TY - JOUR Y1 - 2022/// IS - 11 KW - Parkinson?s disease; artificial neural network; machine learning; deep learning; diagnosis; MRI AV - public JF - Diagnostics VL - 12 SN - 2075-4418 UR - http://doi.org/10.3390/diagnostics12112708 ID - uninimx4610 N2 - According to the World Health Organization (WHO), Parkinson?s disease (PD) is a neurodegenerative disease of the brain that causes motor symptoms including slower movement, rigidity, tremor, and imbalance in addition to other problems like Alzheimer?s disease (AD), psychiatric problems, insomnia, anxiety, and sensory abnormalities. Techniques including artificial intelligence (AI), machine learning (ML), and deep learning (DL) have been established for the classification of PD and normal controls (NC) with similar therapeutic appearances in order to address these problems and improve the diagnostic procedure for PD. In this article, we examine a literature survey of research articles published up to September 2022 in order to present an in-depth analysis of the use of datasets, various modalities, experimental setups, and architectures that have been applied in the diagnosis of subjective disease. This analysis includes a total of 217 research publications with a list of the various datasets, methodologies, and features. These findings suggest that ML/DL methods and novel biomarkers hold promising results for application in medical decision-making, leading to a more methodical and thorough detection of PD. Finally, we highlight the challenges and provide appropriate recommendations on selecting approaches that might be used for subgrouping and connection analysis with structural magnetic resonance imaging (sMRI), DaTSCAN, and single-photon emission computerized tomography (SPECT) data for future Parkinson?s research. TI - A Computerized Analysis with Machine Learning Techniques for the Diagnosis of Parkinson?s Disease: Past Studies and Future Perspectives A1 - Rana, Arti A1 - Dumka, Ankur A1 - Singh, Rajesh A1 - Panda, Manoj Kumar A1 - Priyadarshi, Neeraj ER -