 (17) :1586-1594
[3]   Outpatient Total Joint Arthroplasty [J].
Bert J.M. ;
Hooper J. ;
Moen S. .
Current Reviews in Musculoskeletal Medicine, 2017, 10 (4) :567-574
[4]   Artificial Intelligence, Machine Learning, Deep Learning, and Cognitive Computing: What Do These Terms Mean and How Will They Impact Health Care? [J].
Bini, Stefano A. .
JOURNAL OF ARTHROPLASTY, 2018, 33 (08) :2358-2361
[5]   Incidence and Risk Factors for Blood Transfusion in Simultaneous Bilateral Total Joint Arthroplasty: A Multicenter Retrospective Study [J].
Cao, Guorui ;
Huang, Zeyu ;
Huang, Qiang ;
Zhang, Shaoyun ;
Xu, Bin ;
Pei, Fuxing .
JOURNAL OF ARTHROPLASTY, 2018, 33 (07) :2087-2091
[6]   Artificial neural networks for the prediction of transfusion rates in primary total hip arthroplasty [J].
Cohen-Levy, Wayne Brian ;
Klemt, Christian ;
Tirumala, Venkatsaiakhil ;
Burns, Jillian C. ;
Barghi, Ameen ;
Habibi, Yasamin ;
Kwon, Young-Min .
ARCHIVES OF ORTHOPAEDIC AND TRAUMA SURGERY, 2023, 143 (03) :1643-1650
[7]   Using recursive feature elimination in random forest to account for correlated variables in high dimensional data [J].
Darst, Burcu F. ;
Malecki, Kristen C. ;
Engelman, Corinne D. .
BMC GENETICS, 2018, 19
[8]   Who Is Still Receiving Blood Transfusions After Primary and Revision Total Joint Arthroplasty? [J].
DeMik, David E. ;
Carender, Christopher N. ;
Glass, Natalie A. ;
Brown, Timothy S. ;
Callaghan, John J. ;
Bedard, Nicholas A. .
JOURNAL OF ARTHROPLASTY, 2022, 37 (06) :S63-+
[9]   Improving blood product utilization at an ambulatory surgery center: a retrospective cohort study on 50 patients with lumbar disc replacement [J].
Dorenkamp, Benjamin C. ;
Janssen, Madisen K. ;
Janssen, Michael E. .
PATIENT SAFETY IN SURGERY, 2019, 13 (01)
[10]   Perioperative Allogeneic Red Blood-Cell Transfusion Associated with Surgical Site Infection After Total Hip and Knee Arthroplasty [J].
Everhart, Joshua S. ;
Sojka, John H. ;
Mayerson, Joel L. ;
Glassman, Andrew H. ;
Scharschmidt, Thomas J. .
JOURNAL OF BONE AND JOINT SURGERY-AMERICAN VOLUME, 2018, 100 (04) :288-294