Saturday, March 25, 2023

[DMANET] The many aspects of machine learning explainability in medical imaging @ CIBB 2023

[Apologies if you receive multiple copies of this message]

Dear colleagues,

I find this special session could be of interest for the community:

Special Session "The many aspects
of machine learning explainability in medical imaging" at the 18th
International Conference on Computational Intelligence Methods for
Bioinformatics and Biostatistics (CIBB 2023).

· Conference dates: 6-8 September 2022

· Location: Padova (Italy)

· Submission format: short paper (4-6 pages)

· Deadline: 30 April 2023

Submitted contributions will undergo peer review before acceptance.
The authors of all the accepted short papers presented at the
conference will be invited to submit an extended version of their
manuscripts to the conference proceedings book in Springer Lecture
Notes in Bioinformatics (LNBI), or to a supplement in a journal such
as BMC Bioinformatics or BMC Medical Informatics and Decision Making.

You are invited to submit a short paper (4-6 pages) describing their
original contributions in the fields of medical imaging, focusing on
explainable machine learning, visual analytics for explainable machine
learning, interpretable features, decision-making support in
healthcare, and explainable predictive models.

Please find the call for papers and all the submission details on the
conference website https://cibb2023.dei.unipd.it/

We look forward to seeing you at the conference!
Best regards,

The Special Session Organizers

Salvatore Calderaro, Carmelo Militello, Francesco Prinzi, Filippo Vella


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