Joel Saltz

Affiliations: 
University of Maryland, College Park, College Park, MD 
Area:
Computer Science
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"Joel Saltz"
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Publications

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Gomes J, Kong J, Kurc T, et al. (2021) Building robust pathology image analyses with uncertainty quantification. Computer Methods and Programs in Biomedicine. 208: 106291
Bennett TD, Moffitt RA, Hajagos JG, et al. (2021) Clinical Characterization and Prediction of Clinical Severity of SARS-CoV-2 Infection Among US Adults Using Data From the US National COVID Cohort Collaborative. Jama Network Open. 4: e2116901
Kobayashi S, Saltz JH, Yang VW. (2021) State of machine and deep learning in histopathological applications in digestive diseases. World Journal of Gastroenterology. 27: 2545-2575
Deng J, Hou W, Dong X, et al. (2021) A Large-Scale Observational Study on the Temporal Trends and Risk Factors of Opioid Overdose: Real-World Evidence for Better Opioids. Drugs - Real World Outcomes
Dong X, Deng J, Rashidian S, et al. (2021) Identifying risk of opioid use disorder for patients taking opioid medications with deep learning. Journal of the American Medical Informatics Association : Jamia
FitzGerald TJ, Followill D, Laurie F, et al. (2021) Quality assurance in radiation oncology. Pediatric Blood & Cancer. 68: e28609
Rando HM, Bennett TD, Byrd JB, et al. (2021) Challenges in defining Long COVID: Striking differences across literature, Electronic Health Records, and patient-reported information. Medrxiv : the Preprint Server For Health Sciences
Dong X, Deng J, Hou W, et al. (2021) Predicting Opioid Overdose Risk of Patients with Opioid Prescriptions Using Electronic Health Records Based on Temporal Deep Learning. Journal of Biomedical Informatics. 103725
Chen X, Hou W, Rashidian S, et al. (2021) A large-scale retrospective study of opioid poisoning in New York State with implications for targeted interventions. Scientific Reports. 11: 5152
Moore MR, Friesner ID, Rizk EM, et al. (2021) Automated digital TIL analysis (ADTA) adds prognostic value to standard assessment of depth and ulceration in primary melanoma. Scientific Reports. 11: 2809
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