A Technical Performance Study and Proposed Systematic and Comprehensive Evaluation of an ML-based CDS Solution for Pediatric Asthma.
Shauna M. Overgaard(WinnMed), Young J. Juhn(Mayo Clinic), Lynnea Myers(Mayo Clinic), Kevin J. Peterson(Mayo Clinic), Amin Nikakhtar(Mayo Clinic in Florida), Lu Zheng(Mayo Clinic), Lauren Rost(Mayo Clinic in Florida), Janet Zink(Mayo Clinic in Florida), Joshua W. Ohde(Mayo Clinic), Sunghwan Sohn(Mayo Clinic in Florida), Tara Pereira(Mayo Clinic in Florida), Bhavani Singh Agnikula Kshatriya(Mayo Clinic in Florida), Chung Ii Wi(Mayo Clinic), Tracey A. Brereton(Mayo Clinic)
PubMed
January 1, 2022
Cited by 9
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