A Machine Learning Algorithm to Identify Patients at Risk of Unplanned Subsequent Surgery After Intramedullary Nailing for Tibial Shaft Fractures

Mohit Bhandari,Anne Eva J. Bulstra,Sofia Bzovsky,Job N. Doornberg,J. Carel Goslings,Laurent A. M. Hendrickx,Ruurd L. Jaarsma,Kyle J. Jeray,Gino M. M. J. Kerkhoffs,Brad Petrisor,David Ring,Emil H. Schemitsch,Marc Swiontkowski,David Sanders,Sheila Sprague,Paul Tornetta,Stephen D. Walter,Diane Heels-Ansdell,Lisa Buckingham,Pamela Leece, Helena Viveiros, Tashay Mignott, Natalie Ansell, Natalie Sidorkewicz,Julie Agel, Claire Bombardier, Jesse A. Berlin,Michael Bosse, Bruce Browner, Brenda Gillespie,Alan Jones,Peter O'Brien,Rudolf Poolman,Mark D. Macleod,Timothy Carey, Kellie Leitch, Stuart Bailey, Kevin Gurr, Ken Konito, Charlene Bartha, Isolina Low, Leila MacBean, Mala Ramu, Susan Reiber,Ruth Strapp,Christina Tieszer,Hans J. Kreder, David J. G. Stephen,Terry S. Axelrod,Albert J. M. Yee,Robin R. Richards,Joel Finkelstein,Wade Gofton, John Murnaghan, Joseph Schatztker,Michael Ford, Beverly Bulmer, Lisa Conlan, G. Yves Laflamme,Gregory Berry,Pierre Beaumont,Pierre Ranger, Georges-Henri Laflamme, Sylvain Gagnon,Michel Malo,Julio Fernandes, Marie-France Poirier,Michael D. McKee,James P. Waddell,Earl R. Bogoch,Timothy R. Daniels, Robert R. McBroom, Milena R. Vicente, Wendy Storey, Lisa M. Wild, Robert McCormack, Bertrand Perey, Thomas J. Goetz, Graham Pate,Murray J. Penner, Kostas Panagiotopoulos, Shafique Pirani, Ian G. Dommisse, Richard L. Loomer,Trevor Stone, Karyn Moon, Mauri Zomar,Lawrence X. Webb, Robert D. Teasdall, John Peter Birkedal,David Franklin Martin,David S. Ruch, Douglas J. Kilgus, David C. Pollock,Mitchel Brion Harris, Ethan Ron Wiesler, William G. Ward,Jeffrey Scott Shilt, Andrew L. Koman, Gary G. Poehling, Brenda Kulp, William R. Creevy, Andrew B. Stein,Christopher T. Bono,Thomas A. Einhorn, T. Desmond Brown,Donna Pacicca, John B. Sledge, Timothy E. Foster, Ilva Voloshin, Jill Bolton, Hope Carlisle, Lisa Shaughnessy,William T. Obremskey, C. Michael LeCroy, Eric G. Meinberg, Terry M. Messer, William L. Craig, Douglas R. Dirschl, Robert Caudle, Tim Harris, Kurt Elhert, William Hage, Robert Jones, Luis Piedrahita, Paul O. Schricker, Robin Driver, Jean Godwin, Philip James Kregor, Gregory Tennent, Lisa M. Truchan,Marcus Sciadini,Franklin D. Shuler, Robin E. Driver, Mary Alice Nading, Jacky Neiderstadt, Alexander R. Vap,Heather Vallier,Brendan M. Patterson, John H. Wilber, Roger G. Wilber,John K. Sontich, Timothy Alan Moore, Drew Brady, Daniel R. Cooperman, John A. Davis,Beth Ann Cureton,Scott Mandel, R. Douglas Orr, John T. S. Sadler, Tousief Hussain, Krishan Rajaratnam,Bradley Petrisor, Brian Drew, Drew A. Bednar, Desmond C. H. Kwok,Shirley Pettit, Jill Hancock,Peter A. Cole, Joel J. Smith, Gregory A. Brown, Thomas A. Lange, John G. Stark, Bruce A. Levy, Mary J. Garaghty, Joshua G. Salzman, Carol A. Schutte, Linda Tastad, Sandy Vang,David Seligson, Craig S. Roberts, Arthur L. Malkani, Laura Sanders, Carmen Dyer, Jessica Heinsen, Langan Smith, Sudhakar Madanagopal, Linda Frantz-Bush, Kevin J. Coupe, Jeffrey J. Tucker, Allen R. Criswell, Rosemary Buckle, Alan Jeffrey Rechter, Dhiren Shaskikant Sheth, Brad Urquart, Thea Trotscher, Mark J. Anders, Joseph M. Kowalski,Marc S. Fineberg, Lawrence B. Bone, Matthew J. Phillips, Bernard Rohrbacher, Philip Stegemann,William M. Mihalko, Cathy Buyea, Stephen J. Augustine,William Thomas Jackson, Gregory Solis, Sunday U. Ero, Daniel N. Segina, Hudson B. Berrey, Samuel G. Agnew, Michael Fitzpatrick, Lakina C. Campbell, Lynn Derting, June McAdams, J. Card Goslings, Kees Jan Ponsen, Jan Luitse,Peter Kloen, Pieter Joosse, Jasper Winkelhagen, Raphael Duivenvoorden,David C. Teague, Joseph Davey,J. Andy Sullivan, William J. J. Ertl, Timothy A. Puckett, Charles B. Pasque, John F. Tompkins, Curtis R. Gruel,Paul Kammerlocher, Thomas P. Lehman, William R. Puffinbarger, Kathy L. Carl,Donald W. Weber, Nadr M. Jomha, Gordon R. Goplen, Edward Masson,Lauren A. Beaupre, Karen E. Greaves, Lori N. Schaump,David R. Goetz, David E. Westberry, J. Scott Broderick, Bryan S. Moon,Stephanie L. Tanner, James N. Powell,Richard E. Buckley, Leslie Elves, Stephen Connolly, Edward P. Abraham, Trudy Steele, Thomas Ellis, Alex Herzberg, George A. Brown, Dennis E. Crawford, Robert Hart, James Hayden, Robert M. Orfaly, Theodore Vigland, Maharani Vivekaraj, Gina L. Bundy,Theodore Miclau,Amir Matityahu, R. Richard Coughlin,Utku Kandemir, R. Trigg McClellan, Cindy Hsin-Hua Lin, David Karges, Kathryn Cramer,J. Tracy Watson, Berton Moed, Barbara Scott, Dennis J. Beck,Carolyn Orth, David Puskas, Russell Clark, Jennifer Jones,Kenneth A. Egol,Nader Paksima, Monet France,Eugene K. Wai, Garth Johnson, Ross Wilkinson, Adam T. Gruszczynski, Lisa Vexler,Wouter H. Mallee,Inger B. Schipper

JOURNAL OF ORTHOPAEDIC TRAUMA(2021)

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摘要
Objectives: In the SPRINT trial, 18% of patients with a tibial shaft fracture (TSF) treated with intramedullary nailing (IMN) had one or more unplanned subsequent surgical procedures. It is clinically relevant for surgeon and patient to anticipate unplanned secondary procedures, other than operations that can be readily expected such as reconstructive procedures for soft tissue defects. Therefore, the objective of this study was to develop a machine learning (ML) prediction model using the SPRINT data that can give individual patients and their care team an estimate of their particular probability of an unplanned second surgery. Methods: Patients from the SPRINT trial with unilateral TSFs were randomly divided into a training set (80%) and test set (20%). Five ML algorithms were trained in recognizing patterns associated with subsequent surgery in the training set based on a subset of variables identified by random forest algorithms. Performance of each ML algorithm was evaluated and compared based on (1) area under the ROC curve, (2) calibration slope and intercept, and (3) the Brier score. Results: Total data set comprised 1198 patients, of whom 214 patients (18%) underwent subsequent surgery. Seven variables were used to train ML algorithms: (1) Gustilo-Anderson classification, (2) Tscherne classification, (3) fracture location, (4) fracture gap, (5) polytrauma, (6) injury mechanism, and (7) OTA/AO classification. The best-performing ML algorithm had an area under the ROC curve, calibration slope, calibration intercept, and the Brier score of 0.766, 0.954, -0.002, and 0.120 in the training set and 0.773, 0.922, 0, and 0.119 in the test set, respectively. Conclusions: An ML algorithm was developed to predict the probability of subsequent surgery after IMN for TSFs. This ML algorithm may assist surgeons to inform patients about the probability of subsequent surgery and might help to identify patients who need a different perioperative plan or a more intensive approach.
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tibia shaft fracture, intramedullary nailing, subsequent surgery, machine learning, prediction model
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