Frankhouser David E, Rockne Russell C, Uechi Lisa, Zhao Dandan, Branciamore Sergio, O'Meally Denis, Irizarry Jihyun, Ghoda Lucy, Ali Haris, Trent Jeffery M, Forman Stephen, Fu Yu-Hsuan, Kuo Ya-Huei, Zhang Bin, Marcucci Guido
Department of Computational and Quantitative Medicine, Beckman Research Institute, City of Hope National Medical Center, Duarte, California, 91010, USA.
Department of Hematologic Malignancies Translational Science, Beckman Research Institute and Division of Leukemia, City of Hope National Medical Center, Duarte, California, 91010, USA.
bioRxiv. 2023 Dec 9:2023.10.11.561908. doi: 10.1101/2023.10.11.561908.
Chronic myeloid leukemia (CML) is initiated and maintained by BCR::ABL which is clinically targeted using tyrosine kinase inhibitors (TKIs). TKIs can induce long-term remission but are also not curative. Thus, CML is an ideal system to test our hypothesis that transcriptome-based state-transition models accurately predict cancer evolution and treatment response. We collected time-sequential blood samples from tetracycline-off (Tet-Off) BCR::ABL-inducible transgenic mice and wild-type controls. From the transcriptome, we constructed a CML state-space and a three-well leukemogenic potential landscape. The potential's stable critical points defined observable disease states. Early states were characterized by anti-CML genes opposing leukemia; late states were characterized by pro-CML genes. Genes with expression patterns shaped similarly to the potential landscape were identified as drivers of disease transition. Re-introduction of tetracycline to silence the BCR::ABL gene returned diseased mice transcriptomes to a near healthy state, without reaching it, suggesting parts of the transition are irreversible. TKI only reverted the transcriptome to an intermediate disease state, without approaching a state of health; disease relapse occurred soon after treatment. Using only the earliest time-point as initial conditions, our state-transition models accurately predicted both disease progression and treatment response, supporting this as a potentially valuable approach to time clinical intervention even before phenotypic changes become detectable.
慢性髓性白血病(CML)由BCR::ABL引发并维持,临床上使用酪氨酸激酶抑制剂(TKIs)对其进行靶向治疗。TKIs可诱导长期缓解,但无法治愈。因此,CML是一个理想的系统,可用于检验我们的假设,即基于转录组的状态转换模型能够准确预测癌症的演变和治疗反应。我们从四环素关闭(Tet-Off)的BCR::ABL诱导型转基因小鼠和野生型对照中收集了时间序列血液样本。从转录组中,我们构建了一个CML状态空间和一个三阱白血病发生潜能景观。该潜能的稳定临界点定义了可观察到的疾病状态。早期状态的特征是存在对抗白血病的抗CML基因;晚期状态的特征是存在促CML基因。表达模式与潜能景观相似的基因被确定为疾病转变的驱动因素。重新引入四环素以沉默BCR::ABL基因可使患病小鼠的转录组恢复到接近健康的状态,但未完全达到,这表明部分转变是不可逆的。TKI仅将转录组恢复到中间疾病状态,未接近健康状态;治疗后不久疾病就复发了。仅使用最早的时间点作为初始条件,我们的状态转换模型就能准确预测疾病进展和治疗反应,这支持了即使在表型变化可检测到之前,这也是一种对临床干预时间可能有价值的方法。