Iñigo Rua-Figueroa, M Jesus García de Yébenes, Julia Martinez-Barrio, Maria Galindo Izquierdo, Jaime Calvo Alén, Antonio Fernandez-Nebro, Raúl Menor-Almagro, Loreto Carmona, Beatriz Tejera Segura, Eva Tomero, Mercedes Freire-González, Clara Sangüesa, Loreto Horcada, Ricardo Blanco, Esther Uriarte Itzazelaia, Javier Narváez, José Carlos Rosas Gómez de Salazar, Silvia Gómez-Sabater, Claudia Moriano Morales, Jose L Andreu, Vicente Torrente Segarra, Elena Aurrecoechea, Ana Perez, Javier Nóvoa Medina, Eva Salgado, Nuria Lozano-Rivas, Carlos Montilla, Esther Ruiz-Lucea, Marta Arevalo, Carlota Iñiguez, María Jesús García-Villanueva, Lorena Exposito, Mónica Ibáñez-Barceló, Gema Bonilla, Irene Carrión-Barberà, Celia Erausquin, Jorge Juan Fragio Gil, Angela Pecondón, Francisco J Toyos, Tatiana Cobo, Alejandro Muñoz-Jiménez, Jose Oller, Joan M Nolla, J M Pego-Reigosa
{"title":"SLESIS-R: an improved score for prediction of serious infection in patients with systemic lupus erythematosus based on the RELESSER prospective cohort","authors":"Iñigo Rua-Figueroa, M Jesus García de Yébenes, Julia Martinez-Barrio, Maria Galindo Izquierdo, Jaime Calvo Alén, Antonio Fernandez-Nebro, Raúl Menor-Almagro, Loreto Carmona, Beatriz Tejera Segura, Eva Tomero, Mercedes Freire-González, Clara Sangüesa, Loreto Horcada, Ricardo Blanco, Esther Uriarte Itzazelaia, Javier Narváez, José Carlos Rosas Gómez de Salazar, Silvia Gómez-Sabater, Claudia Moriano Morales, Jose L Andreu, Vicente Torrente Segarra, Elena Aurrecoechea, Ana Perez, Javier Nóvoa Medina, Eva Salgado, Nuria Lozano-Rivas, Carlos Montilla, Esther Ruiz-Lucea, Marta Arevalo, Carlota Iñiguez, María Jesús García-Villanueva, Lorena Exposito, Mónica Ibáñez-Barceló, Gema Bonilla, Irene Carrión-Barberà, Celia Erausquin, Jorge Juan Fragio Gil, Angela Pecondón, Francisco J Toyos, Tatiana Cobo, Alejandro Muñoz-Jiménez, Jose Oller, Joan M Nolla, J M Pego-Reigosa","doi":"10.1136/lupus-2023-001096","DOIUrl":null,"url":null,"abstract":"Objective To develop an improved score for prediction of severe infection in patients with systemic lupus erythematosus (SLE), namely, the SLE Severe Infection Score-Revised (SLESIS-R) and to validate it in a large multicentre lupus cohort. Methods We used data from the prospective phase of RELESSER (RELESSER-PROS), the SLE register of the Spanish Society of Rheumatology. A multivariable logistic model was constructed taking into account the variables already forming the SLESIS score, plus all other potential predictors identified in a literature review. Performance was analysed using the C-statistic and the area under the receiver operating characteristic curve (AUROC). Internal validation was carried out using a 100-sample bootstrapping procedure. ORs were transformed into score items, and the AUROC was used to determine performance. Results A total of 1459 patients who had completed 1 year of follow-up were included in the development cohort (mean age, 49±13 years; 90% women). Twenty-five (1.7%) had experienced ≥1 severe infection. According to the adjusted multivariate model, severe infection could be predicted from four variables: age (years) ≥60, previous SLE-related hospitalisation, previous serious infection and glucocorticoid dose. A score was built from the best model, taking values from 0 to 17. The AUROC was 0.861 (0.777–0.946). The cut-off chosen was ≥6, which exhibited an accuracy of 85.9% and a positive likelihood ratio of 5.48. Conclusions SLESIS-R is an accurate and feasible instrument for predicting infections in patients with SLE. SLESIS-R could help to make informed decisions on the use of immunosuppressants and the implementation of preventive measures. Data are available upon reasonable request.","PeriodicalId":18126,"journal":{"name":"Lupus Science & Medicine","volume":"87 1","pages":""},"PeriodicalIF":3.7000,"publicationDate":"2024-04-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Lupus Science & Medicine","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.1136/lupus-2023-001096","RegionNum":2,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"RHEUMATOLOGY","Score":null,"Total":0}
引用次数: 0
Abstract
Objective To develop an improved score for prediction of severe infection in patients with systemic lupus erythematosus (SLE), namely, the SLE Severe Infection Score-Revised (SLESIS-R) and to validate it in a large multicentre lupus cohort. Methods We used data from the prospective phase of RELESSER (RELESSER-PROS), the SLE register of the Spanish Society of Rheumatology. A multivariable logistic model was constructed taking into account the variables already forming the SLESIS score, plus all other potential predictors identified in a literature review. Performance was analysed using the C-statistic and the area under the receiver operating characteristic curve (AUROC). Internal validation was carried out using a 100-sample bootstrapping procedure. ORs were transformed into score items, and the AUROC was used to determine performance. Results A total of 1459 patients who had completed 1 year of follow-up were included in the development cohort (mean age, 49±13 years; 90% women). Twenty-five (1.7%) had experienced ≥1 severe infection. According to the adjusted multivariate model, severe infection could be predicted from four variables: age (years) ≥60, previous SLE-related hospitalisation, previous serious infection and glucocorticoid dose. A score was built from the best model, taking values from 0 to 17. The AUROC was 0.861 (0.777–0.946). The cut-off chosen was ≥6, which exhibited an accuracy of 85.9% and a positive likelihood ratio of 5.48. Conclusions SLESIS-R is an accurate and feasible instrument for predicting infections in patients with SLE. SLESIS-R could help to make informed decisions on the use of immunosuppressants and the implementation of preventive measures. Data are available upon reasonable request.
期刊介绍:
Lupus Science & Medicine is a global, peer reviewed, open access online journal that provides a central point for publication of basic, clinical, translational, and epidemiological studies of all aspects of lupus and related diseases. It is the first lupus-specific open access journal in the world and was developed in response to the need for a barrier-free forum for publication of groundbreaking studies in lupus. The journal publishes research on lupus from fields including, but not limited to: rheumatology, dermatology, nephrology, immunology, pediatrics, cardiology, hepatology, pulmonology, obstetrics and gynecology, and psychiatry.