TY - JOUR
T1 - Prognostic models for newly-diagnosed chronic lymphocytic leukaemia in adults
T2 - a systematic review and meta-analysis
AU - Kreuzberger, Nina
AU - Damen, Johanna AAG
AU - Trivella, Marialena
AU - Estcourt, Lise J
AU - Aldin, Angela
AU - Umlauff, Lisa
AU - Vazquez-Montes, Maria Dla
AU - Wolff, Robert
AU - Moons, Karel GM
AU - Monsef, Ina
AU - Foroutan, Farid
AU - Kreuzer, Karl-Anton
AU - Skoetz, Nicole
N1 - Funding Information:
"Associazione Italiana per la Ricerca sul Cancro; Contract grant no.: 9980, IG10492, IG10136" "Nothing to report"
Funding Information:
This work was partially funded through research project FIS06/0841 from the Health Research Fund. Conflict of interest not reported
Funding Information:
• "... the Swedish Cancer Society, the Swedish Research Council, the Knut and Alice Wallenberg Foun-dation, Karolinska Institutet, Stockholm, the Lion’s Cancer Research Foundation, Uppsala, the Marcus Borgström Foundation and Selander’s Foundation, Uppsala; H2020 “AEGLE, An analytics framework for integrated and personalized healthcare services in Europe” by the EU; H2020 “MEDGENET, Med-ical Genomics and Epigenomics Network” (No.692298) by the EU; H2020 “CLLassify, Innovative risk assessment for individualizing treatment in chronic lymphocytic leukemia” (No.702714) by the EU; Associazione Italiana per la Ricerca sul Cancro AIRC Investigator grants #20246, and Special Program Molecular Clinical Oncology AIRC 5 per mille #9965; Progetti di Rilevante Interesse Nazionale (PRIN) #2015ZMRFEA, MIUR, Rome,Italy; TRANSCAN-179 NOVEL JTC 2016; project CEITEC 2020 (LQ1601) by MEYS-CZ, project AZV-MH-CZ 15-30015A-4/2015; JCS was funded by Bloodwise (11052, 12036), the Kay Kendall Leukaemia Fund (873), Cancer Research UK (C34999/A18087, ECMC C24563/A15581), Wessex Medical Research and the Bournemouth Leukaemia Fund; Special Program Molecular Clinical Oncol-ogy 5 x 1000 No. 10007, Associazione Italiana per la Ricerca sul Cancro Foundation Milan, Italy; Prog-etto Ricerca Finaliz"
Funding Information:
• "N.P. received Travel Grants from Roche. T.D.S. received research grants from Genentech, Celgene, Glaxo-Smith-Kline, Cephalon, Hospira, and Polyphenon E International. B.E. is a consultant and/or holds an advisory role for Celgene and Pharmacyclics and has received honoraria and research fund-ing from Roche and Mundipharma. S.S. is a consultant and/or holds an advisory role for Roche and
Funding Information:
• "Ministry of Health of the Czech Republic, Grant No.: AZV 15-31834A/ 2015 and AZV 15-30015A/2015; Ministry of Education, Youth and Sports of the Czech Republic project NPUII - CEITEC 2020, Grant No.: LQ1601."
Funding Information:
• "This manuscript was written on behalf of the German CLL Study Group. Studies CLL1, CLL4, and CLL8 were planned and conducted as investigator-initiated trials by the German CLL Study Group and were supported by research grants from German Cancer Aid, Medac Schering Onkologie, and F. Hoff-mann-La Roche. T.D.S. is a clinical scholar of the Leukemia Lymphoma Society."
Funding Information:
Angela Aldin: My institution received a grant from the Federal Ministry of Education and Research, Germany to conduct this review.
Funding Information:
The research was supported by National Health Service (NHS) Blood and Transplant and the National Institute for Health Research (NIHR) Oxford Biomedical Research Centre (BRC). The views expressed are those of the author(s) and not necessarily those of the NHS, the NIHR or the Department of Health. We would like to thank Sarah Hodgkinson (Associate Editor, Cochrane Editorial and Methods Department), Helen Wakeford and Clare Dooley (Managing Editors, Cochrane Editorial and Methods Department), and Anne Lethaby (Copy Editor, Copy Edit Support) for their assistance regarding the review. We would also like to thank Robin Featherstone (Information Specialist, Cochrane Editorial and Methods Department) for suggestions to improve our search strategy. We also thank Alexandra McAleenan (Methods), Lucinda Archer (Methods), Sherry Reisner (Health Writer), Dr Stefano Molica (Department of Hematology-Oncology, Azienda Ospedaliera Pugliese-Ciaccio, Catanzaro, Italy), Dr Mary Ann Anderson (Clinical Haematology Department of The Royal Melbourne Hospital and Peter MacCallum Cancer Centre; Blood Cells and Blood Cancer Division of the Walter and Eliza Hall Institute, Melbourne, Australia) and Dr SG Agrawal (Senior Lecturer and Honorary Consultant, Division of Haemato-Oncology, St Bartholomew's Hospital, Barts Health NHS Trust; and Centre for Immunobiology, Blizard Institute, Queen Mary, University of London) for their valuable peer review. We would like to thank Thomas Debray from the Cochrane Prognosis Methods group for statistical advice and Natali Pflug for clinical advice. We would like to thank Yuan Chi (Centre for Evidence-Based Chinese Medicine, Beijing University of Chinese Medicine) for the translation of a Chinese publication (CLL-IPI V - Zhu 2018 (Chinese cohort)) and Leonardo Perales-Guerrero (medical student, Universidad de Guadalajara, Mexico) for the translation of a Spanish publication (GIMEMA V - González Rodríguez 2009 (Cabueñes coh.)). We thank all principal investigators who have replied to our inquiries and/or provided us with further information or data concerning their publications. Their help enabled us to include as many studies as possible in analysis. We want to thank Massimo Gentile, Caspar da Cunha-Bang, Carolina Muñoz-Novas, Lata Rani, Gian Matteo Rigolin, Huayuan Zhu, Julio Delgado, Sanja Trajkova, Natali Pflug, Jasmin Bahlo, Pietro Bulian, and Neil E Kay.
Funding Information:
• "Contract grant sponsor: NIH; Contract grant number: 1R01CA197120-01."; "Contract grant sponsors: AIRC (the Italian Association for Cancer Research), a non-profit organization to FM. “Special Program Molecular Clinical Oncology - 5 per mille” n. 9980, 2010/15 and AIRC “Innovative immunotherapeutic treatments of human cancer” n.16695, 2015/18." (Molica 2016)
Funding Information:
The research was supported by National Health Service (NHS) Blood and Transplant and the National Institute for Health Research (NIHR) Oxford Biomedical Research Centre (BRC). The views expressed are those of the author(s) and not necessarily those of the NHS, the NIHR or the Department of Health.
Funding Information:
holds an advisory role for Celgene and Pharmacyclics and has received honoraria and research funding from Roche and Mundipharma. S.S. is a consultant and/or holds an advisory role for Roche and Mundipharma, and received honoraria and research funding from both. H.D. received research grants from Roche. U.J. received honoraria and research funding from Roche. M.H. is a consultant and/or holds an advisory role and received research funding from Roche. J.B., M.A.B., T.E., K.B., G.M., K.G.R., M.J.E., G.H., R.B., A.-M.F., C.-M.W., K.F., and N.E.K. declare no competing financial interests."
Funding Information:
• "This study was supported by the Associazione Italiana per la Ricerca sul Cancro Foundation, Special Program Molecular Clinical Oncology, 5 1000, number 10007, Milan, Italy (to G.G. and to R.F.); Prog-etto Futuro in Ricerca 2008 (to D.R.); Programmi di Ricerca di Rilevante Interesse Nazionale (PRIN) 2008 (to G.G.and R.M.); PRIN 2009 (to D.R.); Progetto Futuro in Ricerca 2012 (to D.R.); Ministero del-l’Istruzione, dell’Universita` e della Ricerca, Rome, Italy; Progetto Giovani Ricercatori 2008 (to D.R.); Progetto Giovani Ricercatori 2010 (to D.R.); Ricerca Sanitaria Finalizzata 2008 (to G.G.); Ministero del-la Salute, Rome, Italy; Novara-AIL Onlus Foundation, Novara, Italy (to G.G. and D.R.); Compagnia di San Paolo, Turin, Italy (to R.F.); Helmut Horten Foundation and San Salvatore Foundation, Lugano, Switzerland (to F.B.); Nelia et Amadeo Barletta Foundation, Lausanne (to F.B.); National Institutes of Health grant PO1-CA092625 (to R.D.-F.); and a Specialized Center of Research grant from the Leukemia and Lymphoma Society (to R.D.-F.). S.M. and S.C. are supported by fellowships from the Novara-AIL Onlus Foundation, Novara, Italy. L.P. is on leave from the University of Perugia Medical School."
Funding Information:
• "The financial support was provided by the Department of Biotechnology (BT/PR11106/ GBD/27/145/2008, BT/PR15438/MED/30/606/2011 and T/PR8680/AGR/36/754/2013), Ministry of Science and Technology, GOI, and All India Institute of Medical Sciences, New Delhi (8-60/A060/ 2011/ RS) to RG for carrying out this work." • "The authors declare that they have no conflict of interest."
Funding Information:
• "Red Tematica de Investigacion Cooperativa en Cancer RT, Grant No.: 06/0020/002051 and RD12/0036/0023; Instituto de Salud Carlos III (ISCIII), Grant No.: FISS PI080304; ICGC-CLL Genome Project, Generalitat de Catalunya, Grant No.: 2009SGR1008; “Emili Letang” (T.B.)." • "The authors declare no conflict of interest."
Funding Information:
Funding not reported "S.A.P. received funding from Pharmacyclics. All other authors have no conflict of interest to disclose."
Funding Information:
• "Contract grant sponsor: NIH; Contract grant no.: 1R01CA197120-01."; "Contract grant sponsors: AIRC (the Italian Association for Cancer Research), a non-profit organization to FM. “Special Program Mole-cular Clinical Oncology - 5 per mille” n. 9980, 2010/15 and AIRC “Innovative immunotherapeutic treat-ments of human cancer” n.16695, 2015/18."
Publisher Copyright:
Copyright © 2020 The Cochrane Collaboration. Published by John Wiley & Sons, Ltd.
PY - 2020/7/31
Y1 - 2020/7/31
N2 - BACKGROUND: Chronic lymphocytic leukaemia (CLL) is the most common cancer of the lymphatic system in Western countries. Several clinical and biological factors for CLL have been identified. However, it remains unclear which of the available prognostic models combining those factors can be used in clinical practice to predict long-term outcome in people newly-diagnosed with CLL.OBJECTIVES: To identify, describe and appraise all prognostic models developed to predict overall survival (OS), progression-free survival (PFS) or treatment-free survival (TFS) in newly-diagnosed (previously untreated) adults with CLL, and meta-analyse their predictive performances.SEARCH METHODS: We searched MEDLINE (from January 1950 to June 2019 via Ovid), Embase (from 1974 to June 2019) and registries of ongoing trials (to 5 March 2020) for development and validation studies of prognostic models for untreated adults with CLL. In addition, we screened the reference lists and citation indices of included studies.SELECTION CRITERIA: We included all prognostic models developed for CLL which predict OS, PFS, or TFS, provided they combined prognostic factors known before treatment initiation, and any studies that tested the performance of these models in individuals other than the ones included in model development (i.e. 'external model validation studies'). We included studies of adults with confirmed B-cell CLL who had not received treatment prior to the start of the study. We did not restrict the search based on study design.DATA COLLECTION AND ANALYSIS: We developed a data extraction form to collect information based on the Checklist for Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies (CHARMS). Independent pairs of review authors screened references, extracted data and assessed risk of bias according to the Prediction model Risk Of Bias ASsessment Tool (PROBAST). For models that were externally validated at least three times, we aimed to perform a quantitative meta-analysis of their predictive performance, notably their calibration (proportion of people predicted to experience the outcome who do so) and discrimination (ability to differentiate between people with and without the event) using a random-effects model. When a model categorised individuals into risk categories, we pooled outcome frequencies per risk group (low, intermediate, high and very high). We did not apply GRADE as guidance is not yet available for reviews of prognostic models.MAIN RESULTS: From 52 eligible studies, we identified 12 externally validated models: six were developed for OS, one for PFS and five for TFS. In general, reporting of the studies was poor, especially predictive performance measures for calibration and discrimination; but also basic information, such as eligibility criteria and the recruitment period of participants was often missing. We rated almost all studies at high or unclear risk of bias according to PROBAST. Overall, the applicability of the models and their validation studies was low or unclear; the most common reasons were inappropriate handling of missing data and serious reporting deficiencies concerning eligibility criteria, recruitment period, observation time and prediction performance measures. We report the results for three models predicting OS, which had available data from more than three external validation studies: CLL International Prognostic Index (CLL-IPI) This score includes five prognostic factors: age, clinical stage, IgHV mutational status, B2-microglobulin and TP53 status. Calibration: for the low-, intermediate- and high-risk groups, the pooled five-year survival per risk group from validation studies corresponded to the frequencies observed in the model development study. In the very high-risk group, predicted survival from CLL-IPI was lower than observed from external validation studies. Discrimination: the pooled c-statistic of seven external validation studies (3307 participants, 917 events) was 0.72 (95% confidence interval (CI) 0.67 to 0.77). The 95% prediction interval (PI) of this model for the c-statistic, which describes the expected interval for the model's discriminative ability in a new external validation study, ranged from 0.59 to 0.83. Barcelona-Brno score Aimed at simplifying the CLL-IPI, this score includes three prognostic factors: IgHV mutational status, del(17p) and del(11q). Calibration: for the low- and intermediate-risk group, the pooled survival per risk group corresponded to the frequencies observed in the model development study, although the score seems to overestimate survival for the high-risk group. Discrimination: the pooled c-statistic of four external validation studies (1755 participants, 416 events) was 0.64 (95% CI 0.60 to 0.67); 95% PI 0.59 to 0.68. MDACC 2007 index score The authors presented two versions of this model including six prognostic factors to predict OS: age, B2-microglobulin, absolute lymphocyte count, gender, clinical stage and number of nodal groups. Only one validation study was available for the more comprehensive version of the model, a formula with a nomogram, while seven studies (5127 participants, 994 events) validated the simplified version of the model, the index score. Calibration: for the low- and intermediate-risk groups, the pooled survival per risk group corresponded to the frequencies observed in the model development study, although the score seems to overestimate survival for the high-risk group. Discrimination: the pooled c-statistic of the seven external validation studies for the index score was 0.65 (95% CI 0.60 to 0.70); 95% PI 0.51 to 0.77.AUTHORS' CONCLUSIONS: Despite the large number of published studies of prognostic models for OS, PFS or TFS for newly-diagnosed, untreated adults with CLL, only a minority of these (N = 12) have been externally validated for their respective primary outcome. Three models have undergone sufficient external validation to enable meta-analysis of the model's ability to predict survival outcomes. Lack of reporting prevented us from summarising calibration as recommended. Of the three models, the CLL-IPI shows the best discrimination, despite overestimation. However, performance of the models may change for individuals with CLL who receive improved treatment options, as the models included in this review were tested mostly on retrospective cohorts receiving a traditional treatment regimen. In conclusion, this review shows a clear need to improve the conducting and reporting of both prognostic model development and external validation studies. For prognostic models to be used as tools in clinical practice, the development of the models (and their subsequent validation studies) should adapt to include the latest therapy options to accurately predict performance. Adaptations should be timely.
AB - BACKGROUND: Chronic lymphocytic leukaemia (CLL) is the most common cancer of the lymphatic system in Western countries. Several clinical and biological factors for CLL have been identified. However, it remains unclear which of the available prognostic models combining those factors can be used in clinical practice to predict long-term outcome in people newly-diagnosed with CLL.OBJECTIVES: To identify, describe and appraise all prognostic models developed to predict overall survival (OS), progression-free survival (PFS) or treatment-free survival (TFS) in newly-diagnosed (previously untreated) adults with CLL, and meta-analyse their predictive performances.SEARCH METHODS: We searched MEDLINE (from January 1950 to June 2019 via Ovid), Embase (from 1974 to June 2019) and registries of ongoing trials (to 5 March 2020) for development and validation studies of prognostic models for untreated adults with CLL. In addition, we screened the reference lists and citation indices of included studies.SELECTION CRITERIA: We included all prognostic models developed for CLL which predict OS, PFS, or TFS, provided they combined prognostic factors known before treatment initiation, and any studies that tested the performance of these models in individuals other than the ones included in model development (i.e. 'external model validation studies'). We included studies of adults with confirmed B-cell CLL who had not received treatment prior to the start of the study. We did not restrict the search based on study design.DATA COLLECTION AND ANALYSIS: We developed a data extraction form to collect information based on the Checklist for Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies (CHARMS). Independent pairs of review authors screened references, extracted data and assessed risk of bias according to the Prediction model Risk Of Bias ASsessment Tool (PROBAST). For models that were externally validated at least three times, we aimed to perform a quantitative meta-analysis of their predictive performance, notably their calibration (proportion of people predicted to experience the outcome who do so) and discrimination (ability to differentiate between people with and without the event) using a random-effects model. When a model categorised individuals into risk categories, we pooled outcome frequencies per risk group (low, intermediate, high and very high). We did not apply GRADE as guidance is not yet available for reviews of prognostic models.MAIN RESULTS: From 52 eligible studies, we identified 12 externally validated models: six were developed for OS, one for PFS and five for TFS. In general, reporting of the studies was poor, especially predictive performance measures for calibration and discrimination; but also basic information, such as eligibility criteria and the recruitment period of participants was often missing. We rated almost all studies at high or unclear risk of bias according to PROBAST. Overall, the applicability of the models and their validation studies was low or unclear; the most common reasons were inappropriate handling of missing data and serious reporting deficiencies concerning eligibility criteria, recruitment period, observation time and prediction performance measures. We report the results for three models predicting OS, which had available data from more than three external validation studies: CLL International Prognostic Index (CLL-IPI) This score includes five prognostic factors: age, clinical stage, IgHV mutational status, B2-microglobulin and TP53 status. Calibration: for the low-, intermediate- and high-risk groups, the pooled five-year survival per risk group from validation studies corresponded to the frequencies observed in the model development study. In the very high-risk group, predicted survival from CLL-IPI was lower than observed from external validation studies. Discrimination: the pooled c-statistic of seven external validation studies (3307 participants, 917 events) was 0.72 (95% confidence interval (CI) 0.67 to 0.77). The 95% prediction interval (PI) of this model for the c-statistic, which describes the expected interval for the model's discriminative ability in a new external validation study, ranged from 0.59 to 0.83. Barcelona-Brno score Aimed at simplifying the CLL-IPI, this score includes three prognostic factors: IgHV mutational status, del(17p) and del(11q). Calibration: for the low- and intermediate-risk group, the pooled survival per risk group corresponded to the frequencies observed in the model development study, although the score seems to overestimate survival for the high-risk group. Discrimination: the pooled c-statistic of four external validation studies (1755 participants, 416 events) was 0.64 (95% CI 0.60 to 0.67); 95% PI 0.59 to 0.68. MDACC 2007 index score The authors presented two versions of this model including six prognostic factors to predict OS: age, B2-microglobulin, absolute lymphocyte count, gender, clinical stage and number of nodal groups. Only one validation study was available for the more comprehensive version of the model, a formula with a nomogram, while seven studies (5127 participants, 994 events) validated the simplified version of the model, the index score. Calibration: for the low- and intermediate-risk groups, the pooled survival per risk group corresponded to the frequencies observed in the model development study, although the score seems to overestimate survival for the high-risk group. Discrimination: the pooled c-statistic of the seven external validation studies for the index score was 0.65 (95% CI 0.60 to 0.70); 95% PI 0.51 to 0.77.AUTHORS' CONCLUSIONS: Despite the large number of published studies of prognostic models for OS, PFS or TFS for newly-diagnosed, untreated adults with CLL, only a minority of these (N = 12) have been externally validated for their respective primary outcome. Three models have undergone sufficient external validation to enable meta-analysis of the model's ability to predict survival outcomes. Lack of reporting prevented us from summarising calibration as recommended. Of the three models, the CLL-IPI shows the best discrimination, despite overestimation. However, performance of the models may change for individuals with CLL who receive improved treatment options, as the models included in this review were tested mostly on retrospective cohorts receiving a traditional treatment regimen. In conclusion, this review shows a clear need to improve the conducting and reporting of both prognostic model development and external validation studies. For prognostic models to be used as tools in clinical practice, the development of the models (and their subsequent validation studies) should adapt to include the latest therapy options to accurately predict performance. Adaptations should be timely.
UR - http://www.scopus.com/inward/record.url?scp=85088885599&partnerID=8YFLogxK
U2 - 10.1002/14651858.CD012022.pub2
DO - 10.1002/14651858.CD012022.pub2
M3 - Review article
C2 - 32735048
SN - 1469-493X
VL - 2020
JO - The Cochrane database of systematic reviews
JF - The Cochrane database of systematic reviews
IS - 7
M1 - CD012022
ER -