Predicting Brain Anomalies in Brain Wave Signals using ML Algorithms

Predicting Brain Anomalies in Brain Wave Signals using ML Algorithms

Publication Date : 2024-11-23
Author(s) :

C. Valarmathi, Avinash M, Poojari Vikram, Marilinga
Conference Name :

International Conference on Recent Trends in Computing & Communication Technologies (ICRCCT’2K24)
Abstract :

The endeavor of predicting brain age and identifying anomalies in brain wave signals represents a significant stride in leveraging machine learning algorithms within neuroscience. With an overarching goal of understanding age related changes in brain structure and function, this research carries profound implications for comprehending cognitive decline and neurological disorders. By harnessing a diverse array of neuroimaging data, spanning from EEG to MRI scans, the study aims to accurately predict brain age while simultaneously delving into the intricate analysis of brain wave signals to detect anomalies. Through the employment of sophisticated machine learning models, including support vector machines, random forests, and deep neural networks, the project endeavor’s to establish robust predictive frameworks capable of discerning subtle patterns indicative of aging or neurological irregularities. This multifaceted approach not only provides insights into the aging process and its impact on the brain but also holds promise in early detection and diagnosis of neurological disorders. Integral to the research are ethical considerations, interpretability, and the ability to generalize findings across diverse populations. Addressing these aspects ensures that the developed models are not only accurate but also ethically sound and applicable across different demographic groups. By prioritizing transparency and interpretability, the research aims to foster trust in the predictive frameworks, facilitating their adoption and utilization in real world clinical settings. Ultimately, the outcome of this research extends beyond the realms of academic.

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