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Showing 2 results for Brain Tumor

Z. Tabanfar , S.m. Firoozabadi , Z. Khodakarami, Z. Shankayi ,
Volume 9, Issue 4 (12-2018)
Abstract

Aims: Electroencephalogram (EEG) is an important clinical test for the diagnosis of many brain diseases. The aim of this study was the analysis of electroencephalogram data during rest in patients with brain tumor.
Materials and Methods: In the present analytic observational study, EEG data of 44 patients with brain tumor (tumoral group) and 31 healthy subjects (healthy group) during rest were used. After preprocessing, the linear temporal features, linear spectral features of different frequency bands, and non-linear features of fractal dimension and entropy were extracted. Then, the distinction between healthy and tumoral groups based on extracted features was investigated, using the Davis-Bouldin statistic method, linear discriminant analysis (LDA) and nonlinear K-Nearest Neighbor (KNN) classification.
Findings: There was no significant difference between the the fractal kutz dimension and the waveform length of the two healthy and tumoral groups. Among other features, the sample entropy with a significant reduction in the tumoral group made the most distinction between the two groups (0.69 for the healthy group and 0.53 for the tumoral group). The highest classification accuracy of the two groups was 84%, using the sample entropy and KNN classification.
Conclusion: EEG signals have the potential to distinct the patients with brain tumor and healthy subjects. Nonlinear entropy features with more adaptation to the nonlinear nature of the brain shows a higher accuracy in the representation of the tumoral group. The less entropy of the tumoral group indicates less complexity in the brain processing of this group than the healthy group.


Volume 18, Issue 4 (8-2018)
Abstract

Cancer is one of the main causes of mortality and morbidity worldwide. Using a single treatment plan for all of the patients is not efficient due to the biological heterogeneity in the individuals. In order to personalize the therapy plan, tumors behavior in each patient must be understood. For this purpose clinical information of the patients are used. Mathematical modeling has gained significant interest in tumor growth investigations, due to its higher flexibility than the other methods. Mass effect and the reaction terms are the key parameters that are investigated in this paper. This is the first time that the effects of these parameters are considered in brain tumor growth modeling and there are few researches that have used only MR images in this area. The mathematical models are used for predicting the growth of brain tumors based on personal MRIs and introducing intracellular fraction into the model. Results of the comparisons show that considering the mass effect in the growth model would improve the prediction. Furthermore, it is necessary to define the optimum formulation for reaction term according to patients' medical information, to be used in the personalized model of tumor growth prediction. The represented approach can be used as a basis for personalizing the therapy plan in patients with brain tumors.

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