2020
DOI: 10.3390/brainsci10070463
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Domain Mapping and Deep Learning from Multiple MRI Clinical Datasets for Prediction of Molecular Subtypes in Low Grade Gliomas

Abstract: Brain tumors, such as low grade gliomas (LGG), are molecularly classified which require the surgical collection of tissue samples. The pre-surgical or non-operative identification of LGG molecular type could improve patient counseling and treatment decisions. However, radiographic approaches to LGG molecular classification are currently lacking, as clinicians are unable to reliably predict LGG molecular type using magnetic resonance imaging (MRI) studies. Machine learning approaches may improve the prediction … Show more

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Cited by 28 publications
(25 citation statements)
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References 35 publications
(51 reference statements)
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“…Although the sample size was limited, it allowed the results to be more consistent. Our model showed a similar performance to the machine-learning and deep-learning models mentioned above, with an overall AUC of 0.8079 and an accuracy of 0.758 ( 34 , 35 , 38 , 39 ). We specifically analyzed the predictive model in the subgroup analysis of gliomas with mutant IDH, which excluded the influence of gliomas with wild-type IDH, and found a similar performance value.…”
Section: Discussionsupporting
confidence: 57%
See 1 more Smart Citation
“…Although the sample size was limited, it allowed the results to be more consistent. Our model showed a similar performance to the machine-learning and deep-learning models mentioned above, with an overall AUC of 0.8079 and an accuracy of 0.758 ( 34 , 35 , 38 , 39 ). We specifically analyzed the predictive model in the subgroup analysis of gliomas with mutant IDH, which excluded the influence of gliomas with wild-type IDH, and found a similar performance value.…”
Section: Discussionsupporting
confidence: 57%
“…Since the predictive performance of these models was restrained by the small sample size, data augmentation was introduced to enlarge the size of the training set. Based on Cycle Generative Adversarial Network, multi-stream convolutional autoencoder and feature fusion are proposed for the prediction of 1p/19q co-deletion, which displayed an accuracy of 78.41% in low-grade gliomas ( 38 ). After adding 30-fold augmented data, another study improved the accuracy of the convolutional neural networks model from 78.3% to 87.7% ( 39 ).…”
Section: Discussionmentioning
confidence: 99%
“…We found 7 asymmetric approaches that transformed target domain features into source domain features via generative adversarial networks [ 56 , 57 ], Bregman divergence minimization [ 58 ], probabilistic models [ 59 ], median [ 60 ], and nearest neighbors [ 61 ]. Contrarily, Qin et al [ 62 ] transformed source domain features into target domain features via dictionary-based interpolation to optimize a model on the target domain.…”
Section: Resultsmentioning
confidence: 99%
“…To advance molecular facts of cancerous brain substances, MR Spectroscopy (MRS) can be used as additional technique. This diversity of acquirements brands MRI a multimodal device for tumor oncology [9,10] .…”
Section: Introductionmentioning
confidence: 99%