A novel predictive model of intraoperative blood loss in patients undergoing elective lumbar surgery for degenerative pathologies

被引:5
作者
Pennington, Zach [1 ]
Ehresman, Jeff [1 ]
Molina, Camilo A. [1 ]
Schilling, Andrew [1 ]
Feghali, James [1 ]
Huq, Sakibul [1 ]
Medikonda, Ravi [1 ]
Ahmed, A. Karim [1 ]
Cottrill, Ethan [1 ]
Lubelski, Daniel [1 ]
Frank, Steven M. [2 ]
Sciubba, Daniel M. [1 ]
机构
[1] Johns Hopkins Sch Med, Dept Neurosurg, 600 N Wolfe St,Meyer 5-185A, Baltimore, MD 21287 USA
[2] Johns Hopkins Sch Med, Dept Anesthesiol Crit Care Med, Baltimore, MD 21287 USA
关键词
Blood transfusion; Intraoperative blood loss; Lumbar spine surgery; Predictive modeling; Tranexamic acid; AFFECT ANTIBIOTIC SERUM; SPINE SURGERY; TRANEXAMIC ACID; POSTOPERATIVE COMPLICATIONS; TRANSFUSION REQUIREMENTS; HOSPITAL STAY; FUSION; EFFICACY; OUTCOMES; COST;
D O I
10.1016/j.spinee.2020.06.019
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
BACKGROUND CONTEXT: Intraoperative blood loss (IOBL) is unavoidable during surgery; however, high IOBL is associated with increased morbidity and increased risk for requiring allogenic blood transfusion, itself associated with poorer outcomes. PURPOSE: Here we sought to develop and validate a predictive calculator for IOBL that could be used by surgeons to estimate likely blood loss. STUDY DESIGN/SETTING: Retrospective cohort. PATIENT SAMPLE: Series of consecutive patients who underwent elective lumbar spine surgery for degenerative pathologies over a 27-month period at a single tertiary care center. OUTCOME MEASURES: Primary outcome was IOBL. Secondary outcome was the occurrence of "major intraoperative bleeding," defined as IOBL exceeding 1 L. METHODS: Charts of included patients were reviewed for medical comorbidities, preoperative laboratory data, surgical plan, and anesthesia records. Univariate linear regressions were performed to find significant predictors of IOBL, which were then subjected to a multivariate analysis to identify the final model. Model training was performed using 70% of the included cohort and external validation was performed using 30% of the cohort. Results of the model were deployed as a freely available online calculator. RESULTS: We identified 1,281 patients who met inclusion/exclusion criteria. Mean age was 60 +/- 15 years, mean Charlson Comorbidity score was 1.1 +/- 1.6, and 51.8% were male. There were no significant differences between the training and validation cohorts with regard to any of the demographic variables or intraoperative variables; tranexamic acid use and surgical invasiveness were also similar in both cohorts. Multivariate analysis identified body mass index (beta?= 7.14; 95% confidence interval [3.15, 11.13]; p<.001), surgical invasiveness (beta?=29.18; [24.62, 33.74]; p<.001), tranexamic acid use (beta?=-0.093; [-0.171, -0.014]; p=.02), and surgical duration (beta?=2.13; [1.75, 2.51]; p<.001) as significant predictors of IOBL. The model had an overall fit of r=0.693 in the validation cohort. Construction of a receiver-operating curve for predicting major IOBL showed a C-statistic of 0.895 within the validation cohort. CONCLUSION: Here we identify and validate a model for predicting IOBL in patients undergoing lumbar spine surgery. The model was a moderately strong predictor of absolute IOBL and was demonstrated to predict the occurrence of major IOBL with a high degree of accuracy. We propose it may have future utility when counseling patients about surgical morbidity and the probability of requiring transfusion. (c) 2020 Elsevier Inc. All rights reserved.
引用
收藏
页码:1976 / 1985
页数:10
相关论文
共 43 条
  • [1] Allo M, 1996, ARCH SURG-CHICAGO, V131, P1171
  • [2] Incidence, Predictors, and Postoperative Complications of Blood Transfusion in Thoracic and Lumbar Fusion Surgery: An Analysis of 13,695 Patients from the American College of Surgeons National Surgical Quality Improvement Program Database
    Aoude, Ahmed
    Nooh, Anas
    Fortin, Maryse
    Aldebeyan, Sultan
    Jarzem, Peter
    Ouellet, Jean
    Weber, Michael H.
    [J]. GLOBAL SPINE JOURNAL, 2016, 6 (08) : 756 - 764
  • [3] Blood-loss Management in Spine Surgery
    Bible, Jesse E.
    Mirza, Muhammad
    Knaub, Mark A.
    [J]. JOURNAL OF THE AMERICAN ACADEMY OF ORTHOPAEDIC SURGEONS, 2018, 26 (02) : 35 - 44
  • [4] Cost and utilization of blood transfusion associated with spinal surgeries in the United States
    Blanchette, Christopher M.
    Wang, Peter F.
    Joshi, Ashish V.
    Asmussen, Mikael
    Saunders, William
    Kruse, Peter
    [J]. EUROPEAN SPINE JOURNAL, 2007, 16 (03) : 353 - 363
  • [5] Development and Validation of a Generalizable Model for Predicting Major Transfusion During Spine Fusion Surgery
    Carabini, Louanne M.
    Zeeni, Carine
    Moreland, Natalie C.
    Gould, Robert W.
    Avram, Michael J.
    Hemmer, Laura B.
    Bebawy, John F.
    Sugrue, Patrick A.
    Koski, Tyler R.
    Koht, Antoun
    Gupta, Dhanesh K.
    [J]. JOURNAL OF NEUROSURGICAL ANESTHESIOLOGY, 2014, 26 (03) : 205 - 215
  • [6] Indications for and Adverse Effects of Red-Cell Transfusion
    Carson, Jeffrey L.
    Triulzi, Darrell J.
    Ness, Paul M.
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 2017, 377 (13) : 1261 - 1272
  • [7] Efficacy of tranexamic acid on surgical bleeding in spine surgery: a meta-analysis
    Cheriyan, Thomas
    Maier, Stephen P., II
    Bianco, Kristina
    Slobodyanyuk, Kseniya
    Rattenni, Rachel N.
    Lafage, Virginie
    Schwab, Frank J.
    Lonner, Baron S.
    Errico, Thomas J.
    [J]. SPINE JOURNAL, 2015, 15 (04) : 752 - 761
  • [8] Dean C., 2006, SPINE J, V6, p26S, DOI [10.1016/j.spinee.2006.06.074., DOI 10.1016/J.SPINEE.2006.06.074]
  • [9] Aspirin in Patients Undergoing Noncardiac Surgery
    Devereaux, P. J.
    Mrkobrada, M.
    Sessler, D. I.
    Leslie, K.
    Alonso-Coello, P.
    Kurz, A.
    Villar, J. C.
    Sigamani, A.
    Biccard, B. M.
    Meyhoff, C. S.
    Parlow, J. L.
    Guyatt, G.
    Robinson, A.
    Garg, A. X.
    Rodseth, R. N.
    Botto, F.
    Buse, G. Lurati
    Xavier, D.
    Chan, M. T. V.
    Tiboni, M.
    Cook, D.
    Kumar, P. A.
    Forget, P.
    Malaga, G.
    Fleischmann, E.
    Amir, M.
    Eikelboom, J.
    Mizera, R.
    Torres, D.
    Wang, C. Y.
    VanHelder, T.
    Paniagua, P.
    Berwanger, O.
    Srinathan, S.
    Graham, M.
    Pasin, L.
    Le Manach, Y.
    Gao, P.
    Pogue, J.
    Whitlock, R.
    Lamy, A.
    Kearon, C.
    Baigent, C.
    Chow, C.
    Pettit, S.
    Chrolavicius, S.
    Yusuf, S.
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 2014, 370 (16) : 1494 - 1503
  • [10] Predictive Modeling for Blood Transfusion After Adult Spinal Deformity Surgery A Tree-Based Machine Learning Approach
    Durand, Wesley M.
    DePasse, John Mason
    Daniels, Alan H.
    [J]. SPINE, 2018, 43 (15) : 1058 - 1066