Call for Submissions

MLHC -> Machine Learning for Healthcare Conference 2018

What: a two day meeting on data-driven healthcare

When: August 17-18, 2018

Where: Stanford, CA

Website: https://www.mlforhc.org/

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Description. Researchers in machine learning --- including those working in
statistical natural language processing, computer vision and related
sub-fields --- when coupled with seasoned clinicians can play an important
role in turning complex medical data (e.g., individual patient health
records, genomic data, data from wearable health monitors, online reviews
of physicians, medical imagery, etc.) into actionable knowledge that
ultimately improves patient care. For several years, this meeting has drawn
hundreds of clinical and machine learning researchers to frame problems
clinicians need solved and discuss machine learning solutions.

We invite submissions that describe novel methods to address the challenges
inherent to health-related data (e.g., sparsity, class imbalance,
causality, temporal dynamics, multi-modal data). We also invite articles
describing the application and evaluation of state-of-the-art machine
learning approaches applied to health data in deployed systems. Submissions
will be reviewed by both computer scientists and clinicians. This year we
are calling for papers in two tracks: a research paper track and a clinical
abstract track. Accepted papers will be (optionally) archived through the
Journal of Machine Learning Research proceedings track.

In particular, we seek high-quality submissions on the following topics:

*Predicting individual patient outcomes

*Mining, processing and making sense of clinical notes

*Patient risk stratification

*Parsing biomedical literature

*Bio-marker discovery

*Brain imaging technologies and related models

*Learning from sparse/missing/imbalanced data

*Time series analysis with medical applications

*Medical imaging

*Efficient, scalable processing of clinical data

*Clustering and phenotype discovery

*Methods for vitals monitoring

*Feature selection/dimensionality reduction

*Text classification and mining for biomedical literature

*Exploiting and generating ontologies

*ML systems that assist with evidence-based medicine

Proceedings and Review Process. Accepted submissions will be published
through the proceedings track of the Journal of Machine Learning Research.
All papers will be rigorously peer-reviewed, and research that has been
previously published elsewhere or is currently in submission may not be
submitted.  However, authors will have the option of only archiving the
abstract to allow for future submissions to clinical journals, etc.

Submission Details. Submissions should be no longer than 8 pages (excluding
references). The review process is double blind. Please refer to the
submission instructions on our website.

Important Dates:

Paper Submission Deadline - April 20th 2018 at 6:00 PM (EDT)

Acceptance Notification - June 20th 2018

Program Chairs. Finale Doshi, PhD (Harvard University), James Fackler, MD
(Johns Hopkins), David Kale (USC), Rajesh Ranganath, PhD (NYU), Byron
Wallace, PhD (Northeastern), Jenna Wiens, PhD (University of Michigan)
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