Feasibility and Assessment of a Machine Learning-Based Predictive Model of Outcome After Lumbar Decompression Surgery

被引:7
作者
Andre, Arthur [1 ,2 ,3 ]
Peyrou, Bruno [3 ]
Carpentier, Alexandre [2 ]
Vignaux, Jean-Jacques [3 ]
机构
[1] Ramsay Sante, Clin Geoffroy St Hilaire, Paris, France
[2] Pitie Salpetriere Univ Hosp, Neurosurg Dept, Paris, France
[3] Cortexx Med Intelligence, 156 Blvd, F-75008 Paris, France
关键词
machine learning; lumbar decompression surgery; retrospective study; synthetic electronic medical record; ROC curve; ARTIFICIAL NEURAL-NETWORKS; LOW-BACK-PAIN; SPINE SURGERY; FUSION SURGERY; COMPLICATIONS; QUALITY; IMPACT; THERAPY; OBESE; SATISFACTION;
D O I
10.1177/2192568220969373
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Study design: Retrospective study at a unique center. Objective: The aim of this study is twofold, to develop a virtual patients model for lumbar decompression surgery and to evaluate the precision of an artificial neural network (ANN) model designed to accurately predict the clinical outcomes of lumbar decompression surgery. Methods: We performed a retrospective study of complete Electronic Health Records (EHR) to identify potential unfavorable criteria for spine surgery (predictors). A cohort of synthetics EHR was created to classify patients by surgical success (green zone) or partial failure (orange zone) using an Artificial Neural Network which screens all the available predictors. Results: In the actual cohort, we included 60 patients, with complete EHR allowing efficient analysis, 26 patients were in the orange zone (43.4%) and 34 were in the green zone (56.6%). The average positive criteria amount for actual patients was 8.62 for the green zone (SD+/- 3.09) and 10.92 for the orange zone (SD 3.38). The classifier (a neural network) was trained using 10,000 virtual patients and 2000 virtual patients were used for test purposes. The 12,000 virtual patients were generated from the 60 EHR, of which half were in the green zone and half in the orange zone. The model showed an accuracy of 72% and a ROC score of 0.78. The sensitivity was 0.885 and the specificity 0.59. Conclusion: Our method can be used to predict a favorable patient to have lumbar decompression surgery. However, there is still a need to further develop its ability to analyze patients in the "failure of treatment" zone to offer precise management of patient health before spinal surgery.
引用
收藏
页码:894 / 908
页数:15
相关论文
共 95 条
[1]   Leg pain and psychological variables predict outcome 2-3 years after lumbar fusion surgery [J].
Abbott, Allan D. ;
Tyni-Lenne, Raija ;
Hedlund, Rune .
EUROPEAN SPINE JOURNAL, 2011, 20 (10) :1626-1634
[2]   Chronic Opioid Therapy After Lumbar Fusion Surgery for Degenerative Disc Disease in a Workers' Compensation Setting [J].
Anderson, Joshua T. ;
Haas, Arnold R. ;
Percy, Rick ;
Woods, Stephen T. ;
Ahn, Uri M. ;
Ahn, Nicholas U. .
SPINE, 2015, 40 (22) :1775-1784
[3]  
Andre A, 2019, Digital Medicine, P1
[4]   Cognitive-Behavioral-Based Physical Therapy for Patients With Chronic Pain Undergoing Lumbar Spine Surgery: A Randomized Controlled Trial [J].
Archer, Kristin R. ;
Devin, Clinton J. ;
Vanston, Susan W. ;
Koyanna, Tatsuki ;
Phillips, Sharon E. ;
George, Steven Z. ;
McGirt, Matthew J. ;
Spengler, Dan M. ;
Aaronson, Oran S. ;
Cheng, Joseph S. ;
Wegener, Stephen T. .
JOURNAL OF PAIN, 2016, 17 (01) :76-89
[5]   Patient characteristics of smokers undergoing lumbar spine surgery: an analysis from the Quality Outcomes Database [J].
Asher, Anthony L. ;
Devin, Clinton J. ;
McCutcheon, Brandon ;
Chotai, Silky ;
Archer, Kristin R. ;
Nian, Hui ;
Harrell, Frank E., Jr. ;
McGirt, Matthew ;
Mummaneni, Praveen V. ;
Shaffrey, Christopher I. ;
Foley, Kevin ;
Glassman, Steven D. ;
Bydon, Mohamad .
JOURNAL OF NEUROSURGERY-SPINE, 2017, 27 (06) :661-669
[6]   ` An analysis from the Quality Outcomes Database, Part 2. Predictive model for return to work after elective surgery for lumbar degenerative disease [J].
Asher, Anthony L. ;
Devin, Clinton J. ;
Archer, Kristin R. ;
Chotai, Silky ;
Parker, Scott L. ;
Bydon, Mohamad ;
Nian, Hui ;
Harrell, Frank E., Jr. ;
Speroff, Theodore ;
Dittus, Robert S. ;
Philips, Sharon E. ;
Shaffrey, Christopher I. ;
Foley, Kevin T. ;
McGirt, Matthew J. .
JOURNAL OF NEUROSURGERY-SPINE, 2017, 27 (04) :370-381
[7]   Follow-up score, change score or percentage change score for determining clinical important outcome following surgery? An observational study from the Norwegian registry for Spine surgery evaluating patient reported outcome measures in lumbar spinal stenosis and lumbar degenerative spondylolisthesis [J].
Austevoll, Ivar Magne ;
Gjestad, Rolf ;
Grotle, Margreth ;
Solberg, Tore ;
Brox, Jens Ivar ;
Hermansen, Erland ;
Rekeland, Frode ;
Indrekvam, Kari ;
Storheim, Kjersti ;
Hellum, Christian .
BMC MUSCULOSKELETAL DISORDERS, 2019, 20 (1)
[8]  
Azimi P., 2014, GLOB SPINE J, V4, DOI [10.1055/s-0034-1376643, DOI 10.1055/S-0034-1376643]
[9]   Use of artificial neural networks to decision making in patients with lumbar spinal canal stenosis [J].
Azimi, Parisa ;
Mohammadi, Hassan R. ;
Benzel, Edward C. ;
Shahzadi, Shorab ;
Azhari, Shirzad .
JOURNAL OF NEUROSURGICAL SCIENCES, 2017, 61 (06) :603-611
[10]  
Azimi P, 2015, J SPINAL DISORD TECH, V28, pE161, DOI 10.1097/BSD.0000000000000200