Prediction of Shunt Responsiveness in Suspected Patients With Normal Pressure Hydrocephalus Using the Lumbar Infusion Test: A Machine Learning Approach

被引:6
作者
MacDonald, Joel D.
机构
[1] Department of Neurosurgery and Neurooncology, Military University Hospital, Faculty of Medicine, Charles University in Prague, Prague
[2] Department of Neurosurgery, Motol University Hospital, Faculty of Medicine, Charles University in Prague, Prague
[3] Department of Cognitive Systems and Neurosciences, Czech Institute of Informatics, Robotics and Cybernetics, Czech Technical University, Prague
[4] Department of Natural Sciences, Faculty of Biomedical Engineering, Czech Technical University, Prague
[5] Institute of Pathological Physiology, Faculty of Medicine, Charles University in Prague, Prague
关键词
ICP waveform features; LIT; Lumbar infusion test; Machine learning; Normal pressure hydrocephalus; NPH; Ventriculoperitoneal shunt; VP shunt;
D O I
10.1227/NEU.0000000000001838
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Background: Machine learning (ML) approaches can significantly improve the classical R out -based evaluation of the lumbar infusion test (LIT) and the clinical management of the normal pressure hydrocephalus. Objective: To develop a ML model that accurately identifies patients as candidates for permanent cerebral spinal fluid shunt implantation using only intracranial pressure and electrocardiogram signals recorded throughout LIT. Methods: This was a single-center cohort study of prospectively collected data of 96 patients who underwent LIT and 5-day external lumbar cerebral spinal fluid drainage (external lumbar drainage) as a reference diagnostic method. A set of selected 48 intracranial pressure/electrocardiogram complex signal waveform features describing nonlinear behavior, wavelet transform spectral signatures, or recurrent map patterns were calculated for each patient. After applying a leave-one-out cross-validation training-testing split of the data set, we trained and evaluated the performance of various state-of-the-art ML algorithms. Results: The highest performing ML algorithm was the eXtreme Gradient Boosting. This model showed a good calibration and discrimination on the testing data, with an area under the receiver operating characteristic curve of 0.891 (accuracy: 82.3%, sensitivity: 86.1%, and specificity: 73.9%) obtained for 8 selected features. Our ML model clearly outperforms the classical R out -based manual classification commonly used in clinical practice with an accuracy of 62.5%. Conclusion: This study successfully used the ML approach to predict the outcome of a 5-day external lumbar drainage and hence which patients are likely to benefit from permanent shunt implantation. Our automated ML model thus enhances the diagnostic utility of LIT in management. © 2022 Congress of Neurological Surgeons. All rights reserved.
引用
收藏
页码:418 / 418
页数:1
相关论文
共 54 条
[1]   Prevalence of idiopathic normal pressure hydrocephalus: A prospective, population-based study [J].
Andersson, Johanna ;
Rosell, Michelle ;
Kockum, Karin ;
Lilja-Lund, Otto ;
Soderstrom, Lars ;
Laurell, Katarina .
PLOS ONE, 2019, 14 (05)
[2]   A survey of cross-validation procedures for model selection [J].
Arlot, Sylvain ;
Celisse, Alain .
STATISTICS SURVEYS, 2010, 4 :40-79
[3]   Dutch normal-pressure hydrocephalus study: randomized comparison of low- and medium-pressure shunts [J].
Boon, AJW ;
Tans, JTJ ;
Delwel, EJ ;
Egeler-Peerdeman, SM ;
Hanlo, PW ;
Wurzer, HAL ;
Avezaat, CJJ ;
de Jong, DA ;
Gooskens, RHJM ;
Hermans, J .
JOURNAL OF NEUROSURGERY, 1998, 88 (03) :490-495
[4]   Machine learning and glioma imaging biomarkers [J].
Booth, T. C. ;
Williams, M. ;
Luis, A. ;
Cardoso, J. ;
Ashkan, K. ;
Shuaib, H. .
CLINICAL RADIOLOGY, 2020, 75 (01) :20-32
[5]   RELATIONSHIPS BETWEEN INTRACRANIAL-PRESSURE, VENTRICULAR SIZE, AND RESISTANCE TO CSF OUTFLOW [J].
BORGESEN, SE ;
GJERRIS, F .
JOURNAL OF NEUROSURGERY, 1987, 67 (04) :535-539
[6]   Machine learning applications to clinical decision support in neurosurgery: an artificial intelligence augmented systematic review [J].
Buchlak, Quinlan D. ;
Esmaili, Nazanin ;
Leveque, Jean-Christophe ;
Farrokhi, Farrokh ;
Bennett, Christine ;
Piccardi, Massimo ;
Sethi, Rajiv K. .
NEUROSURGICAL REVIEW, 2020, 43 (05) :1235-1253
[7]   A Systematic Review on Machine Learning in Neurosurgery: The Future of Decision-Making in Patient Care [J].
Celtikci, Emrah .
TURKISH NEUROSURGERY, 2018, 28 (02) :167-173
[8]  
Chotai Silky, 2014, Surg Neurol Int, V5, P12, DOI 10.4103/2152-7806.125860
[9]  
Collins GS, 2015, ANN INTERN MED, V162, P55, DOI [10.7326/M14-0697, 10.1016/j.jclinepi.2014.11.010, 10.1016/j.eururo.2014.11.025, 10.1111/eci.12376, 10.1136/bmj.g7594, 10.1038/bjc.2014.639, 10.1186/s12916-014-0241-z, 10.1002/bjs.9736, 10.7326/M14-0698]
[10]   The predictive value of DESH for shunt responsiveness in idiopathic normal pressure hydrocephalus [J].
Craven, Claudia L. ;
Toma, Ahmed K. ;
Mostafa, Tarek ;
Patel, Neekhil ;
Watkins, Laurence D. .
JOURNAL OF CLINICAL NEUROSCIENCE, 2016, 34 :294-298