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Erschienen in: Neurosurgical Review 5/2020

17.08.2019 | Review

Machine learning applications to clinical decision support in neurosurgery: an artificial intelligence augmented systematic review

verfasst von: Quinlan D. Buchlak, Nazanin Esmaili, Jean-Christophe Leveque, Farrokh Farrokhi, Christine Bennett, Massimo Piccardi, Rajiv K. Sethi

Erschienen in: Neurosurgical Review | Ausgabe 5/2020

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Abstract

Machine learning (ML) involves algorithms learning patterns in large, complex datasets to predict and classify. Algorithms include neural networks (NN), logistic regression (LR), and support vector machines (SVM). ML may generate substantial improvements in neurosurgery. This systematic review assessed the current state of neurosurgical ML applications and the performance of algorithms applied. Our systematic search strategy yielded 6866 results, 70 of which met inclusion criteria. Performance statistics analyzed included area under the receiver operating characteristics curve (AUC), accuracy, sensitivity, and specificity. Natural language processing (NLP) was used to model topics across the corpus and to identify keywords within surgical subspecialties. ML applications were heterogeneous. The densest cluster of studies focused on preoperative evaluation, planning, and outcome prediction in spine surgery. The main algorithms applied were NN, LR, and SVM. Input and output features varied widely and were listed to facilitate future research. The accuracy (F(2,19) = 6.56, p < 0.01) and specificity (F(2,16) = 5.57, p < 0.01) of NN, LR, and SVM differed significantly. NN algorithms demonstrated significantly higher accuracy than LR. SVM demonstrated significantly higher specificity than LR. We found no significant difference between NN, LR, and SVM AUC and sensitivity. NLP topic modeling reached maximum coherence at seven topics, which were defined by modeling approach, surgery type, and pathology themes. Keywords captured research foci within surgical domains. ML technology accurately predicts outcomes and facilitates clinical decision-making in neurosurgery. NNs frequently outperformed other algorithms on supervised learning tasks. This study identified gaps in the literature and opportunities for future neurosurgical ML research.
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Metadaten
Titel
Machine learning applications to clinical decision support in neurosurgery: an artificial intelligence augmented systematic review
verfasst von
Quinlan D. Buchlak
Nazanin Esmaili
Jean-Christophe Leveque
Farrokh Farrokhi
Christine Bennett
Massimo Piccardi
Rajiv K. Sethi
Publikationsdatum
17.08.2019
Verlag
Springer Berlin Heidelberg
Erschienen in
Neurosurgical Review / Ausgabe 5/2020
Print ISSN: 0344-5607
Elektronische ISSN: 1437-2320
DOI
https://doi.org/10.1007/s10143-019-01163-8

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