Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques

Despite the proven clinical value of spinal cord stimulation (SCS) for patients with failed back surgery syndrome (FBSS), factors related to a successful SCS outcome are not yet clearly understood. This study aimed to predict responders for high frequency SCS at 10 kHz (HF-10). Data before implantat...

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Main Authors: Lisa Goudman, Jean-Pierre Van Buyten, Ann De Smedt, Iris Smet, Marieke Devos, Ali Jerjir, Maarten Moens
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Journal of Clinical Medicine
Subjects:
Online Access:https://www.mdpi.com/2077-0383/9/12/4131
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spelling doaj-b0c0b062d8e347e89e01b0a38cb703842020-12-22T00:05:46ZengMDPI AGJournal of Clinical Medicine2077-03832020-12-0194131413110.3390/jcm9124131Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning TechniquesLisa Goudman0Jean-Pierre Van Buyten1Ann De Smedt2Iris Smet3Marieke Devos4Ali Jerjir5Maarten Moens6Department of Neurosurgery, Universitair Ziekenhuis Brussel, Laarbeeklaan 101, 1090 Jette, BelgiumMultidisciplinary Pain Center, AZ Nikolaas, Moerlandstraat 1, 9100 Sint-Niklaas, BelgiumCenter for Neurosciences (C4N), Vrije Universiteit Brussel, Laarbeeklaan 103, 1090 Jette, BelgiumMultidisciplinary Pain Center, AZ Nikolaas, Moerlandstraat 1, 9100 Sint-Niklaas, BelgiumMultidisciplinary Pain Center, AZ Nikolaas, Moerlandstraat 1, 9100 Sint-Niklaas, BelgiumMultidisciplinary Pain Center, AZ Nikolaas, Moerlandstraat 1, 9100 Sint-Niklaas, BelgiumDepartment of Neurosurgery, Universitair Ziekenhuis Brussel, Laarbeeklaan 101, 1090 Jette, BelgiumDespite the proven clinical value of spinal cord stimulation (SCS) for patients with failed back surgery syndrome (FBSS), factors related to a successful SCS outcome are not yet clearly understood. This study aimed to predict responders for high frequency SCS at 10 kHz (HF-10). Data before implantation and the last available data was extracted for 119 FBSS patients treated with HF-10 SCS. Correlations, logistic regression, linear discriminant analysis, classification and regression trees, random forest, bagging, and boosting were applied. Based on feature selection, trial pain relief, predominant pain location, and the number of previous surgeries were relevant factors for predicting pain relief. To predict responders with 50% pain relief, 58.33% accuracy was obtained with boosting, random forest and bagging. For predicting responders with 30% pain relief, 70.83% accuracy was obtained using logistic regression, linear discriminant analysis, boosting, and classification trees. For predicting pain medication decrease, accuracies above 80% were obtained using logistic regression and linear discriminant analysis. Several machine learning techniques were able to predict responders to HF-10 SCS with an acceptable accuracy. However, none of the techniques revealed a high accuracy. The inconsistent results regarding predictive factors in literature, combined with acceptable accuracy of the currently obtained models, might suggest that routinely collected baseline parameters from clinical practice are not sufficient to consistently predict the SCS response with a high accuracy in the long-term.https://www.mdpi.com/2077-0383/9/12/4131painprediction10 kHz spinal cord stimulationrespondersmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Lisa Goudman
Jean-Pierre Van Buyten
Ann De Smedt
Iris Smet
Marieke Devos
Ali Jerjir
Maarten Moens
spellingShingle Lisa Goudman
Jean-Pierre Van Buyten
Ann De Smedt
Iris Smet
Marieke Devos
Ali Jerjir
Maarten Moens
Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques
Journal of Clinical Medicine
pain
prediction
10 kHz spinal cord stimulation
responders
machine learning
author_facet Lisa Goudman
Jean-Pierre Van Buyten
Ann De Smedt
Iris Smet
Marieke Devos
Ali Jerjir
Maarten Moens
author_sort Lisa Goudman
title Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques
title_short Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques
title_full Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques
title_fullStr Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques
title_full_unstemmed Predicting the Response of High Frequency Spinal Cord Stimulation in Patients with Failed Back Surgery Syndrome: A Retrospective Study with Machine Learning Techniques
title_sort predicting the response of high frequency spinal cord stimulation in patients with failed back surgery syndrome: a retrospective study with machine learning techniques
publisher MDPI AG
series Journal of Clinical Medicine
issn 2077-0383
publishDate 2020-12-01
description Despite the proven clinical value of spinal cord stimulation (SCS) for patients with failed back surgery syndrome (FBSS), factors related to a successful SCS outcome are not yet clearly understood. This study aimed to predict responders for high frequency SCS at 10 kHz (HF-10). Data before implantation and the last available data was extracted for 119 FBSS patients treated with HF-10 SCS. Correlations, logistic regression, linear discriminant analysis, classification and regression trees, random forest, bagging, and boosting were applied. Based on feature selection, trial pain relief, predominant pain location, and the number of previous surgeries were relevant factors for predicting pain relief. To predict responders with 50% pain relief, 58.33% accuracy was obtained with boosting, random forest and bagging. For predicting responders with 30% pain relief, 70.83% accuracy was obtained using logistic regression, linear discriminant analysis, boosting, and classification trees. For predicting pain medication decrease, accuracies above 80% were obtained using logistic regression and linear discriminant analysis. Several machine learning techniques were able to predict responders to HF-10 SCS with an acceptable accuracy. However, none of the techniques revealed a high accuracy. The inconsistent results regarding predictive factors in literature, combined with acceptable accuracy of the currently obtained models, might suggest that routinely collected baseline parameters from clinical practice are not sufficient to consistently predict the SCS response with a high accuracy in the long-term.
topic pain
prediction
10 kHz spinal cord stimulation
responders
machine learning
url https://www.mdpi.com/2077-0383/9/12/4131
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