Building Trust: Lessons from the Technion-Rambam Machine Learning in
Healthcare Datathon Event
- URL: http://arxiv.org/abs/2207.14638v2
- Date: Tue, 2 Aug 2022 12:42:16 GMT
- Title: Building Trust: Lessons from the Technion-Rambam Machine Learning in
Healthcare Datathon Event
- Authors: Jonathan A. Sobel, Ronit Almog, Leo Anthony Celi, Michal
Gaziel-Yablowitz, Danny Eytan, Joachim A. Behar
- Abstract summary: A datathon is a time-constrained competition involving data science applied to a specific problem.
This work describes opportunities and limitations in medical data science in the Israeli context.
- Score: 4.909656341561595
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: A datathon is a time-constrained competition involving data science applied
to a specific problem. In the past decade, datathons have been shown to be a
valuable bridge between fields and expertise . Biomedical data analysis
represents a challenging area requiring collaboration between engineers,
biologists and physicians to gain a better understanding of patient physiology
and of guide decision processes for diagnosis, prognosis and therapeutic
interventions to improve care practice. Here, we reflect on the outcomes of an
event that we organized in Israel at the end of March 2022 between the MIT
Critical Data group, Rambam Health Care Campus (Rambam) and the Technion Israel
Institute of Technology (Technion) in Haifa. Participants were asked to
complete a survey about their skills and interests, which enabled us to
identify current needs in machine learning training for medical problem
applications. This work describes opportunities and limitations in medical data
science in the Israeli context.
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