Graduate Program in Mathematical, Computational and Systems Biology, University of California, Irvine, Irvine, United States.
Center for Complex Biological Systems, University of California, Irvine, Irvine, United States.
Elife. 2023 Apr 28;12:e84149. doi: 10.7554/eLife.84149.
Chronic myeloid leukemia (CML) is a blood cancer characterized by dysregulated production of maturing myeloid cells driven by the product of the Philadelphia chromosome, the BCR-ABL1 tyrosine kinase. Tyrosine kinase inhibitors (TKIs) have proved effective in treating CML, but there is still a cohort of patients who do not respond to TKI therapy even in the absence of mutations in the BCR-ABL1 kinase domain that mediate drug resistance. To discover novel strategies to improve TKI therapy in CML, we developed a nonlinear mathematical model of CML hematopoiesis that incorporates feedback control and lineage branching. Cell-cell interactions were constrained using an automated model selection method together with previous observations and new in vivo data from a chimeric transgenic mouse model of CML. The resulting quantitative model captures the dynamics of normal and CML cells at various stages of the disease and exhibits variable responses to TKI treatment, consistent with those of CML patients. The model predicts that an increase in the proportion of CML stem cells in the bone marrow would decrease the tendency of the disease to respond to TKI therapy, in concordance with clinical data and confirmed experimentally in mice. The model further suggests that, under our assumed similarities between normal and leukemic cells, a key predictor of refractory response to TKI treatment is an increased maximum probability of self-renewal of normal hematopoietic stem cells. We use these insights to develop a clinical prognostic criterion to predict the efficacy of TKI treatment and design strategies to improve treatment response. The model predicts that stimulating the differentiation of leukemic stem cells while applying TKI therapy can significantly improve treatment outcomes.
慢性髓性白血病(CML)是一种血液系统癌症,其特征是由费城染色体产物 BCR-ABL1 酪氨酸激酶驱动的成熟髓系细胞产生失调。酪氨酸激酶抑制剂(TKI)已被证明对治疗 CML 有效,但仍有一部分患者即使在不存在介导耐药性的 BCR-ABL1 激酶结构域突变的情况下,也对 TKI 治疗无反应。为了发现改善 CML 中 TKI 治疗的新策略,我们开发了一个包含反馈控制和谱系分支的 CML 造血的非线性数学模型。使用自动模型选择方法结合以前的观察结果和来自 CML 嵌合转基因小鼠模型的新体内数据来约束细胞间相互作用。所得定量模型捕捉了疾病各个阶段的正常和 CML 细胞的动态,并表现出对 TKI 治疗的可变反应,与 CML 患者的反应一致。该模型预测骨髓中 CML 干细胞比例的增加会降低疾病对 TKI 治疗的反应倾向,这与临床数据一致,并在小鼠中得到了实验证实。该模型进一步表明,在我们假设正常和白血病细胞之间存在相似性的情况下,对 TKI 治疗产生难治性反应的一个关键预测因子是正常造血干细胞自我更新的最大概率增加。我们利用这些见解来开发一种临床预后标准来预测 TKI 治疗的疗效,并设计改善治疗反应的策略。该模型预测,在应用 TKI 治疗的同时刺激白血病干细胞的分化可以显著改善治疗效果。