Keywords:-

Keywords: brain age, CT, MRI, PET, regression, neuro-anatomical

Article Content:-

Abstract

Software provides a high-level introduction to methods of brain age prediction & their potential therapeutic applications. Brain-aging research employs regression machine learning model to predict neuroanatomical changes as people become older. This model is subsequently employed to estimate cranial ages of newly-observed participants. A person's "brain-age gap" is difference between their expected brain age & their actual age. This value may be a sign of general brain health and is hypothesized to represent neuro-anatomical abnormalities. It may support differential diagnosis, prognosis, and therapy decisions as well as early detection of brain-based illnesses. These applications may result in earlier and more focused therapies for illnesses associated with ageing. Our experimental findings show that regression algorithms have an impact on the brain age frameworks' prediction accuracy, suggesting that more sophisticated machine learning techniques may improve brain age predictions in clinical contexts. Additionally, the experiment is being run on several scan pictures, including CT, MRI, and PET. Based on estimating brain age, disease type and stages are detected.

References:-

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D C, S., Gadgay, B., & Begum, K. (2024). Age Prognostication Using Machine Learning From Brain PET, CT and MRI Images. International Journal Of Mathematics And Computer Research, 12(6), 4276-4281. https://doi.org/10.47191/ijmcr/v12i6.03