P. Robert, K. Lanctôt, L. Agüera-ortiz, P. Aalten, F. Bremond et al., Is it time to revise the diagnostic criteria for apathy in brain disorders? the 2018 international consensus group, European Psychiatry, vol.54, pp.71-76, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01850396

M. Benoit and P. Robert, Depression and apathy in alzheimer's disease, Presse medicale, vol.32, issue.24, pp.14-22, 1983.

H. Hampel, R. Frank, K. Broich, S. J. Teipel, R. G. Katz et al., Biomarkers for alzheimer's disease: academic, industry and regulatory perspectives, Nature reviews Drug discovery, vol.9, issue.7, p.560, 2010.

S. Ruder, An overview of multi-task learning in deep neural networks, 2017.

S. Happy, A. Dantcheva, A. Das, R. Zeghari, P. Robert et al., Characterizing the state of apathy with facial expression and motion analysis, 2019 14th IEEE International Conference on Automatic Face & Gesture Recognition (FG 2019, pp.1-8, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02379341

L. Agüera-ortiz, J. A. Hernandez-tamames, P. Martinez-martin, I. Cruz-orduña, G. Pajares et al., Structural correlates of apathy in alzheimer's disease: a multimodal mri study, International journal of geriatric psychiatry, vol.32, issue.8, pp.922-930, 2017.

C. Theleritis, A. Politis, K. Siarkos, and C. G. Lyketsos, A review of neuroimaging findings of apathy in alzheimer's disease, International psychogeriatrics, vol.26, issue.2, pp.195-207, 2014.

J. Chung, S. A. Chau, N. Herrmann, K. L. Lanctôt, and M. Eizenman, Detection of apathy in alzheimer patients by analysing visual scanning behaviour with rnns, ACM SIGKDD International Conference on Knowledge Discovery & Data Mining, pp.149-157, 2018.

Z. Kang, K. Grauman, and F. Sha, Learning with whom to share in multi-task feature learning, ICML, pp.521-528, 2011.

S. Liu and S. J. Pan, Adaptive group sparse multi-task learning via trace lasso, Proceedings of the 26th International Joint Conference on Artificial Intelligence, pp.2358-2364, 2017.

G. Lee, E. Yang, and S. Hwang, Asymmetric multi-task learning based on task relatedness and loss, International Conference on Machine Learning, pp.230-238, 2016.

S. Pan, J. Wu, X. Zhu, G. Long, and C. Zhang, Task sensitive feature exploration and learning for multitask graph classification, IEEE transactions on cybernetics, vol.47, issue.3, pp.744-758, 2017.

Z. Wu, Y. Jiang, J. Wang, J. Pu, and X. Xue, Exploring interfeature and inter-class relationships with deep neural networks for video classification, Proceedings of the 22nd ACM international conference on Multimedia, pp.167-176, 2014.

Y. Jiang, Z. Wu, J. Tang, Z. Li, X. Xue et al., Modeling multimodal clues in a hybrid deep learning framework for video classification, IEEE Transactions on Multimedia, 2018.

C. A. Corneanu, M. O. Simón, J. F. Cohn, and S. E. Guerrero, Survey on rgb, 3d, thermal, and multimodal approaches for facial expression recognition: History, trends, and affect-related applications, IEEE transactions on pattern analysis and machine intelligence, vol.38, pp.1548-1568, 2016.

O. M. Parkhi, A. Vedaldi, and A. Zisserman, Deep face recognition, BMVC, vol.1, p.6, 2015.

H. Ding, S. K. Zhou, and R. Chellappa, Facenet2expnet: Regularizing a deep face recognition net for expression recognition, Automatic Face & Gesture Recognition (FG 2017, pp.118-126, 2017.

Y. Liu, X. Yuan, X. Gong, Z. Xie, F. Fang et al., Conditional convolution neural network enhanced random forest for facial expression recognition, Pattern Recognition, vol.84, pp.251-261, 2018.

A. Dantcheva, P. Bilinski, H. T. Nguyen, J. Broutart, and F. Bremond, Expression recognition for severely demented patients in music reminiscence-therapy, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01543231

Y. Wang, A. Dantcheva, J. Broutart, P. Robert, F. Bremond et al., Comparing methods for assessment of facial dynamics in patients with major neurocognitive disorders, The European Conference on Computer Vision (ECCV) Workshops, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01894162

Z. Hammal, J. F. Cohn, C. Heike, and M. L. Speltz, Automatic measurement of head and facial movement for analysis and detection of infants positive and negative affect, Frontiers in ICT, vol.2, p.21, 2015.

M. F. Folstein, S. E. Folstein, and P. R. Mchugh, mini-mental state: a practical method for grading the cognitive state of patients for the clinician, Journal of psychiatric research, vol.12, issue.3, pp.189-198, 1975.

J. L. Cummings, M. Mega, K. Gray, S. Rosenberg-thompson, D. A. Carusi et al., The neuropsychiatric inventory: comprehensive assessment of psychopathology in dementia, Neurology, vol.44, issue.12, pp.2308-2308, 1994.

M. Benoit, S. Clairet, P. Koulibaly, J. Darcourt, and P. Robert, Brain perfusion correlates of the apathy inventory dimensions of alzheimer's disease, International journal of geriatric psychiatry, vol.19, issue.9, pp.864-869, 2004.

K. Zhang, Z. Zhang, Z. Li, and Y. Qiao, Joint face detection and alignment using multitask cascaded convolutional networks, IEEE Signal Processing Letters, vol.23, issue.10, pp.1499-1503, 2016.

A. Mollahosseini, B. Hasani, and M. H. Mahoor, Affectnet: A database for facial expression, valence, and arousal computing in the wild, IEEE Transactions on Affective Computing, 2017.

V. Kazemi and J. Sullivan, One millisecond face alignment with an ensemble of regression trees, IEEE Conference on Computer Vision and Pattern Recognition, pp.1867-1874, 2014.