Centre for Advanced Studies, Dr. A.P.J. Abdul Kalam Technical University, New Campus, Lucknow, 226031, India.
Amity Institute for Environmental Toxicology, Safety and Management, Amity University, Noida, India.
Med Biol Eng Comput. 2020 Aug;58(8):1751-1765. doi: 10.1007/s11517-020-02198-6. Epub 2020 Jun 1.
The brain of a human and other organisms is affected by the electromagnetic field (EMF) radiations, emanating from the cell phones and mobile towers. Prolonged exposure to EMF radiations may cause neurological changes in the brain, which in turn may bring chemical as well as morphological changes in the brain. Conventionally, the identification of EMF radiation effect on the brain is performed using cellular-level analysis. In the present work, an automatic image processing-based approach is used where geometric features extracted from the segmented brain region has been analyzed for identifying the effect of EMF radiation on the morphology of a brain, using drosophila as a specimen. Genetic algorithm-based evolutionary feature selection algorithm has been used to select an optimal set of geometrical features, which, when fed to the machine learning classifiers, result in their optimal performance. The best classification accuracy has been obtained with the neural network with an optimally selected subset of geometrical features. A statistical test has also been performed to prove that the increase in the performance of classifier post-feature selection is statistically significant. This machine learning-based study indicates that there exists discrimination between the microscopic brain images of the EMF-exposed drosophila and non-exposed drosophila. Graphical abstract Proposed Methodology for identification of radiofrequency electromagnetic radiation (RF-EMR) effect on the morphology of brain of Drosophila.
人脑和其他生物体的大脑会受到来自手机和移动基站的电磁场 (EMF) 辐射的影响。长时间暴露在 EMF 辐射下可能会导致大脑的神经变化,进而导致大脑中的化学和形态变化。传统上,使用细胞水平分析来确定 EMF 辐射对大脑的影响。在本工作中,使用了一种基于自动图像处理的方法,其中从分割的大脑区域提取的几何特征已被分析,以使用果蝇作为样本识别 EMF 辐射对大脑形态的影响。基于遗传算法的进化特征选择算法用于选择一组最佳的几何特征,当将这些特征输入到机器学习分类器中时,会得到它们的最佳性能。使用神经网络和最佳选择的几何特征子集获得了最佳的分类准确性。还进行了统计检验以证明特征选择后分类器性能的提高在统计学上是显著的。这项基于机器学习的研究表明,暴露于射频电磁辐射 (RF-EMR) 的果蝇和未暴露于 RF-EMR 的果蝇的微观大脑图像之间存在差异。