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  3. A machine-learning model for reducing misdiagnosis in heparin-induced thrombocytopenia: A prospective, multicenter, observational study.
 

A machine-learning model for reducing misdiagnosis in heparin-induced thrombocytopenia: A prospective, multicenter, observational study.

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BORIS DOI
10.48350/175460
Publisher DOI
10.1016/j.eclinm.2022.101745
PubMed ID
36457646
Description
BACKGROUND

Diagnosing heparin-induced thrombocytopenia (HIT) at the bedside remains challenging, exposing a significant number of patients at risk of delayed diagnosis or overtreatment. We hypothesized that machine-learning algorithms could be utilized to develop a more accurate and user-friendly diagnostic tool that integrates diverse clinical and laboratory information and accounts for complex interactions.

METHODS

We conducted a prospective cohort study including 1393 patients with suspected HIT between 2018 and 2021 from 10 study centers. Detailed clinical information and laboratory data were collected, and various immunoassays were conducted. The washed platelet heparin-induced platelet activation assay (HIPA) served as the reference standard.

FINDINGS

HIPA diagnosed HIT in 119 patients (prevalence 8.5%). The feature selection process in the training dataset (75% of patients) yielded the following predictor variables: (1) immunoassay test result, (2) platelet nadir, (3) unfractionated heparin use, (4) CRP, (5) timing of thrombocytopenia, and (6) other causes of thrombocytopenia. The best performing models were a support vector machine in case of the chemiluminescent immunoassay (CLIA) and the ELISA, as well as a gradient boosting machine in particle-gel immunoassay (PaGIA). In the validation dataset (25% of patients), the AUROC of all models was 0.99 (95% CI: 0.97, 1.00). Compared to the currently recommended diagnostic algorithm (4Ts score, immunoassay), the numbers of false-negative patients were reduced from 12 to 6 (-50.0%; ELISA), 9 to 3 (-66.7%, PaGIA) and 14 to 5 (-64.3%; CLIA). The numbers of false-positive individuals were reduced from 87 to 61 (-29.8%; ELISA), 200 to 63 (-68.5%; PaGIA) and increased from 50 to 63 (+29.0%) for the CLIA.

INTERPRETATION

Our user-friendly machine-learning algorithm for the diagnosis of HIT (https://toradi-hit.org) was substantially more accurate than the currently recommended diagnostic algorithm. It has the potential to reduce delayed diagnosis and overtreatment in clinical practice. Future studies shall validate this model in wider settings.

FUNDING

Swiss National Science Foundation (SNSF), and International Society on Thrombosis and Haemostasis (ISTH).
Date of Publication
2023-01
Publication Type
Article
Subject(s)
500 Science > 570 Life sciences; biology
600 Technology > 610 Medicine & health
500 Science > 510 Mathematics
500 Science > 530 Physics
Keyword(s)
Anticoagulants Diagnosis Heparin Heparin-induced thrombocytopenia Low-molecular-weight Platelet count Thrombocytopenia
Language(s)
en
Contributor(s)
Nilius, Henning Jürgen Jean
Universitätsinstitut für Klinische Chemie (UKC)
Cuker, Adam
Haug, Sigveorcid-logo
Mathematisches Institut (MAI)
Physikalisches Institut, Laboratorium für Hochenergiephysik (LHEP)
Nakas, Christos T.
Universitätsinstitut für Klinische Chemie (UKC)
Studt, Jan-Dirk
Tsakiris, Dimitrios A
Greinacher, Andreas
Mendez, Adriana
Schmidt, Adrian
Wuillemin, Walter A
Gerber, Bernhard
Kremer Hovinga Strebel, Johanna Annaorcid-logo
Universitätsklinik für Hämatologie und Hämatologisches Zentrallabor
Vishnu, Prakash
Graf, Lukas
Kashev, Alexanderorcid-logo
Mathematisches Institut (MAI)
Sznitman, Raphaelorcid-logo
ARTORG Center - Artificial Intelligence in Medical Image Computing
ARTORG Center for Biomedical Engineering Research
Bakchoul, Tamam
Nagler, Michael
Universitätsinstitut für Klinische Chemie (UKC)
Additional Credits
Universitätsklinik für Hämatologie und Hämatologisches Zentrallabor
Mathematisches Institut (MAI)
ARTORG Center - Artificial Intelligence in Medical Image Computing
Universitätsinstitut für Klinische Chemie (UKC)
Series
EClinicalMedicine
Publisher
Elsevier
ISSN
2589-5370
Access(Rights)
restricted
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