Integration of multimodal imaging data with machine learning for improved diagnosis and prognosis in neuroimaging DOI Creative Commons
Saurabh Bhattacharya, Sashikanta Prusty,

Sanjay P. Pande

и другие.

Frontiers in Human Neuroscience, Год журнала: 2025, Номер 19

Опубликована: Март 21, 2025

Introduction Combining many types of imaging data—especially structural MRI (sMRI) and functional (fMRI)—may greatly assist in the diagnosis treatment brain disorders like Alzheimer’s. Current approaches are less helpful for forecasting, however, as they do not always blend spatial temporal patterns from different sources properly. This work presents a novel mixed deep learning (DL) method combining data using CNN, GRU, attention techniques. introduces hybrid Dynamic Cross-Modality Attention Module to help more efficiently data. Through working around issues with current multimodal fusion techniques, our approach increases accuracy readability diagnoses. Methods Utilizing CNNs models dynamics fMRI connection measures utilizing GRUs, proposed extracts characteristics sMRI. Strong integration is made possible by including an mechanism give diagnostically important features top priority. Training evaluation model took place Human Connectome Project (HCP) dataset behavioral data, fMRI, Measures include accuracy, recall, precision F1-score used evaluate performance. Results It was correct 96.79% time combined structure. Regarding identification disorders, successful than existing ones. Discussion These findings indicate that strategy makes sense complimentary information several kinds photos. detail helped one choose which aspects concentrate on, thereby enhancing diagnostic accuracy. Conclusion The offers fresh benchmark neuroimaging analysis has great potential use real-world assessment prediction. Researchers will investigate future applications this technique new picture clinical

Язык: Английский

Alzheimer's disease stage recognition from MRI and PET imaging data using Pareto-optimal quantum dynamic optimization DOI Creative Commons
Modupe Odusami, Robertas Damaševičius,

Egle Milieškaitė-Belousovienė

и другие.

Heliyon, Год журнала: 2024, Номер 10(15), С. e34402 - e34402

Опубликована: Июль 15, 2024

Язык: Английский

Процитировано

4

A comprehensive review of neurotransmitter modulation via artificial intelligence: A new frontier in personalized neurobiochemistry DOI

Jaleh Bagheri Hamzyan Olia,

Arasu Raman, Chou‐Yi Hsu

и другие.

Computers in Biology and Medicine, Год журнала: 2025, Номер 189, С. 109984 - 109984

Опубликована: Март 14, 2025

Язык: Английский

Процитировано

0

Integration of multimodal imaging data with machine learning for improved diagnosis and prognosis in neuroimaging DOI Creative Commons
Saurabh Bhattacharya, Sashikanta Prusty,

Sanjay P. Pande

и другие.

Frontiers in Human Neuroscience, Год журнала: 2025, Номер 19

Опубликована: Март 21, 2025

Introduction Combining many types of imaging data—especially structural MRI (sMRI) and functional (fMRI)—may greatly assist in the diagnosis treatment brain disorders like Alzheimer’s. Current approaches are less helpful for forecasting, however, as they do not always blend spatial temporal patterns from different sources properly. This work presents a novel mixed deep learning (DL) method combining data using CNN, GRU, attention techniques. introduces hybrid Dynamic Cross-Modality Attention Module to help more efficiently data. Through working around issues with current multimodal fusion techniques, our approach increases accuracy readability diagnoses. Methods Utilizing CNNs models dynamics fMRI connection measures utilizing GRUs, proposed extracts characteristics sMRI. Strong integration is made possible by including an mechanism give diagnostically important features top priority. Training evaluation model took place Human Connectome Project (HCP) dataset behavioral data, fMRI, Measures include accuracy, recall, precision F1-score used evaluate performance. Results It was correct 96.79% time combined structure. Regarding identification disorders, successful than existing ones. Discussion These findings indicate that strategy makes sense complimentary information several kinds photos. detail helped one choose which aspects concentrate on, thereby enhancing diagnostic accuracy. Conclusion The offers fresh benchmark neuroimaging analysis has great potential use real-world assessment prediction. Researchers will investigate future applications this technique new picture clinical

Язык: Английский

Процитировано

0