BMC Medical Imaging (Jun 2024)

An improved method for diagnosis of Parkinson’s disease using deep learning models enhanced with metaheuristic algorithm

  • Babita Majhi,
  • Aarti Kashyap,
  • Siddhartha Suprasad Mohanty,
  • Sujata Dash,
  • Saurav Mallik,
  • Aimin Li,
  • Zhongming Zhao

DOI
https://doi.org/10.1186/s12880-024-01335-z
Journal volume & issue
Vol. 24, no. 1
pp. 1 – 20

Abstract

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Abstract Parkinson's disease (PD) is challenging for clinicians to accurately diagnose in the early stages. Quantitative measures of brain health can be obtained safely and non-invasively using medical imaging techniques like magnetic resonance imaging (MRI) and single photon emission computed tomography (SPECT). For accurate diagnosis of PD, powerful machine learning and deep learning models as well as the effectiveness of medical imaging tools for assessing neurological health are required. This study proposes four deep learning models with a hybrid model for the early detection of PD. For the simulation study, two standard datasets are chosen. Further to improve the performance of the models, grey wolf optimization (GWO) is used to automatically fine-tune the hyperparameters of the models. The GWO-VGG16, GWO-DenseNet, GWO-DenseNet + LSTM, GWO-InceptionV3 and GWO-VGG16 + InceptionV3 are applied to the T1,T2-weighted and SPECT DaTscan datasets. All the models performed well and obtained near or above 99% accuracy. The highest accuracy of 99.94% and AUC of 99.99% is achieved by the hybrid model (GWO-VGG16 + InceptionV3) for T1,T2-weighted dataset and 100% accuracy and 99.92% AUC is recorded for GWO-VGG16 + InceptionV3 models using SPECT DaTscan dataset.

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