Early identification of epilepsy surgery candidates: A multicenter, machine learning study

被引:15
|
作者
Wissel, Benjamin D. [1 ]
Greiner, Hansel M. [2 ,3 ]
Glauser, Tracy A. [2 ,3 ]
Pestian, John P. [1 ,2 ]
Kemme, Andrew J. [4 ]
Santel, Daniel [1 ]
Ficker, David M. [5 ]
Mangano, Francesco T. [2 ,6 ]
Szczesniak, Rhonda D. [2 ,7 ]
Dexheimer, Judith W. [1 ,2 ,4 ]
机构
[1] Cincinnati Childrens Hosp Med Ctr, Div Biomed Informat, MLC 2008,3333 Burnet Ave, Cincinnati, OH 45229 USA
[2] Univ Cincinnati, Coll Med, Dept Pediat, Cincinnati, OH USA
[3] Cincinnati Childrens Hosp Med Ctr, Div Neurol, Cincinnati, OH 45229 USA
[4] Cincinnati Childrens Hosp Med Ctr, Div Emergency Med, Cincinnati, OH 45229 USA
[5] Univ Cincinnati, Dept Neurol & Rehabil Med, Cincinnati, OH USA
[6] Cincinnati Childrens Hosp Med Ctr, Div Neurosurg, Cincinnati, OH 45229 USA
[7] Cincinnati Childrens Hosp Med Ctr, Div Biostat & Epidemiol, Cincinnati, OH 45229 USA
来源
ACTA NEUROLOGICA SCANDINAVICA | 2021年 / 144卷 / 01期
基金
美国医疗保健研究与质量局;
关键词
artificial intelligence; electronic health record; epilepsy; machine learning; medical informatics; neurology; TEMPORAL-LOBE EPILEPSY; HEALTH-CARE COSTS; PRECISION-RECALL; ACCURATE; CURVE;
D O I
10.1111/ane.13418
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Objectives Epilepsy surgery is underutilized. Automating the identification of potential surgical candidates may facilitate earlier intervention. Our objective was to develop site-specific machine learning (ML) algorithms to identify candidates before they undergo surgery. Materials & Methods In this multicenter, retrospective, longitudinal cohort study, ML algorithms were trained on n-grams extracted from free-text neurology notes, EEG and MRI reports, visit codes, medications, procedures, laboratories, and demographic information. Site-specific algorithms were developed at two epilepsy centers: one pediatric and one adult. Cases were defined as patients who underwent resective epilepsy surgery, and controls were patients with epilepsy with no history of surgery. The output of the ML algorithms was the estimated likelihood of candidacy for resective epilepsy surgery. Model performance was assessed using 10-fold cross-validation. Results There were 5880 children (n = 137 had surgery [2.3%]) and 7604 adults with epilepsy (n = 56 had surgery [0.7%]) included in the study. Pediatric surgical patients could be identified 2.0 years (range: 0-8.6 years) before beginning their presurgical evaluation with AUC =0.76 (95% CI: 0.70-0.82) and PR-AUC =0.13 (95% CI: 0.07-0.18). Adult surgical patients could be identified 1.0 year (range: 0-5.4 years) before beginning their presurgical evaluation with AUC =0.85 (95% CI: 0.78-0.93) and PR-AUC =0.31 (95% CI: 0.14-0.48). By the time patients began their presurgical evaluation, the ML algorithms identified pediatric and adult surgical patients with AUC =0.93 and 0.95, respectively. The mean squared error of the predicted probability of surgical candidacy (Brier scores) was 0.018 in pediatrics and 0.006 in adults. Conclusions Site-specific machine learning algorithms can identify candidates for epilepsy surgery early in the disease course in diverse practice settings.
引用
收藏
页码:41 / 50
页数:10
相关论文
共 50 条
  • [1] Epilepsy surgery in early infancy: A retrospective, multicenter study
    Makridis, Konstantin L.
    Klotz, Kerstin Alexandra
    Ramantani, Georgia
    Becker, Lena-Luise
    San Antonio-Arce, Victoria
    Syrbe, Steffen
    Wagner, Kathrin
    Shah, Mukesch Johannes
    Thomale, Ulrich-Wilhelm
    Tietze, Anna
    Elger, Christian E.
    Borggraefe, Ingo
    Kaindl, Angela M.
    EPILEPSIA OPEN, 2023, 8 (03) : 1182 - 1189
  • [2] Methodological Issues in Predicting Pediatric Epilepsy Surgery Candidates Through Natural Language Processing and Machine Learning
    Cohen, Kevin Bretonnel
    Glass, Benjamin
    Greiner, Hansel M.
    Holland-Bouley, Katherine
    Standridge, Shannon
    Arya, Ravindra
    Faist, Robert
    Morita, Diego
    Mangano, Francesco
    Connolly, Brian
    Glauser, Tracy
    Pestian, John
    BIOMEDICAL INFORMATICS INSIGHTS, 2016, 8 : 11 - 18
  • [3] Identification of New Epilepsy Syndromes using Machine Learning
    Arias, Carlos R.
    Duron, Reyna M.
    Delgado-Escueta, Antonio, V
    2019 IEEE 39TH CENTRAL AMERICA AND PANAMA CONVENTION (CONCAPAN XXXIX), 2019, : 24 - 27
  • [4] Machine Learning for Precision Epilepsy Surgery
    Jehi, Lara
    EPILEPSY CURRENTS, 2023, 23 (02) : 78 - 83
  • [5] EEG biomarker candidates for the identification of epilepsy
    Gallotto, Stefano
    Seeck, Margitta
    CLINICAL NEUROPHYSIOLOGY PRACTICE, 2023, 8 : 32 - 41
  • [6] Prospective validation of a machine learning model that uses provider notes to identify candidates for resective epilepsy surgery
    Wissel, Benjamin D.
    Greiner, Hansel M.
    Glauser, Tracy A.
    Holland-Bouley, Katherine D.
    Mangano, Francesco T.
    Santel, Daniel
    Faist, Robert
    Zhang, Nanhua
    Pestian, John P.
    Szczesniak, Rhonda D.
    Dexheimer, Judith W.
    EPILEPSIA, 2020, 61 (01) : 39 - 48
  • [7] Identifying epilepsy surgery candidates in the outpatient clinic
    Gilliam, Frank G.
    Albertson, Brenda
    EPILEPSY & BEHAVIOR, 2011, 20 (02) : 156 - 159
  • [8] Identification of focal epilepsy by diffusion tensor imaging using machine learning
    Lee, Dong Ah
    Lee, Ho-Joon
    Kim, Byung Joon
    Park, Bong Soo
    Kim, Sung Eun
    Park, Kang Min
    ACTA NEUROLOGICA SCANDINAVICA, 2021, 143 (06): : 637 - 645
  • [9] Machine learning in neuroimaging of epilepsy: a narrative review
    Teresa Perillo
    Sandra Perillo
    Antonio Pinto
    Journal of Medical Imaging and Interventional Radiology, 11 (1):
  • [10] Ensemble Machine Learning Based Identification of Pediatric Epilepsy
    Alotaibi, Shamsah Majed
    Atta-ur-Rahmad
    Basheer, Mohammed Imran
    Khan, Muhammad Adnan
    CMC-COMPUTERS MATERIALS & CONTINUA, 2021, 68 (01): : 149 - 165