Litcius/Paper detail

A Unified Deep Learning Approach for Prediction of Parkinson’s Disease

Stefanos Kollias, Luc Bidaut, James Wingate, Ilianna Kollia

2020Lincoln Repository (University of Lincoln)72 citationsDOI

Abstract

The paper presents a novel approach, based on deep learning, for diagnosis of Parkinson’s disease through medical
\nimaging. The approach includes analysis and use of the knowledge extracted by Deep Convolutional and Recurrent Neural Networks (DNNs) when trained with medical images, such as Magnetic Resonance Images and DaTscans. Internal representations of the trained DNNs constitute the extracted knowledge which is used in a transfer learning and domain adaptation manner, so as to create a unified framework for prediction of Parkinson’s across different medical environments. A large experimental study is presented illustrating the ability of the proposed approach to effectively predict Parkinson’s, using different medical image sets from real environments.

Topics & Concepts

Deep learningArtificial intelligenceComputer scienceConvolutional neural networkDomain adaptationTransfer of learningMachine learningParkinson's diseaseDomain (mathematical analysis)Medical imagingArtificial neural networkMagnetic resonance imagingAdaptation (eye)Pattern recognition (psychology)DiseaseNeuroscienceMedicinePsychologyMathematicsPathologyMathematical analysisRadiologyClassifier (UML)Voice and Speech DisordersVehicle License Plate RecognitionParkinson's Disease Mechanisms and Treatments