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ORIGINAL ARTICLE
Journal of Neurosurgical Sciences 2020 February;64(1):52-7
DOI: 10.23736/S0390-5616.16.03479-2
Copyright © 2015 EDIZIONI MINERVA MEDICA
lingua: Inglese
Use of artificial neural networks to predict the probability of developing new cerebral metastases after radiosurgery alone
Parisa AZIMI ✉, Sohrab SHAHZADI, Sohrab SADEGHI
Functional Neurosurgery Research Center, Shahid Beheshti University of Medical Sciences, Tehran, Iran
BACKGROUND: The present study aimed to predict the probability of developing new cerebral metastases after Gamma Knife radiosurgery (GKR) alone in patients with 1-3 brain metastases by artificial neural network (ANN) model.
METHODS: AAN and other methods were used. The AAN has been investigated in comparison of other models of analysis, including the logistic regression (LR) and the recently introduced Huttenlocher method. Patients were divided into a distant brain failure (DBF) or a distant brain control (DBC) within 6 months of follow-up. Eleven factors were determined as the input parameters for the established ANN and were trained to predict of DBF. Sensitivity analysis was performed. The ROC curve, accuracy rate, and Hosmer-Lemeshow (H-L) tests were used to assess the three different prediction methods.
RESULTS: A total of 192 patients were categorized into the training (N.=96), testing (N.=48), and validation (N.=48) data sets in ANN. DBC rate was 60.4; based on the Huttenlocher classification method, it was 40.7% in Group I, 49.2% in Group II, and 88.1% in Group III. The number of cerebral metastases, primary tumor type, extra-cerebral metastases and recursive partitioning analysis (RPA) were the most important variables indicated by the ANN analysis. Compared to the other two methods, ANN model was associated to superior results: accuracy rate, 95.3%; H-L statistic, 40.9%; and AUC, 0. 0.88%.
CONCLUSIONS: The ANNs can be used to effectively help for predicting DBF in patients with 1-3 brain metastasis treated with GKR alone.
KEY WORDS: Neural networks; Prognosis; Neoplasm metastasis; Brain neoplasms; Radiosurgery