Authors
Byron C Wallace, Kevin Small, Carla E Brodley, Joseph Lau, Thomas A Trikalinos
Publication date
2012/1/28
Book
Proceedings of the 2nd ACM SIGHIT international health informatics symposium
Pages
819-824
Description
Medical researchers looking for evidence pertinent to a specific clinical question must navigate an increasingly voluminous corpus of published literature. This data deluge has motivated the development of machine learning and data mining technologies to facilitate efficient biomedical research. Despite the obvious labor-saving potential of these technologies and the concomitant academic interest therein, however, adoption of machine learning techniques by medical researchers has been relatively sluggish. One explanation for this is that while many machine learning methods have been proposed and retrospectively evaluated, they are rarely (if ever) actually made accessible to the practitioners whom they would benefit. In this work, we describe the ongoing development of an end-to-end interactive machine learning system at the Tufts Evidence-based Practice Center. More specifically, we have developed …
Total citations
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Scholar articles
BC Wallace, K Small, CE Brodley, J Lau, TA Trikalinos - Proceedings of the 2nd ACM SIGHIT international …, 2012