Development and validation of nomogram to predict severe illness requiring intensive care follow up in hospitalized COVID-19 cases

Early identification of severe COVID-19 patients who will need intensive care unit (ICU) follow-up and providing rapid, aggressive supportive care may reduce mortality and provide optimal use of medical resources. We aimed to develop and validate a nomogram to predict severe COVID-19 cases that woul...

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Veröffentlicht in:BMC infectious diseases 2021-09, Vol.21 (1), p.1-1004, Article 1004
Hauptverfasser: Guner, Rahmet, Kayaaslan, Bircan, Hasanoglu, Imran, Aypak, Adalet, Bodur, Hurrem, Ates, Ihsan, Akinci, Esragul, Erdem, Deniz, Eser, Fatma, Izdes, Seval, Kalem, Ayse Kaya, Bastug, Aliye, Karalezli, Aysegul, Surel, Aziz Ahmet, Ayhan, Muge, Karaahmetoglu, Selma, Turan, Isil Ozkocak, Arguder, Emine, Ozdemir, Burcu, Mutlu, Mehmet Nevzat, Bilir, Yesim Aybar, Saricaoglu, Elif Mukime, Gokcinar, Derya, Gunay, Sibel, Dinc, Bedia, Gemcioglu, Emin, Bilmez, Ruveyda, Aydos, Omer, Asilturk, Dilek, Inan, Osman, Buzgan, Turan
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Sprache:eng
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Zusammenfassung:Early identification of severe COVID-19 patients who will need intensive care unit (ICU) follow-up and providing rapid, aggressive supportive care may reduce mortality and provide optimal use of medical resources. We aimed to develop and validate a nomogram to predict severe COVID-19 cases that would need ICU follow-up based on available and accessible patient values. Out of a total of 1022 patients, 686 cases without missing data were used to construct the nomogram. Of the 686, 104 needed ICU follow-up. The final model includes oxygen saturation, CRP, PCT, LDH, troponin as independent factors for the prediction of need for ICU admission. The model has good predictive power with an AUC of 0.93 (0.902-0.950) and a bias-corrected Harrell's C-index of 0.91 (0.899-0.947). Hosmer-Lemeshow test p-value was 0.826 and the model is well-calibrated (p = 0.1703). We developed a simple, accessible, easy-to-use nomogram with good distinctive power for severe illness requiring ICU follow-up. Clinicians can easily predict the course of COVID-19 and decide the procedure and facility of further follow-up by using clinical and laboratory values of patients available upon admission.
ISSN:1471-2334
1471-2334
DOI:10.1186/s12879-021-06656-w