{"title":"危重病人的死亡率不因输血策略而异","authors":"F. Sanfilippo, L. La Via, P. Murabito, M. Astuto","doi":"10.1159/000520476","DOIUrl":null,"url":null,"abstract":"Dear Editor, We read with great interest the meta-analysis by Zhang et al. [1] comparing the effects of two transfusion strategies in critically ill patients. The authors conclude that the restrictive transfusion strategy potentially reduced in-hospital mortality in critically ill adults as compared with a more liberal strategy. Unfortunately, we have several concerns in regard to this study and its results. First of all, as per the inclusion criteria stated by the authors, the meta-analysis focused on trials reporting mortality in critically ill adults receiving restrictive or liberal red-cell transfusion. The authors decided to include only critically ill patients with hemoglobin concentrations of 90 g/L or less on admission. Considering such criteria, we note that they missed the study by Mazza et al. [2] conducted in septic shock patients; conversely, they included the study by Mazer et al. [3] where the authors included patients with baseline values of hemoglobin over 130 g/L. Nonetheless, mild errors in inclusion of studies may happen [4], and our colleagues did a very hard work when screening studies from a huge literature search. Importantly, by strictly limiting the inclusion of studies according to the hemoglobin levels on admission, at least five important trials conducted in a cardiac surgery population [5–7] and in patients with traumatic brain injury [8, 9] were excluded by the meta-analysis. A second consideration that warrants further caution when interpreting the results of the meta-analysis [1] is the authors’ choice to perform a meta-analysis with a fixedeffects model, which assumes that the “true effect” is the same across studies. However, it is unlikely that all included studies have an identical or similar “true effect” due to the clinical heterogeneity of the included populations, ranging from all the critically ill patients admitted to intensive care to a more specific population (septic shock or patients undergoing cardiac surgery). More importantly, the fixed-effects model should not be used when there is statistical heterogeneity (I2) as in most of the forest plots of the meta-analysis by Zhang et al. [1]. In such cases, it is strongly advisable to use a randomeffects model, which better balances the weights of the included studies [10]. A third concern regards the authors’ decision to separate the analyses on the outcome of mortality into several endpoints. This resulted in 7 forest plots on the same outcome (mortality), but most of them included a very low number of studies (1–3 studies). For instance, the conclusion on a reduction of in-hospital mortality with a restrictive strategy seems rather hazardous as it is based on 2 studies only. With such a low number of included studies, it is difficult to interpret also the robustness of the results, considering that a trial sequential analysis has not been carried out [11]. In order to correct for all the above-mentioned concerns, we provide a forest plot including the 6 missed studies with an analysis performed according to the random-effects model. We used the longest follow-up mortality provided by the studies, rather than dispersing the","PeriodicalId":23252,"journal":{"name":"Transfusion Medicine and Hemotherapy","volume":"49 1","pages":"62 - 64"},"PeriodicalIF":1.9000,"publicationDate":"2021-11-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Mortality in Critically Ill Patients Does Not Differ according to Transfusion Strategy\",\"authors\":\"F. Sanfilippo, L. La Via, P. Murabito, M. Astuto\",\"doi\":\"10.1159/000520476\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Dear Editor, We read with great interest the meta-analysis by Zhang et al. [1] comparing the effects of two transfusion strategies in critically ill patients. The authors conclude that the restrictive transfusion strategy potentially reduced in-hospital mortality in critically ill adults as compared with a more liberal strategy. Unfortunately, we have several concerns in regard to this study and its results. First of all, as per the inclusion criteria stated by the authors, the meta-analysis focused on trials reporting mortality in critically ill adults receiving restrictive or liberal red-cell transfusion. The authors decided to include only critically ill patients with hemoglobin concentrations of 90 g/L or less on admission. Considering such criteria, we note that they missed the study by Mazza et al. [2] conducted in septic shock patients; conversely, they included the study by Mazer et al. [3] where the authors included patients with baseline values of hemoglobin over 130 g/L. Nonetheless, mild errors in inclusion of studies may happen [4], and our colleagues did a very hard work when screening studies from a huge literature search. Importantly, by strictly limiting the inclusion of studies according to the hemoglobin levels on admission, at least five important trials conducted in a cardiac surgery population [5–7] and in patients with traumatic brain injury [8, 9] were excluded by the meta-analysis. A second consideration that warrants further caution when interpreting the results of the meta-analysis [1] is the authors’ choice to perform a meta-analysis with a fixedeffects model, which assumes that the “true effect” is the same across studies. However, it is unlikely that all included studies have an identical or similar “true effect” due to the clinical heterogeneity of the included populations, ranging from all the critically ill patients admitted to intensive care to a more specific population (septic shock or patients undergoing cardiac surgery). More importantly, the fixed-effects model should not be used when there is statistical heterogeneity (I2) as in most of the forest plots of the meta-analysis by Zhang et al. [1]. In such cases, it is strongly advisable to use a randomeffects model, which better balances the weights of the included studies [10]. A third concern regards the authors’ decision to separate the analyses on the outcome of mortality into several endpoints. This resulted in 7 forest plots on the same outcome (mortality), but most of them included a very low number of studies (1–3 studies). For instance, the conclusion on a reduction of in-hospital mortality with a restrictive strategy seems rather hazardous as it is based on 2 studies only. With such a low number of included studies, it is difficult to interpret also the robustness of the results, considering that a trial sequential analysis has not been carried out [11]. In order to correct for all the above-mentioned concerns, we provide a forest plot including the 6 missed studies with an analysis performed according to the random-effects model. We used the longest follow-up mortality provided by the studies, rather than dispersing the\",\"PeriodicalId\":23252,\"journal\":{\"name\":\"Transfusion Medicine and Hemotherapy\",\"volume\":\"49 1\",\"pages\":\"62 - 64\"},\"PeriodicalIF\":1.9000,\"publicationDate\":\"2021-11-12\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Transfusion Medicine and Hemotherapy\",\"FirstCategoryId\":\"3\",\"ListUrlMain\":\"https://doi.org/10.1159/000520476\",\"RegionNum\":4,\"RegionCategory\":\"医学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q3\",\"JCRName\":\"HEMATOLOGY\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Transfusion Medicine and Hemotherapy","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.1159/000520476","RegionNum":4,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"HEMATOLOGY","Score":null,"Total":0}
Mortality in Critically Ill Patients Does Not Differ according to Transfusion Strategy
Dear Editor, We read with great interest the meta-analysis by Zhang et al. [1] comparing the effects of two transfusion strategies in critically ill patients. The authors conclude that the restrictive transfusion strategy potentially reduced in-hospital mortality in critically ill adults as compared with a more liberal strategy. Unfortunately, we have several concerns in regard to this study and its results. First of all, as per the inclusion criteria stated by the authors, the meta-analysis focused on trials reporting mortality in critically ill adults receiving restrictive or liberal red-cell transfusion. The authors decided to include only critically ill patients with hemoglobin concentrations of 90 g/L or less on admission. Considering such criteria, we note that they missed the study by Mazza et al. [2] conducted in septic shock patients; conversely, they included the study by Mazer et al. [3] where the authors included patients with baseline values of hemoglobin over 130 g/L. Nonetheless, mild errors in inclusion of studies may happen [4], and our colleagues did a very hard work when screening studies from a huge literature search. Importantly, by strictly limiting the inclusion of studies according to the hemoglobin levels on admission, at least five important trials conducted in a cardiac surgery population [5–7] and in patients with traumatic brain injury [8, 9] were excluded by the meta-analysis. A second consideration that warrants further caution when interpreting the results of the meta-analysis [1] is the authors’ choice to perform a meta-analysis with a fixedeffects model, which assumes that the “true effect” is the same across studies. However, it is unlikely that all included studies have an identical or similar “true effect” due to the clinical heterogeneity of the included populations, ranging from all the critically ill patients admitted to intensive care to a more specific population (septic shock or patients undergoing cardiac surgery). More importantly, the fixed-effects model should not be used when there is statistical heterogeneity (I2) as in most of the forest plots of the meta-analysis by Zhang et al. [1]. In such cases, it is strongly advisable to use a randomeffects model, which better balances the weights of the included studies [10]. A third concern regards the authors’ decision to separate the analyses on the outcome of mortality into several endpoints. This resulted in 7 forest plots on the same outcome (mortality), but most of them included a very low number of studies (1–3 studies). For instance, the conclusion on a reduction of in-hospital mortality with a restrictive strategy seems rather hazardous as it is based on 2 studies only. With such a low number of included studies, it is difficult to interpret also the robustness of the results, considering that a trial sequential analysis has not been carried out [11]. In order to correct for all the above-mentioned concerns, we provide a forest plot including the 6 missed studies with an analysis performed according to the random-effects model. We used the longest follow-up mortality provided by the studies, rather than dispersing the
期刊介绍:
This journal is devoted to all areas of transfusion medicine. These include the quality and security of blood products, therapy with blood components and plasma derivatives, transfusion-related questions in transplantation, stem cell manipulation, therapeutic and diagnostic problems of homeostasis, immuno-hematological investigations, and legal aspects of the production of blood products as well as hemotherapy. Both comprehensive reviews and primary publications that detail the newest work in transfusion medicine and hemotherapy promote the international exchange of knowledge within these disciplines. Consistent with this goal, continuing clinical education is also specifically addressed.