Keith E Morse
Overview
Explore the profile of Keith E Morse including associated specialties, affiliations and a list of published articles.
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Articles
16
Citations
101
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0
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Recent Articles
1.
Bannett Y, Bassett H, Morse K
Hosp Pediatr
. 2024 Dec;
15(1):e12-e14.
PMID: 39679589
No abstract available.
2.
Tse G, Zahedivash A, Anoshiravani A, Carlson J, Haberkorn W, Morse K
JAMA Pediatr
. 2024 Nov;
179(1):93-94.
PMID: 39495530
No abstract available.
3.
Zhang D, Tong J, Jing N, Yang Y, Luo C, Lu Y, et al.
J Am Med Inform Assoc
. 2024 Mar;
31(5):1102-1112.
PMID: 38456459
Objectives: To characterize the complex interplay between multiple clinical conditions in a time-to-event analysis framework using data from multiple hospitals, we developed two novel one-shot distributed algorithms for competing risk...
4.
Guo L, Morse K, Aftandilian C, Steinberg E, Fries J, Posada J, et al.
BMC Med Inform Decis Mak
. 2024 Feb;
24(1):51.
PMID: 38355486
Background: Diagnostic codes are commonly used as inputs for clinical prediction models, to create labels for prediction tasks, and to identify cohorts for multicenter network studies. However, the coverage rates...
5.
Rabbani N, Brown C, Bedgood M, Goldstein R, Carlson J, Pageler N, et al.
JAMA Pediatr
. 2024 Jan;
178(3):308-310.
PMID: 38252434
No abstract available.
6.
Lemmon J, Guo L, Steinberg E, Morse K, Fleming S, Aftandilian C, et al.
J Am Med Inform Assoc
. 2023 Aug;
30(12):2004-2011.
PMID: 37639620
Objective: Development of electronic health records (EHR)-based machine learning models for pediatric inpatients is challenged by limited training data. Self-supervised learning using adult data may be a promising approach to...
7.
Rabbani N, Bedgood M, Brown C, Steinberg E, Goldstein R, Carlson J, et al.
Appl Clin Inform
. 2023 Mar;
14(3):400-407.
PMID: 36898410
Background: The 21st Century Cures Act mandates the immediate, electronic release of health information to patients. However, in the case of adolescents, special consideration is required to ensure that confidentiality...
8.
Seneviratne M, Li R, Schreier M, Lopez-Martinez D, Patel B, Yakubovich A, et al.
BMJ Health Care Inform
. 2022 Oct;
29(1).
PMID: 36220304
Objectives: Few machine learning (ML) models are successfully deployed in clinical practice. One of the common pitfalls across the field is inappropriate problem formulation: designing ML to fit the data...
9.
Lu J, Callahan A, Patel B, Morse K, Dash D, Pfeffer M, et al.
JAMA Netw Open
. 2022 Aug;
5(8):e2227779.
PMID: 35984654
Importance: Various model reporting guidelines have been proposed to ensure clinical prediction models are reliable and fair. However, no consensus exists about which model details are essential to report, and...
10.
Morse K, Brown C, Fleming S, Todd I, Powell A, Russell A, et al.
Appl Clin Inform
. 2022 May;
13(2):431-438.
PMID: 35508197
Objective: The purpose of this study is to evaluate the ability of three metrics to monitor for a reduction in performance of a chronic kidney disease (CKD) model deployed at...