Scientific paper - Review paper
Improving risk prediction model quality in the critically ill: data linkage study
Health and Social Care Delivery Research, 10 (2022), 39; 1-192. https://doi.org/10.3310/EQAB4594

Ferrando-Vivas, Paloma; Shankar-Hari, Manu; Thomas, Karen; Doidge, James C; Caskey, Fergus J; Forni, Lui; Harris, Steve; Ostermann, Marlies; Gornik, Ivan; Holman, Naomi; Lone, Nazir; Young, Bob; Jenkins, David; Webb, Stephen; Nolan, Jerry P; Soar, Jasmeet; Rowan, Kathryn M; Harrison, David A More authors...

Cite this document

Ferrando Vivas, P., Shankar Hari, M., Thomas, K., Doidge, J. C., Caskey, F. J., Forni, L. ... Harrison, D. A. (2022). Improving risk prediction model quality in the critically ill: data linkage study. Health and Social Care Delivery Research, 10. (39), 1-192. doi: 10.3310/EQAB4594

Ferrando Vivas, Paloma, et al. "Improving risk prediction model quality in the critically ill: data linkage study." Health and Social Care Delivery Research, vol. 10, no. 39, 2022, pp. 1-192. https://doi.org/10.3310/EQAB4594

Ferrando Vivas, Paloma, Manu Shankar Hari, Karen Thomas, James C Doidge, Fergus J Caskey, Lui Forni, Steve Harris, et al. "Improving risk prediction model quality in the critically ill: data linkage study." Health and Social Care Delivery Research 10, no. 39 (2022): 1-192. https://doi.org/10.3310/EQAB4594

Ferrando Vivas, P., et al. (2022) 'Improving risk prediction model quality in the critically ill: data linkage study', Health and Social Care Delivery Research, 10(39), pp. 1-192. doi: 10.3310/EQAB4594

Ferrando Vivas P, Shankar Hari M, Thomas K, Doidge JC, Caskey FJ, Forni L, and sur.. Improving risk prediction model quality in the critically ill: data linkage study. Health and Social Care Delivery Research [Internet]. 2022 December [cited 2024 May 09];10(39):1-192. doi: 10.3310/EQAB4594

P. Ferrando Vivas, et al., "Improving risk prediction model quality in the critically ill: data linkage study", Health and Social Care Delivery Research, vol. 10, no. 39, pp. 1-192, December 2022. [Online]. Available at: https://urn.nsk.hr/urn:nbn:hr:105:306197. [Accessed: 09 May 2024]

Please login to the repository to save this object to your list.