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Development of a risk grading system to identify patients with acute promyelocytic leukemia at high risk of early death

机译:开发一种风险分级系统,以识别具有高早期死亡风险的急性早幼粒细胞白血病患者

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Background: Early death (ED) rate in acute promyelocytic leukemia (APL) remains high. Some studies have identified prognostic factors capable of predicting ED, whereas no risk rating system for ED has been reported in the literature. In this study, a risk classification system was built to identify subgroup at high risk of ED among patients with APL. Methods: Totally, 364 consecutive APL patients who received arsenic trioxide as induction therapy were included. Ten baseline clinical characteristics were selected for analysis, and they were de novo/relapse, age, sex, white blood cell count, platelet count, serum fibrinogen, creatinine, uric acid, aspartate aminotransferase, and albumin. Using a training cohort (N=275), a multivariable logistic regression model was constructed, which was internally validated by the bootstrap method and externally validated using an independent cohort (N=89). Based on the model, a risk classification system was designed. Then, all patients were regrouped into de novo (N=285) and relapse (N=79) cohorts and the model and risk classification system were applied to both cohorts. Results: The constructed model included 8 variables without platelet count and sex. The model had excellent discriminatory ability (optimism-corrected area under the receiver operator characteristic curve=0.816±0.028 in the training cohort and area under the receiver operator characteristic curve=0.798 in the independent cohort) and fit well for both the training and independent data sets (Hosmer–Lemeshow test, P =0.718 and 0.25, respectively). The optimism-corrected calibration slope was 0.817±0.12. The risk classification system could identify a subgroup comprising ~25% of patients at high risk of ED in both the training and independent cohorts (OR=0.140, P 0.001 and OR=0.224, P =0.027, respectively). The risk classification system could effectively identify patient subgroups at high risk of ED in not only de novo but also relapse cohorts (OR=0.233, P 0.001 and OR=0.105, P =0.001, respectively). Conclusion: All the results highlight the high practical value of the risk classification system.
机译:背景:急性早幼粒细胞白血病(APL)的早期死亡(ED)率仍然很高。一些研究已经确定了能够预测ED的预后因素,而文献中还没有关于ED的风险评估系统的报道。在这项研究中,建立了风险分类系统以识别APL患者中高ED危险的亚组。方法:总共包括364例接受三氧化二砷作为诱导疗法的连续APL患者。选择十项基线临床特征进行分析,分别为从头/复发,年龄,性别,白细胞计数,血小板计数,血清纤维蛋白原,肌酐,尿酸,天冬氨酸转氨酶和白蛋白。使用训练队列(N = 275),构建了多变量逻辑回归模型,该模型通过自举方法进行内部验证,并使用独立队列进行外部验证(N = 89)。基于该模型,设计了风险分类系统。然后,将所有患者重新分组(N = 285)和复发(N = 79)队列,并将模型和风险分类系统应用于这两个队列。结果:构建的模型包括8个变量,无血小板计数和性别。该模型具有出色的判别能力(训练群组中接收者操作者特征曲线下方的校正校正区域= 0.816±0.028,独立群组中接收者操作者特征曲线下方的区域校正= 0.798)并且非常适合训练和独立数据设置(Hosmer–Lemeshow检验,分别为P = 0.718和0.25)。乐观校正后的校准斜率为0.817±0.12。风险分类系统可以在训练和独立队列中分别确定约25%的ED高危患者的亚组(分别为OR = 0.140,P <0.001和OR = 0.224,P = 0.027)。风险分类系统不仅可以有效地识别从头开始的人群,而且可以有效地识别高危人群,包括复发人群(分别为OR = 0.233,P <0.001和OR = 0.105,P = 0.001)。结论:所有结果都表明该风险分类系统具有很高的实用价值。

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