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白细胞生成与急性髓系白血病变异的综合多谱系模型

An Integrative multi-lineage model of variation in leukopoiesis and acute myelogenous leukemia.

作者信息

Sarker Joyatee M, Pearce Serena M, Nelson Robert P, Kinzer-Ursem Tamara L, Umulis David M, Rundell Ann E

机构信息

Weldon School of Biomedical Engineering, Purdue University, 206 S. Martin Jischke Drive, West Lafayette, 47906, IN, USA.

Department of Medicine and Pediatrics, Divisions of Hematology/Oncology, Indiana University School of Medicine, 535 Barnhill Dr., Ste. 473, Indianapolis, 46202, IN, USA.

出版信息

BMC Syst Biol. 2017 Aug 25;11(1):78. doi: 10.1186/s12918-017-0469-2.

Abstract

BACKGROUND

Acute myelogenous leukemia (AML) progresses uniquely in each patient. However, patients are typically treated with the same types of chemotherapy, despite biological differences that lead to differential responses to treatment.

RESULTS

Here we present a multi-lineage multi-compartment model of the hematopoietic system that captures patient-to-patient variation in both the concentration and rates of change of hematopoietic cell populations. By constraining the model against clinical hematopoietic cell recovery data derived from patients who have received induction chemotherapy, we identified trends for parameters that must be met by the model; for example, the mitosis rates and the probability of self-renewal of progenitor cells are inversely related. Within the data-consistent models, we found 22,796 parameter sets that meet chemotherapy response criteria. Simulations of these parameter sets display diverse dynamics in the cell populations. To identify large trends in these model outputs, we clustered the simulated cell population dynamics using k-means clustering and identified thirteen 'representative patient' dynamics. In each of these patient clusters, we simulated AML and found that clusters with the greatest mitotic capacity experience clinical cancer outcomes more likely to lead to shorter survival times. Conversely, other parameters, including lower death rates or mobilization rates, did not correlate with survival times.

CONCLUSIONS

Using the multi-lineage model of hematopoiesis, we have identified several key features that determine leukocyte homeostasis, including self-renewal probabilities and mitosis rates, but not mobilization rates. Other influential parameters that regulate AML model behavior are responses to cytokines/growth factors produced in peripheral blood that target the probability of self-renewal of neutrophil progenitors. Finally, our model predicts that the mitosis rate of cancer is the most predictive parameter for survival time, followed closely by parameters that affect the self-renewal of cancer stem cells; most current therapies target mitosis rate, but based on our results, we propose that additional therapeutic targeting of self-renewal of cancer stem cells will lead to even higher survival rates.

摘要

背景

急性髓系白血病(AML)在每位患者中的进展具有独特性。然而,尽管存在导致对治疗产生不同反应的生物学差异,但患者通常接受相同类型的化疗。

结果

在此,我们提出了一种造血系统的多谱系多隔室模型,该模型能够捕捉造血细胞群体浓度和变化率方面的患者间差异。通过将该模型与来自接受诱导化疗患者的临床造血细胞恢复数据进行拟合,我们确定了模型必须满足的参数趋势;例如,祖细胞的有丝分裂率和自我更新概率呈负相关。在与数据一致的模型中,我们发现了22796个符合化疗反应标准的参数集。对这些参数集的模拟显示细胞群体具有多样的动态变化。为了识别这些模型输出中的大趋势,我们使用k均值聚类对模拟的细胞群体动态进行聚类,并确定了13种“代表性患者”动态。在这些患者聚类中的每一个中,我们模拟了AML,发现有丝分裂能力最强的聚类经历的临床癌症结局更有可能导致较短的生存时间。相反,其他参数,包括较低的死亡率或动员率,与生存时间无关。

结论

使用造血的多谱系模型,我们确定了几个决定白细胞稳态的关键特征,包括自我更新概率和有丝分裂率,但不包括动员率。调节AML模型行为的其他有影响的参数是对外周血中产生的细胞因子/生长因子的反应,这些细胞因子/生长因子针对中性粒细胞祖细胞的自我更新概率。最后,我们的模型预测癌症的有丝分裂率是生存时间最具预测性的参数,其次是影响癌症干细胞自我更新的参数;目前大多数疗法针对有丝分裂率,但基于我们的结果,我们提出对癌症干细胞自我更新进行额外的治疗靶向将导致更高的生存率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/05b9/5574150/630f5751c16c/12918_2017_469_Fig1_HTML.jpg

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