Hanin Leonid, Pavlova Lyudmila
Department of Mathematics and Statistics, Idaho State University, 921 S. 8th Avenue, Stop 8085, Pocatello, ID 83209-8085, USA.
Department of Applied Mathematics, St. Petersburg Polytechnical University, Polytechnicheskaya ul. 29, 195251 St. Petersburg, Russia.
J Theor Biol. 2016 Apr 7;394:172-181. doi: 10.1016/j.jtbi.2016.01.014. Epub 2016 Jan 19.
Metastatic relapse is the principal source of breast cancer mortality. This work seeks to uncover unobservable, yet clinically important, aspects of post-surgery metastatic relapse of breast cancer and to quantify effects of surgery on metastatic progression.
We classified metastases into three categories: (1) solitary cancer cells that were formed before or during surgery and either circulate in blood or are lodged at various secondary sites; (2) dormant or slowly growing avascular metastases; and (3) vascular secondary tumors. We developed a general mathematical model aimed at describing post-surgery dynamics of these three metastatic states. One parametric version of the model assumed that sojourn times of metastases in the three states are exponentially distributed while another was based on Erlang distribution. Model parameters were estimated from a sample of metastatic relapse or censoring times for 673 breast cancer patients treated with surgery.
We estimated the expected number of metastases at surgery and mean sojourn times for the three states and found that both are decreasing with state number. We also computed the probability that metastatic relapse resulted from a metastasis in a given state at surgery. The values of these attribution probabilities suggest that under the Erlang model all three states have a considerable effect on metastatic relapse while in the case of exponential model this is true for states 1 and 2 only.
(1) In some patients metastasis occurred before surgery; (2) our results confirm significance of metastatic dormancy; (3) according to the model surgery stimulates escape from dormancy, promotes angiogenesis and accelerates metastatic growth in a fraction of breast cancer patients. Taken summarily, these findings call into question the benefits of primary tumor resection for certain categories of breast cancer patients.
转移性复发是乳腺癌死亡的主要原因。这项工作旨在揭示乳腺癌术后转移性复发中难以观察但具有临床重要性的方面,并量化手术对转移进展的影响。
我们将转移分为三类:(1)在手术前或手术期间形成的单个癌细胞,它们要么在血液中循环,要么滞留在各个继发部位;(2)休眠或生长缓慢的无血管转移灶;(3)血管性继发肿瘤。我们开发了一个通用的数学模型,旨在描述这三种转移状态的术后动态。该模型的一个参数版本假设转移在这三种状态下的停留时间呈指数分布,而另一个版本则基于埃尔朗分布。模型参数是根据673例接受手术治疗的乳腺癌患者的转移复发或审查时间样本估计的。
我们估计了手术时转移灶的预期数量以及这三种状态的平均停留时间,发现两者均随状态编号的增加而减少。我们还计算了转移性复发由手术时处于给定状态的转移灶导致的概率。这些归因概率的值表明,在埃尔朗模型下,所有三种状态对转移性复发都有相当大的影响,而在指数模型的情况下,只有状态1和2是这样。
(1)在一些患者中,转移在手术前就已发生;(2)我们的结果证实了转移休眠的重要性;(3)根据模型,手术会刺激部分乳腺癌患者从休眠中逃脱、促进血管生成并加速转移生长。总的来说,这些发现对某些类型乳腺癌患者进行原发肿瘤切除的益处提出了质疑。