Nielsen, M. E., Nielsen, M., & Ghazi, M. M. (2024). Assessing the Efficacy of Classical and Deep Neuroimaging Biomarkers in Early Alzheimer’s Disease Diagnosis. arXiv preprint arXiv:2410.24002.
This study investigates the effectiveness of combining various imaging biomarkers extracted from MRI scans, including radiomics, hippocampal texture descriptors, cortical thickness measurements, and deep learning features, to enhance early Alzheimer's disease (AD) detection.
The researchers utilized structural MRI scans from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) dataset. They segmented the brain images using FAST-AID Brain and extracted four types of biomarkers: radiomics features, hippocampal texture descriptors, cortical thickness measurements, and deep learning features from pre-trained ResNet models. They trained XGBoost classifiers to differentiate between AD vs. cognitively normal (CN) and mild cognitive impairment (MCI) vs. CN, evaluating the performance of individual and combined biomarker sets.
The study highlights the importance of integrating multiple imaging biomarkers for accurate early AD diagnosis. While deep learning shows promise, traditional radiomics and texture features demonstrate superior performance in this study, suggesting their continued relevance in the face of advanced deep learning approaches.
This research contributes to the development of robust and accurate methods for early AD diagnosis using non-invasive MRI techniques. The findings emphasize the value of combining traditional imaging biomarkers with machine learning for improved diagnostic accuracy, potentially leading to earlier interventions and better patient outcomes.
The study is limited by the use of a single dataset (ADNI). Future research should validate these findings on larger and more diverse datasets. Further exploration of deep learning techniques, potentially with larger datasets and tailored architectures, is warranted to fully leverage their potential for AD diagnosis.
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