R. Bellomo and S. M. Bagshaw, Evidence-based medicine: Classifying the evidence from clinical trials-the need to consider other dimensions, Critical Care, vol.10, issue.5, p.232, 2006.

M. Collins and N. Duffy, New ranking algorithms for parsing and tagging: Kernels over discrete structures, and the voted perceptron, ACL, pp.263-270, 2002.

R. Craven, F. Toni, C. Cadar, A. Hadad, and M. Williams, Efficient argumentation for medical decision-making, KR, 2012.

F. Dernoncourt, J. Y. Lee, and P. Szolovits, Neural networks for joint sentence classification in medical paper abstracts, EACL, pp.694-700, 2017.

M. Fiszman, D. Demner-fushman, F. Lang, P. Goetz, and T. C. , Interpreting comparative constructions in biomedical text, BioNLP@ACL, pp.137-144, 2007.

A. S. Samir-gupta, K. Ashique-mahmood, C. H. Ross, K. Wu, and . Vijay-shanker, Identifying comparative structures in biomedical text, In BioNLP, vol.2, pp.206-215, 2017.

I. Gurevych, C. Stab, and ;. Lapata, Recognizing insufficiently supported arguments in argumentative essays, pp.980-990, 2017.

I. Habernal and I. Gurevych, Argumentation mining in user-generated web discourse, Comput. Linguist, vol.43, issue.1, pp.125-179, 2017.

A. Hunter and M. Williams, Aggregating evidence about the positive and negative effects of treatments, Artificial Intelligence in Medicine, vol.56, issue.3, pp.173-190, 2012.

, Proceedings of the 15th Conference of the European Chapter of the Association for Computational Linguistics, vol.1, 2017.

M. Lippi and P. Torroni, Argumentation mining: State of the art and emerging trends, ACM Trans. Internet Techn, vol.16, issue.2, p.10, 2016.

M. Lippi and P. Torroni, MARGOT: A web server for argumentation mining, Expert Systems with Applications, vol.65, pp.292-303, 2016.

L. Longo and L. Hederman, Argumentation theory for decision support in health-care: A comparison with machine learning, BHI, pp.168-180, 2013.

L. Manchikanti, S. Datta, H. Smith, and J. Hirsch, Evidence-based medicine, systematic reviews, and guidelines in interventional pain management: part 6. systematic reviews and meta-analyses of observational studies, Pain physician, vol.12, pp.819-50, 2009.

T. Mayer, E. Cabrio, M. Lippi, P. Torroni, and S. Villata, Argument mining on clinical trials, Proceedings of COMMA'18, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01876462

A. Peldszus and M. Stede, From argument diagrams to argumentation mining in texts: A survey, Int. J. Cogn. Inform. Nat. Intell, vol.7, issue.1, pp.1-31, 2013.

D. Malik-al-qassas, M. Fogli, G. Giacomin, and . Guida, Analysis of clinical discussions based on argumentation schemes, Procedia Computer Science, vol.64, pp.282-289, 2015.

R. Rinott, L. Dankin, C. A. Perez, M. M. Khapra, E. Aharoni et al., Show me your evidence-an automatic method for context dependent evidence detection, EMNLP, 2015.

H. Schünemann, J. Andrew-d-oxman, P. Brozek, R. Glasziou, G. Jaeschke et al., Grading quality of evidence and strength of recommendations for diagnostic tests and strategies, BMJ, vol.336, pp.1106-1116, 2008.

A. Trenta, A. Hunter, and S. Riedel, Extraction of evidence tables from abstracts of randomized clinical trials using a maximum entropy classifier and global constraints, 2015.

H. Wachsmuth, B. Stein, G. Hirst, V. Prabhakaran, Y. Bilu et al., Computational argumentation quality assessment in natural language, pp.176-187, 2017.
DOI : 10.18653/v1/e17-1017

URL : https://doi.org/10.18653/v1/e17-1017