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Machine learning to predict venous thrombosis in acutely ill medical patients.

Publication ,  Journal Article
Nafee, T; Gibson, CM; Travis, R; Yee, MK; Kerneis, M; Chi, G; AlKhalfan, F; Hernandez, AF; Hull, RD; Cohen, AT; Harrington, RA; Goldhaber, SZ
Published in: Res Pract Thromb Haemost
February 2020

BACKGROUND: The identification of acutely ill patients at high risk for venous thromboembolism (VTE) may be determined clinically or by use of integer-based scoring systems. These scores demonstrated modest performance in external data sets. OBJECTIVES: To evaluate the performance of machine learning models compared to the IMPROVE score. METHODS: The APEX trial randomized 7513 acutely medically ill patients to extended duration betrixaban vs. enoxaparin. Including 68 variables, a super learner model (ML) was built to predict VTE by combining estimates from 5 families of candidate models. A "reduced" model (rML) was also developed using 16 variables that were thought, a priori, to be associated with VTE. The IMPROVE score was calculated for each patient. Model performance was assessed by discrimination and calibration to predict a composite VTE end point. The frequency of predicted risks of VTE were plotted and divided into tertiles. VTE risks were compared across tertiles. RESULTS: The ML and rML algorithms outperformed the IMPROVE score in predicting VTE (c-statistic: 0.69, 0.68 and 0.59, respectively). The Hosmer-Lemeshow goodness-of-fit P-value was 0.06 for ML, 0.44 for rML, and <0.001 for the IMPROVE score. The observed event rate in the lowest tertile was 2.5%, 4.8% in tertile 2, and 11.4% in the highest tertile. Patients in the highest tertile of VTE risk had a 5-fold increase in odds of VTE compared to the lowest tertile. CONCLUSION: The super learner algorithms improved discrimination and calibration compared to the IMPROVE score for predicting VTE in acute medically ill patients.

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Published In

Res Pract Thromb Haemost

DOI

EISSN

2475-0379

Publication Date

February 2020

Volume

4

Issue

2

Start / End Page

230 / 237

Location

United States

Related Subject Headings

  • 3202 Clinical sciences
  • 3201 Cardiovascular medicine and haematology
 

Citation

APA
Chicago
ICMJE
MLA
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Nafee, T., Gibson, C. M., Travis, R., Yee, M. K., Kerneis, M., Chi, G., … Goldhaber, S. Z. (2020). Machine learning to predict venous thrombosis in acutely ill medical patients. Res Pract Thromb Haemost, 4(2), 230–237. https://doi.org/10.1002/rth2.12292
Nafee, Tarek, C Michael Gibson, Ryan Travis, Megan K. Yee, Mathieu Kerneis, Gerald Chi, Fahad AlKhalfan, et al. “Machine learning to predict venous thrombosis in acutely ill medical patients.Res Pract Thromb Haemost 4, no. 2 (February 2020): 230–37. https://doi.org/10.1002/rth2.12292.
Nafee T, Gibson CM, Travis R, Yee MK, Kerneis M, Chi G, et al. Machine learning to predict venous thrombosis in acutely ill medical patients. Res Pract Thromb Haemost. 2020 Feb;4(2):230–7.
Nafee, Tarek, et al. “Machine learning to predict venous thrombosis in acutely ill medical patients.Res Pract Thromb Haemost, vol. 4, no. 2, Feb. 2020, pp. 230–37. Pubmed, doi:10.1002/rth2.12292.
Nafee T, Gibson CM, Travis R, Yee MK, Kerneis M, Chi G, AlKhalfan F, Hernandez AF, Hull RD, Cohen AT, Harrington RA, Goldhaber SZ. Machine learning to predict venous thrombosis in acutely ill medical patients. Res Pract Thromb Haemost. 2020 Feb;4(2):230–237.

Published In

Res Pract Thromb Haemost

DOI

EISSN

2475-0379

Publication Date

February 2020

Volume

4

Issue

2

Start / End Page

230 / 237

Location

United States

Related Subject Headings

  • 3202 Clinical sciences
  • 3201 Cardiovascular medicine and haematology