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Evaluating sepsis watch generalizability through multisite external validation of a sepsis machine learning model.

Publication ,  Journal Article
Valan, B; Prakash, A; Ratliff, W; Gao, M; Muthya, S; Thomas, A; Eaton, JL; Gardner, M; Nichols, M; Revoir, M; Tart, D; O'Brien, C; Patel, M ...
Published in: NPJ Digit Med
June 11, 2025

Sepsis accounts for a substantial portion of global deaths and healthcare costs. The objective of this reproducibility study is to validate Duke Health's Sepsis Watch ML model, in a new community healthcare setting and assess its performance and clinical utility in early sepsis detection at Summa Health's emergency departments. The study analyzed the model's ability to predict sepsis using a combination of static and dynamic patient data using 205,005 encounters between 2020 and 2021 from 101,584 unique patients. 54.7% (n = 112,223) patients were female and the average age was 50 (IQR [38,71]). The AUROC ranged from 0.906 to 0.960, and the AUPRC ranged from 0.177 to 0.252 across the four sites. Ultimately, the reproducibility of the Sepsis Watch model in a community health system setting confirmed its strong and robust performance and portability across different geographical and demographic contexts with little variation.

Duke Scholars

Published In

NPJ Digit Med

DOI

EISSN

2398-6352

Publication Date

June 11, 2025

Volume

8

Issue

1

Start / End Page

350

Location

England

Related Subject Headings

  • 4203 Health services and systems
 

Citation

APA
Chicago
ICMJE
MLA
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Valan, B., Prakash, A., Ratliff, W., Gao, M., Muthya, S., Thomas, A., … Sendak, M. (2025). Evaluating sepsis watch generalizability through multisite external validation of a sepsis machine learning model. NPJ Digit Med, 8(1), 350. https://doi.org/10.1038/s41746-025-01664-5
Valan, Bruno, Anusha Prakash, William Ratliff, Michael Gao, Srikanth Muthya, Ajit Thomas, Jennifer L. Eaton, et al. “Evaluating sepsis watch generalizability through multisite external validation of a sepsis machine learning model.NPJ Digit Med 8, no. 1 (June 11, 2025): 350. https://doi.org/10.1038/s41746-025-01664-5.
Valan B, Prakash A, Ratliff W, Gao M, Muthya S, Thomas A, et al. Evaluating sepsis watch generalizability through multisite external validation of a sepsis machine learning model. NPJ Digit Med. 2025 Jun 11;8(1):350.
Valan, Bruno, et al. “Evaluating sepsis watch generalizability through multisite external validation of a sepsis machine learning model.NPJ Digit Med, vol. 8, no. 1, June 2025, p. 350. Pubmed, doi:10.1038/s41746-025-01664-5.
Valan B, Prakash A, Ratliff W, Gao M, Muthya S, Thomas A, Eaton JL, Gardner M, Nichols M, Revoir M, Tart D, O’Brien C, Patel M, Balu S, Sendak M. Evaluating sepsis watch generalizability through multisite external validation of a sepsis machine learning model. NPJ Digit Med. 2025 Jun 11;8(1):350.

Published In

NPJ Digit Med

DOI

EISSN

2398-6352

Publication Date

June 11, 2025

Volume

8

Issue

1

Start / End Page

350

Location

England

Related Subject Headings

  • 4203 Health services and systems