Karagiannidou, M. P., Comas-Herrera, A., Knapp, M., Guerchet, M. (2016) World Alzheimer Report 2016 Improving healthcare for people living with dementia. Coverage, Quality and costs now and in the future. Alzheimer’s Disease International (ADI). https://www.alzint.org/u/WorldAlzheimerReport2016.pdf Accessed 30 May 2022.
Galende, A. V., Ortiz, M. E., Velasco, S. L., Luque, M. L., de Miguel, C. LDS., Prieto, C., Jurczynska, CP. (2021) Report by the Spanish Foundation of the Brain on the social impact of Alzheimer disease and other types of dementia. Neurologia 36.
Morris, JC., Storandt, M., Miller, JP., McKeel, DW., Price, JL., Rubin, EH., Berg, L. (2001) Mild cognitive impairment represents early-stage Alzheimer disease. Archives of Neurology.
[+]
Karagiannidou, M. P., Comas-Herrera, A., Knapp, M., Guerchet, M. (2016) World Alzheimer Report 2016 Improving healthcare for people living with dementia. Coverage, Quality and costs now and in the future. Alzheimer’s Disease International (ADI). https://www.alzint.org/u/WorldAlzheimerReport2016.pdf Accessed 30 May 2022.
Galende, A. V., Ortiz, M. E., Velasco, S. L., Luque, M. L., de Miguel, C. LDS., Prieto, C., Jurczynska, CP. (2021) Report by the Spanish Foundation of the Brain on the social impact of Alzheimer disease and other types of dementia. Neurologia 36.
Morris, JC., Storandt, M., Miller, JP., McKeel, DW., Price, JL., Rubin, EH., Berg, L. (2001) Mild cognitive impairment represents early-stage Alzheimer disease. Archives of Neurology.
Hughes, C. P., Berg, L., Danziger, W. L., Coben, L. A., Martin, R. L. (1982) A new clinical scale for the staging of dementia. British Journal of Psychiatry.
Gupta, Y., Lama, R. K., Kwon, GR. (2019) Prediction and Classification of Alzheimer’s Disease Based on Combined Features From Apolipoprotein-E Genotype, Cerebrospinal Fluid, MR, and FDG-PET Imaging Biomarkers. Frontiers in Computational Neuroscience 13.
Gamez-Cenzano, C., Robles-Barba, J., Rodriguez-Bel, J. L., Gascon-Bayarri, J., Cortes-Romera, M., Sabate-Llobera, A., Gracia-Sanchez, LM., Romero-Zayas, I., Rocaengronyat, M., Vercher-Conejero, J., Majos-Torro, C., Soriano-Mas, C., Aguilera Grijalvo, C. (2015) Impact of PET brain imaging using F18-FDG and F18-FLORBETAPIR in patients with cognitive impairment. European Journal of Nuclear Medicine and Molecular Imaging 42.
Nobili, F., Arbizu, J., Bouwman, F., Drzezga, A., Agosta, F., Nestor, P., Walker, Z., Boccardi, M. (2018) European Association of Nuclear Medicine and European Academy of Neurology recommendations for the use of brain 18 F-fluorodeoxyglucose positron emission tomography in neurodegenerative cognitive impairment and dementia: Delphi consensus. Eur J Neurol.
Dave, A., Hansen, N., Downey, R., Johnson, C. (2020) FDG-PET Imaging of Dementia and Neurodegenerative Disease. Seminars in Ultrasound, CT and MRI 41.
Silverman, DHS., Mosconi, L., Ercoli, L., Chen, W., Small, GW. (2008) PET Scans Obtained for Evaluation of Cognitive Dysfunction. Seminars in nuclear medicine 38.
Marcus, C., Mena, E., Subramaniam, RM. (2014) Brain PET in the diagnosis of Alzheimer's disease. Clinical Nuclear Medicine 39.
Gámez-Cenzano, C., Rodríguez-Bel, L., Gascón-Bayarri, J., Reñé-Ramírez, R., Campdelacreu-Fumado, J., Turón-Sans, J., Soriano-Mas, C., Vercher-Conejero, J., Gràcia-Sánchez, L., Llinares-Tello, E., Pons-Escoda, A., C., MT. (2016) Role of 18F-FDG-PET and amyloid-PET imaging on patient management in mild cognitive impairment or dementia. European Journal of Nuclear Medicine and Molecular Imaging 43.
Varrone, L. A., Asenbaum, S., Vander-Borght, T., Booij, J., Nobili, F., Någren, K., Darcourt, J., Kapucu, O. L., Tatsch, K., Bartenstein, P., Van, K. (2009) EANM procedure guidelines for PET brain imaging using [18F]FDG, version 2. European Journal of Nuclear Medicine and Molecular Imaging 36.
Della Rosa, PA., Cerami, C., Gallivanone, F., Prestia, A., Caroli, A., Castiglioni, I., Gilardi, M. C., Frisoni, G., Friston, K., Ashburner, J., Perani, D. (October 2014) A standardized [18F]-FDG-PET template for spatial normalization in statistical parametric mapping of dementia. Neuroinformatics 12.
Friston, K., Ashburner, J., Kiebel, S., Nichols, T., Penny, W. (2007) Statistical Parametric Mapping. Academic Press London.
Simonyan, K., A., Z. (2014) Very deep convolutional networks for large-scale image recognition. arXiv preprint arXiv:1409.1556.
Kingma, D. P., Ba, J. (2014) Adam: A Method for Stochastic Optimization..
Srivastava, N., Hinton, G. E., Krizhevsky, A., Sutskever, I., Salakhutdinov, R. (2014) Dropout: a simple way to prevent neural networks from overfitting. Journal of Machine Learning Research 15.
Chollet, Francois, others (Accessed 2005) Keras. Available at: https://github.com/fchollet/keras
(Accessed ADNI) Alzheimer’s Disease Neuroimaging Initiative. Available at: http://adni.loni.usc.edu/
Simonyan, K., Vedaldi, A., Zisserman, A. (2014) Deep Inside Convolutional Networks: Visualising Image Classification Models and Saliency Maps. CoRR.
Smilkov, R., Thorat, N., Kim, B., Viégas, F., Wattenberg, M. (2017) Smoothgrad: removing noise by adding noise. Workshop on Visualization for Deep Learning, ICML.
Selvaraju, R. R., Cogswell, M., Das, A., Vedantam, R., Parikh, D., Batra, D. (2017) Grad-CAM: Visual Explanations from Deep Networks via Gradient-Based Localization..
Yang, J., Hu, C., Guo, N., Dutta, J., Vaina, LM., Johnson, KA., Sepulcre, J., El-Fakhri, G., Li, Q. (2017) Partial volume correction for PET quantification and its impact on brain network in Alzheimer’s disease. Scientific Reports 7.
Ding, Y., Sohn, J., Kawczynski, M., Trivedi, H., Harnish, R., Jenkins, N., Lituiev, D., Copeland, T., Aboian, M., Mari Aparici, C., Behr, S., Flavell, R., Huang, S., Zalocusky, K., Nardo, L., Seo, Y., Hawkins, R. (2018) A deep learning model to predict a diagnosis of Alzheimer disease by using 18 F-FDG PET of the brain. Radiology 290.
Johnson, K. A., Fox, N. C., Sperling, R. A., Klunk, W. E. (2012) Brain imaging in Alzheimer disease. Cold Spring Harbor 2.
Ghorbani, A., Abid, A., Zou, J. (2019) Interpretation of Neural Networks Is Fragile. Proceedings of the AAAI Conference on Artificial Intelligence 33.
Feng, C., Elazab, A., Yang, P., Wang, T., Zhou, F., Hu, H., Xiao, X., Lei, B. (2019) Deep Learning Framework for Alzheimer’s Disease Diagnosis via 3D-CNN and FSBi-LSTM. IEEE Access 7.
Etminani, K., Soliman, A., Davidsson, A., Chang, JR., Martínez-Sanchis, B., Byttner, S., Camacho, V., Bauckneht, M., Stegeran, R., Ressner, M., Agudelo-Cifuentes, M. (2022) A 3D deep learning model to predict the diagnosis of dementia with Lewy bodies, Alzheimer’s disease, and mild cognitive impairment using brain 18F-FDG PET. European Journal of Nuclear Medicine and Molecular Imaging 49.
Liu, M., Cheng, D., Wang, K., Wang, Y. (2018) Multi-Modality Cascaded Convolutional Neural Networks for Alzheimer’s Disease Diagnosis. Neuroinformatics 16.
Duc, NT., Ryu, S., Qureshi, MNI., Choi, M., Lee, KH., Lee, B. (2020) 3D-Deep Learning Based Automatic Diagnosis of Alzheimer’s Disease with Joint MMSE Prediction Using Resting-State fMRI. Neuroinformatics 18.
Manhua, L., Cheng, D., Weiwu, Y. (2018) Classification of Alzheimer’s Disease by Combination of Convolutional and Recurrent Neural Networks Using FDG-PET Images. Frontiers in Neuroinformatics 12.
[-]