scholarly journals Commentary on the Paper by Gagliano et al: Artificial Neural Networks Analysis of Polysomnographic and Clinical Features in Pediatric Acute-Onset Neuropsychiatric Syndrome (PANS): From Sleep Alteration to “Brain Fog” [Letter]

2021 ◽  
Vol Volume 13 ◽  
pp. 1687-1688
Author(s):  
Rajna Knez
2021 ◽  
Vol Volume 13 ◽  
pp. 1209-1224
Author(s):  
Antonella Gagliano ◽  
Monica Puligheddu ◽  
Nadia Ronzano ◽  
Patrizia Congiu ◽  
Marcello Giuseppe Tanca ◽  
...  

2018 ◽  
Vol 41 (1) ◽  
pp. 233-253 ◽  
Author(s):  
Jennifer L. Raymond ◽  
Javier F. Medina

Supervised learning plays a key role in the operation of many biological and artificial neural networks. Analysis of the computations underlying supervised learning is facilitated by the relatively simple and uniform architecture of the cerebellum, a brain area that supports numerous motor, sensory, and cognitive functions. We highlight recent discoveries indicating that the cerebellum implements supervised learning using the following organizational principles: ( a) extensive preprocessing of input representations (i.e., feature engineering), ( b) massively recurrent circuit architecture, ( c) linear input–output computations, ( d) sophisticated instructive signals that can be regulated and are predictive, ( e) adaptive mechanisms of plasticity with multiple timescales, and ( f) task-specific hardware specializations. The principles emerging from studies of the cerebellum have striking parallels with those in other brain areas and in artificial neural networks, as well as some notable differences, which can inform future research on supervised learning and inspire next-generation machine-based algorithms.


2021 ◽  
pp. 1-12
Author(s):  
Salvador Moral-Cuadra ◽  
Miguel Á. Solano-Sánchez ◽  
Antonio Menor-Campos ◽  
Tomás López-Guzmán

PLoS ONE ◽  
2011 ◽  
Vol 6 (11) ◽  
pp. e27277 ◽  
Author(s):  
Cristina Eller-Vainicher ◽  
Iacopo Chiodini ◽  
Ivana Santi ◽  
Marco Massarotti ◽  
Luca Pietrogrande ◽  
...  

2019 ◽  
Vol 05 (02) ◽  
pp. 050-055
Author(s):  
Kundan S. Chufal ◽  
Irfan Ahmad ◽  
Anjali K. Pahuja ◽  
Alexis A. Miller ◽  
Rajpal Singh ◽  
...  

Abstract Objective This study was aimed to investigate machine learning (ML) and artificial neural networks (ANNs) in the prognostic modeling of lung cancer, utilizing high-dimensional data. Materials and Methods A computed tomography (CT) dataset of inoperable nonsmall cell lung carcinoma (NSCLC) patients with embedded tumor segmentation and survival status, comprising 422 patients, was selected. Radiomic data extraction was performed on Computation Environment for Radiation Research (CERR). The survival probability was first determined based on clinical features only and then unsupervised ML methods. Supervised ANN modeling was performed by direct and hybrid modeling which were subsequently compared. Statistical significance was set at <0.05. Results Survival analyses based on clinical features alone were not significant, except for gender. ML clustering performed on unselected radiomic and clinical data demonstrated a significant difference in survival (two-step cluster, median overall survival [ mOS]: 30.3 vs. 17.2 m; p = 0.03; K-means cluster, mOS: 21.1 vs. 7.3 m; p < 0.001). Direct ANN modeling yielded a better overall model accuracy utilizing multilayer perceptron (MLP) than radial basis function (RBF; 79.2 vs. 61.4%, respectively). Hybrid modeling with MLP (after feature selection with ML) resulted in an overall model accuracy of 80%. There was no difference in model accuracy after direct and hybrid modeling (p = 0.164). Conclusion Our preliminary study supports the application of ANN in predicting outcomes based on radiomic and clinical data.


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