TY - JOUR
T1 - Predicting Hospitalization and Related Outcomes in Advanced Chronic Kidney Disease
T2 - A Systematic Review, External Validation, and Development Study
AU - Janse, Roemer J.
AU - Milders, Jet
AU - Rotmans, Joris I.
AU - Caskey, Fergus J.
AU - Evans, Marie
AU - Torino, Claudia
AU - Szymczak, Maciej
AU - Drechsler, Christiane
AU - Wanner, Christoph
AU - Pippias, Maria
AU - Vilasi, Antonio
AU - Stel, Vianda S.
AU - Chesnaye, Nicholas C.
AU - Jager, Kitty J.
AU - Dekker, Friedo W.
AU - van Diepen, Merel
AU - Schneider, Andreas
AU - Torp, Anke
AU - Iwig, Beate
AU - Perras, Boris
AU - Marx, Christian
AU - Drechsler, Christiane
AU - Blaser, Christof
AU - Wanner, Christoph
AU - Emde, Claudia
AU - Krieter, Detlef
AU - Fuchs, Dunja
AU - Irmler, Ellen
AU - Platen, Eva
AU - Schmidt-Gürtler, Hans
AU - Schlee, Hendrik
AU - Naujoks, Holger
AU - Schlee, Ines
AU - Cäsar, Sabine
AU - Beige, Joachim
AU - Röthele, Jochen
AU - Mazur, Justyna
AU - Hahn, Kai
AU - Blouin, Katja
AU - Neumeier, Katrin
AU - Anding-Rost, Kirsten
AU - Schramm, Lothar
AU - Hopf, Monika
AU - Wuttke, Nadja
AU - Frischmuth, Nikolaus
AU - Ichtiaris, Pawlos
AU - Kirste, Petra
AU - Gaillard, Carlo
AU - Voskamp, Pauline
AU - Blankestijn, Peter
N1 - Publisher Copyright:
© 2025 The Authors
PY - 2025/7
Y1 - 2025/7
N2 - Rationale & Objective: Hospitalization is common in patients with advanced chronic kidney disease (CKD). Predicting hospitalization and related outcomes would be beneficial for hospitals and patients. Therefore, we aimed to (1) give an overview of current prediction models for hospitalization, length of stay, and readmission in patients with advanced CKD; (2) externally validate these models; and (3) develop a new model if no valid models were identified. Study Design: Systematic review, development, and external validation study. Setting & Participants: We were interested in prediction models of hospitalization, length of stay, or readmission for patients with advanced CKD. Our available development and validation data consisted of hemodialysis, peritoneal dialysis, and advanced CKD patients not receiving dialysis from a Dutch dialysis and European advanced CKD cohort. Selection Criteria for Studies: We systematically searched PubMed. Studies had to intentionally develop, validate, or update a prediction model in adults with CKD. Analytical Approach: We used the PROBAST for risk of bias assessment. Identified models were externally validated on model discrimination (C-statistic) and calibration (calibration plot, slope, and calibration-in-the-large). We developed a Fine-Gray model for hospitalization within 1 year in patients initiating hemodialysis, accounting for the competing risk of death. Results: We identified 45 models in 8 studies. The majority were of low quality with a high risk of bias. Due to underreporting and population-specific predictors, we could only validate 3 models. These were poorly calibrated and had poor discrimination. Using multiple modeling strategies, an adequate new model could not be developed. Limitations: The outcome hospitalization might be too heterogeneous, and we did not have all relevant predictors available. Conclusions: Hospitalizations are important but difficult to predict for patients with advanced CKD. An improved prediction model should be developed, for example, using a more specific outcome (eg, cardiovascular hospitalizations) and more predictors (eg, patient-reported outcome measures). Plain-Language Summary: Hospitalizations often occur in patients with advanced chronic kidney disease. By predicting hospitalization and related outcomes, patients can better prepare for the future and cope with their disease. Therefore, we searched existing literature for existing methods to predict hospitalizations and related outcomes. Although many algorithms exist, they are often not available for use or are not reliable. We then developed our own algorithm to predict hospitalization in the coming year. However, it also did not predict reliably. In this study, we summarize what failed in existing prediction algorithms, what we learned from predicting hospitalization ourselves, and how to proceed to allow reliable predictions of hospitalizations.
AB - Rationale & Objective: Hospitalization is common in patients with advanced chronic kidney disease (CKD). Predicting hospitalization and related outcomes would be beneficial for hospitals and patients. Therefore, we aimed to (1) give an overview of current prediction models for hospitalization, length of stay, and readmission in patients with advanced CKD; (2) externally validate these models; and (3) develop a new model if no valid models were identified. Study Design: Systematic review, development, and external validation study. Setting & Participants: We were interested in prediction models of hospitalization, length of stay, or readmission for patients with advanced CKD. Our available development and validation data consisted of hemodialysis, peritoneal dialysis, and advanced CKD patients not receiving dialysis from a Dutch dialysis and European advanced CKD cohort. Selection Criteria for Studies: We systematically searched PubMed. Studies had to intentionally develop, validate, or update a prediction model in adults with CKD. Analytical Approach: We used the PROBAST for risk of bias assessment. Identified models were externally validated on model discrimination (C-statistic) and calibration (calibration plot, slope, and calibration-in-the-large). We developed a Fine-Gray model for hospitalization within 1 year in patients initiating hemodialysis, accounting for the competing risk of death. Results: We identified 45 models in 8 studies. The majority were of low quality with a high risk of bias. Due to underreporting and population-specific predictors, we could only validate 3 models. These were poorly calibrated and had poor discrimination. Using multiple modeling strategies, an adequate new model could not be developed. Limitations: The outcome hospitalization might be too heterogeneous, and we did not have all relevant predictors available. Conclusions: Hospitalizations are important but difficult to predict for patients with advanced CKD. An improved prediction model should be developed, for example, using a more specific outcome (eg, cardiovascular hospitalizations) and more predictors (eg, patient-reported outcome measures). Plain-Language Summary: Hospitalizations often occur in patients with advanced chronic kidney disease. By predicting hospitalization and related outcomes, patients can better prepare for the future and cope with their disease. Therefore, we searched existing literature for existing methods to predict hospitalizations and related outcomes. Although many algorithms exist, they are often not available for use or are not reliable. We then developed our own algorithm to predict hospitalization in the coming year. However, it also did not predict reliably. In this study, we summarize what failed in existing prediction algorithms, what we learned from predicting hospitalization ourselves, and how to proceed to allow reliable predictions of hospitalizations.
KW - Algorithm
KW - chronic kidney disease
KW - dialysis
KW - hospital admission
KW - hospitalization
KW - length of stay
KW - prediction
KW - readmission
KW - risk score
UR - http://www.scopus.com/inward/record.url?scp=105008432505&partnerID=8YFLogxK
U2 - 10.1016/j.xkme.2025.101016
DO - 10.1016/j.xkme.2025.101016
M3 - Article
AN - SCOPUS:105008432505
VL - 7
JO - Kidney Medicine
JF - Kidney Medicine
IS - 7
M1 - 101016
ER -