Literature DB >> 23467250

Predicting survival in patients with brain metastases treated with radiosurgery using artificial neural networks.

Eric K Oermann1, Marie-Adele S Kress, Brian T Collins, Sean P Collins, David Morris, Stanley C Ahalt, Matthew G Ewend.   

Abstract

BACKGROUND: Artificial neural networks (ANNs) excel at analyzing challenging data sets and can be exceptional tools for decision support in clinical environments. The present study pilots the use of ANNs for determining prognosis in neuro-oncology patients.
OBJECTIVE: To determine whether ANNs perform better at predicting 1-year survival in a group of patients with brain metastasis compared with traditional predictive tools.
METHODS: : ANNs were trained on a multi-institutional data set of radiosurgery patients to predict 1-year survival on the basis of several input factors. A single ANN, an ensemble of 5 ANNs, and logistic regression analyses were compared for efficacy. Sensitivity analysis was used to identify important variables in the ANN model.
RESULTS: A total of 196 patients were divided up into training, testing, and validation data sets consisting of 98, 49, and 49 patients, respectively. Patients surviving at 1 year tended to be female (P = .001) and of good performance status (P = .01) and to have favorable primary tumor histology (P = .001). The pooled voting of 5 ANNs performed significantly better than the multivariate logistic regression model (P = .02), with areas under the curve of 84% and 75%, respectively. The ensemble also significantly outperformed 2 commonly used prognostic indexes. Primary tumor subtype and performance status were identified on sensitivity analysis to be the most important variables for the ANN.
CONCLUSION: ANNs outperform traditional statistical tools and scoring indexes for predicting individual patient prognosis. Their facile implementation, robustness in the presence of missing data, and ability to continuously learn make them excellent choices for use in complicated clinical environments.

Entities:  

Mesh:

Year:  2013        PMID: 23467250     DOI: 10.1227/NEU.0b013e31828ea04b

Source DB:  PubMed          Journal:  Neurosurgery        ISSN: 0148-396X            Impact factor:   4.654


  9 in total

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2.  A Brief History of Machine Learning in Neurosurgery.

Authors:  Andrew T Schilling; Pavan P Shah; James Feghali; Adrian E Jimenez; Tej D Azad
Journal:  Acta Neurochir Suppl       Date:  2022

3.  A Discussion of Machine Learning Approaches for Clinical Prediction Modeling.

Authors:  Michael C Jin; Adrian J Rodrigues; Michael Jensen; Anand Veeravagu
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4.  Using a Guided Machine Learning Ensemble Model to Predict Discharge Disposition following Meningioma Resection.

Authors:  Whitney E Muhlestein; Dallin S Akagi; Justiss A Kallos; Peter J Morone; Kyle D Weaver; Reid C Thompson; Lola B Chambless
Journal:  J Neurol Surg B Skull Base       Date:  2017-08-08

5.  Using a Machine Learning Approach to Predict Outcomes after Radiosurgery for Cerebral Arteriovenous Malformations.

Authors:  Eric Karl Oermann; Alex Rubinsteyn; Dale Ding; Justin Mascitelli; Robert M Starke; Joshua B Bederson; Hideyuki Kano; L Dade Lunsford; Jason P Sheehan; Jeffrey Hammerbacher; Douglas Kondziolka
Journal:  Sci Rep       Date:  2016-02-09       Impact factor: 4.379

6.  Machine Learning Versus Logistic Regression Methods for 2-Year Mortality Prognostication in a Small, Heterogeneous Glioma Database.

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Review 7.  Artificial Intelligence in Brain Tumour Surgery-An Emerging Paradigm.

Authors:  Simon Williams; Hugo Layard Horsfall; Jonathan P Funnell; John G Hanrahan; Danyal Z Khan; William Muirhead; Danail Stoyanov; Hani J Marcus
Journal:  Cancers (Basel)       Date:  2021-10-07       Impact factor: 6.639

8.  The impact of presurgical comorbidities on discharge disposition and length of hospitalization following craniotomy for brain tumor.

Authors:  Whitney E Muhlestein; Dallin S Akagi; Silky Chotai; Lola B Chambless
Journal:  Surg Neurol Int       Date:  2017-09-07

9.  Machine learning in neurosurgery: a global survey.

Authors:  Victor E Staartjes; Vittorio Stumpo; Julius M Kernbach; Anita M Klukowska; Pravesh S Gadjradj; Marc L Schröder; Anand Veeravagu; Martin N Stienen; Christiaan H B van Niftrik; Carlo Serra; Luca Regli
Journal:  Acta Neurochir (Wien)       Date:  2020-08-18       Impact factor: 2.216

  9 in total

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