Explainable machine learning algorithm predicting working memory performance in Parkinson’s disease using task-fMRI
Background Parkinson’s disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance im...
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| Vydané v: | Journal of neurology Ročník 272; číslo 10; s. 692 |
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| Hlavní autori: | , , , , , , , , , , |
| Médium: | Journal Article |
| Jazyk: | English |
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Berlin/Heidelberg
Springer Berlin Heidelberg
14.10.2025
Springer Nature B.V |
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| ISSN: | 0340-5354, 1432-1459, 1432-1459 |
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| Abstract | Background
Parkinson’s disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance imaging (task-based fMRI) has been limited. This study aimed to develop an explainable machine learning model to classify WM performance levels in PD based on task-based fMRI data.
Methods
We enrolled 45 patients with PD and 15 healthy controls (HCs), all of whom performed an
n
-back WM task in an MRI scanner. Patients were stratified into three subgroups based on their 3-back task performance: better, intermediate, and worse WM. A three-dimensional convolutional neural network (3D-CNN) model, pre-trained with a 3D convolutional autoencoder, was developed to perform binary classifications between group pairs.
Results
The model achieved an accuracy of 93.3% in discriminating task-based fMRI images of PD patients with worse WM from HCs, surpassing the mean accuracy of three expert radiologists (70.0%). Saliency maps identified brain regions influencing the model’s decisions, including the dorsolateral prefrontal cortex and superior/inferior parietal lobules. These regions were consistent with both the areas with intergroup differences in the task-based fMRI data and the anatomical areas that are crucial for better WM performance.
Conclusions
We developed an explainable deep learning model that is capable of classifying WM performance levels in PD using task-based fMRI. This approach may enhance the objective and interpretable assessment of brain function in clinical neuroimaging practice. |
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| AbstractList | Parkinson's disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance imaging (task-based fMRI) has been limited. This study aimed to develop an explainable machine learning model to classify WM performance levels in PD based on task-based fMRI data.BACKGROUNDParkinson's disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance imaging (task-based fMRI) has been limited. This study aimed to develop an explainable machine learning model to classify WM performance levels in PD based on task-based fMRI data.We enrolled 45 patients with PD and 15 healthy controls (HCs), all of whom performed an n-back WM task in an MRI scanner. Patients were stratified into three subgroups based on their 3-back task performance: better, intermediate, and worse WM. A three-dimensional convolutional neural network (3D-CNN) model, pre-trained with a 3D convolutional autoencoder, was developed to perform binary classifications between group pairs.METHODSWe enrolled 45 patients with PD and 15 healthy controls (HCs), all of whom performed an n-back WM task in an MRI scanner. Patients were stratified into three subgroups based on their 3-back task performance: better, intermediate, and worse WM. A three-dimensional convolutional neural network (3D-CNN) model, pre-trained with a 3D convolutional autoencoder, was developed to perform binary classifications between group pairs.The model achieved an accuracy of 93.3% in discriminating task-based fMRI images of PD patients with worse WM from HCs, surpassing the mean accuracy of three expert radiologists (70.0%). Saliency maps identified brain regions influencing the model's decisions, including the dorsolateral prefrontal cortex and superior/inferior parietal lobules. These regions were consistent with both the areas with intergroup differences in the task-based fMRI data and the anatomical areas that are crucial for better WM performance.RESULTSThe model achieved an accuracy of 93.3% in discriminating task-based fMRI images of PD patients with worse WM from HCs, surpassing the mean accuracy of three expert radiologists (70.0%). Saliency maps identified brain regions influencing the model's decisions, including the dorsolateral prefrontal cortex and superior/inferior parietal lobules. These regions were consistent with both the areas with intergroup differences in the task-based fMRI data and the anatomical areas that are crucial for better WM performance.We developed an explainable deep learning model that is capable of classifying WM performance levels in PD using task-based fMRI. This approach may enhance the objective and interpretable assessment of brain function in clinical neuroimaging practice.CONCLUSIONSWe developed an explainable deep learning model that is capable of classifying WM performance levels in PD using task-based fMRI. This approach may enhance the objective and interpretable assessment of brain function in clinical neuroimaging practice. BackgroundParkinson’s disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance imaging (task-based fMRI) has been limited. This study aimed to develop an explainable machine learning model to classify WM performance levels in PD based on task-based fMRI data.MethodsWe enrolled 45 patients with PD and 15 healthy controls (HCs), all of whom performed an n-back WM task in an MRI scanner. Patients were stratified into three subgroups based on their 3-back task performance: better, intermediate, and worse WM. A three-dimensional convolutional neural network (3D-CNN) model, pre-trained with a 3D convolutional autoencoder, was developed to perform binary classifications between group pairs.ResultsThe model achieved an accuracy of 93.3% in discriminating task-based fMRI images of PD patients with worse WM from HCs, surpassing the mean accuracy of three expert radiologists (70.0%). Saliency maps identified brain regions influencing the model’s decisions, including the dorsolateral prefrontal cortex and superior/inferior parietal lobules. These regions were consistent with both the areas with intergroup differences in the task-based fMRI data and the anatomical areas that are crucial for better WM performance.ConclusionsWe developed an explainable deep learning model that is capable of classifying WM performance levels in PD using task-based fMRI. This approach may enhance the objective and interpretable assessment of brain function in clinical neuroimaging practice. Parkinson's disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance imaging (task-based fMRI) has been limited. This study aimed to develop an explainable machine learning model to classify WM performance levels in PD based on task-based fMRI data. We enrolled 45 patients with PD and 15 healthy controls (HCs), all of whom performed an n-back WM task in an MRI scanner. Patients were stratified into three subgroups based on their 3-back task performance: better, intermediate, and worse WM. A three-dimensional convolutional neural network (3D-CNN) model, pre-trained with a 3D convolutional autoencoder, was developed to perform binary classifications between group pairs. The model achieved an accuracy of 93.3% in discriminating task-based fMRI images of PD patients with worse WM from HCs, surpassing the mean accuracy of three expert radiologists (70.0%). Saliency maps identified brain regions influencing the model's decisions, including the dorsolateral prefrontal cortex and superior/inferior parietal lobules. These regions were consistent with both the areas with intergroup differences in the task-based fMRI data and the anatomical areas that are crucial for better WM performance. We developed an explainable deep learning model that is capable of classifying WM performance levels in PD using task-based fMRI. This approach may enhance the objective and interpretable assessment of brain function in clinical neuroimaging practice. Background Parkinson’s disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning offers an advantage for decoding complex brain activity patterns, but its application to task-based functional magnetic resonance imaging (task-based fMRI) has been limited. This study aimed to develop an explainable machine learning model to classify WM performance levels in PD based on task-based fMRI data. Methods We enrolled 45 patients with PD and 15 healthy controls (HCs), all of whom performed an n -back WM task in an MRI scanner. Patients were stratified into three subgroups based on their 3-back task performance: better, intermediate, and worse WM. A three-dimensional convolutional neural network (3D-CNN) model, pre-trained with a 3D convolutional autoencoder, was developed to perform binary classifications between group pairs. Results The model achieved an accuracy of 93.3% in discriminating task-based fMRI images of PD patients with worse WM from HCs, surpassing the mean accuracy of three expert radiologists (70.0%). Saliency maps identified brain regions influencing the model’s decisions, including the dorsolateral prefrontal cortex and superior/inferior parietal lobules. These regions were consistent with both the areas with intergroup differences in the task-based fMRI data and the anatomical areas that are crucial for better WM performance. Conclusions We developed an explainable deep learning model that is capable of classifying WM performance levels in PD using task-based fMRI. This approach may enhance the objective and interpretable assessment of brain function in clinical neuroimaging practice. |
| ArticleNumber | 692 |
| Author | Hase, Takeshi Yamagiwa, Ken Matsuzawa, Hitoshi Hallett, Mark Shimano, Kaoru Yasuda, Eiji Oyama, Jun Hattori, Takaaki Kawauchi, Miho Horovitz, Silvina G. Lungu, Codrin |
| Author_xml | – sequence: 1 givenname: Eiji surname: Yasuda fullname: Yasuda, Eiji organization: Department of Neurology and Neurological Science, Institute of Science Tokyo – sequence: 2 givenname: Takaaki orcidid: 0000-0002-4802-8606 surname: Hattori fullname: Hattori, Takaaki email: takaaki-hattori@umin.ac.jp organization: Department of Neurology and Neurological Science, Institute of Science Tokyo, Human Motor Control Section, National Institute of Neurological Disorders and Stroke, National Institutes of Health – sequence: 3 givenname: Kaoru surname: Shimano fullname: Shimano, Kaoru organization: Department of Neurology and Neurological Science, Institute of Science Tokyo – sequence: 4 givenname: Takeshi surname: Hase fullname: Hase, Takeshi organization: Center for Education in Healthcare Innovation, Institute of Science Tokyo, The Systems Biology Institute, SBX BioSciences, Inc., Faculty of Pharmacy, Keio University, Center for Mathematical Modelling and Data Science, Osaka University – sequence: 5 givenname: Jun surname: Oyama fullname: Oyama, Jun organization: Department of Diagnostic Radiology, Institute of Science Tokyo – sequence: 6 givenname: Ken surname: Yamagiwa fullname: Yamagiwa, Ken organization: Department of Diagnostic Radiology, Institute of Science Tokyo – sequence: 7 givenname: Miho surname: Kawauchi fullname: Kawauchi, Miho organization: Department of Diagnostic Radiology, Institute of Science Tokyo – sequence: 8 givenname: Silvina G. surname: Horovitz fullname: Horovitz, Silvina G. organization: Human Motor Control Section, National Institute of Neurological Disorders and Stroke, National Institutes of Health – sequence: 9 givenname: Codrin surname: Lungu fullname: Lungu, Codrin organization: Division of Clinical Research, National Institute of Neurological Disorders and Stroke, National Institutes of Health – sequence: 10 givenname: Hitoshi surname: Matsuzawa fullname: Matsuzawa, Hitoshi organization: Center for Integrated Human Brain Science, Brain Research Institute, Niigata University, Center for Advanced Medicine and Clinical Research, Sapporo Hakuyokai Hospital – sequence: 11 givenname: Mark surname: Hallett fullname: Hallett, Mark organization: Human Motor Control Section, National Institute of Neurological Disorders and Stroke, National Institutes of Health |
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| Keywords | Working memory Task-based fMRI Parkinson’s disease 3D convolutional neural network Explainable machine learning 3D convolutional autoencoder |
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Parkinson’s disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine... Parkinson's disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine learning... BackgroundParkinson’s disease (PD) is a neurodegenerative disorder that affects both motor and cognitive functions, particularly working memory (WM). Machine... |
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| SubjectTerms | Activity patterns Aged Algorithms Alzheimer's disease Brain - diagnostic imaging Brain - physiopathology Brain research Cognition & reasoning Cognitive ability Consent Cortex (parietal) Data processing Decision making Deep learning Female Functional magnetic resonance imaging Humans Learning algorithms Machine Learning Magnetic resonance imaging Magnetic Resonance Imaging - methods Male Medical imaging Medicine Medicine & Public Health Memory Memory, Short-Term - physiology Middle Aged Movement disorders Neural networks Neural Networks, Computer Neurodegenerative diseases Neuroimaging Neurological disorders Neurology Neuroradiology Neurosciences Original Communication Parkinson Disease - complications Parkinson Disease - diagnostic imaging Parkinson Disease - physiopathology Parkinson Disease - psychology Parkinson's disease Prefrontal cortex Scanners |
| Title | Explainable machine learning algorithm predicting working memory performance in Parkinson’s disease using task-fMRI |
| URI | https://link.springer.com/article/10.1007/s00415-025-13438-w https://www.ncbi.nlm.nih.gov/pubmed/41085732 https://www.proquest.com/docview/3260902408 https://www.proquest.com/docview/3260805364 |
| Volume | 272 |
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