A Functional Gradient Boost Approach for Identifying Parkinson's Disease

A Functional Gradient Boost Approach for Identifying Parkinson's Disease

DOI: 10.4018/979-8-3693-1115-8.ch009
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Abstract

Parkinson's disease is a neurodegenerative disorder characterised by the manifestation of involuntary and uncontrolled motor symptoms, such as tremors, rigidity, and impaired balance and coordination. Parkinson's disease is characterised by the degeneration of neurons in the substantia nigra, a region located within the brain. The gradient boost method will be employed in the field of machine learning to identify individuals afflicted with Parkinson's disease. This study employs a collection of features derived from the Parkinson's progression markers initiative (PPMI) in order to gain insights into the initiation and progression of brain diseases, as well as to explore potential interventions for mitigating their effects. The method was applied to a cohort of patients selected from the Parkinson's progression markers initiative (PPMI) dataset for evaluation. The utilisation of a machine learning algorithm facilitates the categorization of individuals afflicted with Parkinson's disease into distinct clusters.
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Key Characteristics Of Functional Gradient Boosting

Handling Time-Series Data

Parkinson's disease exhibits a spectrum of motor and non-motor symptoms as it progresses. These temporal dynamics can be described using functional gradient boosting (Dixit et al., 2023), which successfully captures how symptoms change over time. This skill is crucial for understanding the disease's developmental trajectory and for early disease diagnosis.

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