Biomarkers or biotargets? Using competition to lure cancer cells into evolutionary traps.

IF 3.3 3区 医学 Q2 EVOLUTIONARY BIOLOGY
Anuraag Bukkuri, Frederick R Adler
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引用次数: 0

Abstract

Background and objectives: Cancer biomarkers provide information on the characteristics and extent of cancer progression and help inform clinical decision-making. However, they can also play functional roles in oncogenesis, from enabling metastases and inducing angiogenesis to promoting resistance to chemotherapy. The resulting evolution could bias estimates of cancer progression and lead to suboptimal treatment decisions.

Methodology: We create an evolutionary game theoretic model of cell-cell competition among cancer cells with different levels of biomarker production. We design and simulate therapies on top of this pre-existing game and examine population and biomarker dynamics.

Results: Using total biomarker as a proxy for population size generally underestimates chemotherapy efficacy and overestimates targeted therapy efficacy. If biomarker production promotes resistance and a targeted therapy against the biomarker exists, this dynamic can be used to set an evolutionary trap. After chemotherapy selects for a high biomarker-producing cancer cell population, targeted therapy could be highly effective for cancer extinction. Rather than using the most effective therapy given the cancer's current biomarker level and population size, it is more effective to 'overshoot' and utilize an evolutionary trap when the aim is extinction. Increasing cell-cell competition, as influenced by biomarker levels, can help prime and set these traps.

Conclusion and implications: Evolution of functional biomarkers amplify the limitations of using total biomarker levels as a measure of tumor size when designing therapeutic protocols. Evolutionarily enlightened therapeutic strategies may be highly effective, assuming a targeted therapy against the biomarker is available.

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生物标志物还是生物靶标?利用竞争引诱癌细胞进入进化陷阱。
背景和目的:癌症生物标志物提供有关癌症进展的特征和程度的信息,并有助于为临床决策提供信息。然而,它们也可以在肿瘤发生中发挥功能作用,从促进转移和诱导血管生成到促进对化疗的抵抗。由此产生的进化可能会对癌症进展的估计产生偏差,并导致次优的治疗决策。方法:我们创建了一个进化博弈论模型,在不同水平的生物标志物生产的癌细胞之间的细胞竞争。我们在这个预先存在的游戏之上设计和模拟治疗方法,并检查人口和生物标志物动态。结果:使用总生物标志物作为群体规模的代表通常低估了化疗疗效,高估了靶向治疗疗效。如果生物标志物的产生促进了耐药性,并且存在针对生物标志物的靶向治疗,那么这种动态可以用来设置一个进化陷阱。在化疗选择高生物标志物产生的癌细胞群后,靶向治疗对癌症灭绝非常有效。考虑到癌症目前的生物标志物水平和种群规模,与其使用最有效的治疗方法,不如“超调”,在目标是灭绝的情况下利用进化陷阱。受生物标志物水平的影响,细胞间竞争的增加有助于启动和设置这些陷阱。结论和意义:功能性生物标志物的进化扩大了在设计治疗方案时使用总生物标志物水平作为肿瘤大小衡量标准的局限性。进化上开明的治疗策略可能是非常有效的,假设针对生物标志物的靶向治疗是可用的。
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来源期刊
Evolution, Medicine, and Public Health
Evolution, Medicine, and Public Health Environmental Science-Health, Toxicology and Mutagenesis
CiteScore
5.40
自引率
2.70%
发文量
37
审稿时长
8 weeks
期刊介绍: About the Journal Founded by Stephen Stearns in 2013, Evolution, Medicine, and Public Health is an open access journal that publishes original, rigorous applications of evolutionary science to issues in medicine and public health. It aims to connect evolutionary biology with the health sciences to produce insights that may reduce suffering and save lives. Because evolutionary biology is a basic science that reaches across many disciplines, this journal is open to contributions on a broad range of topics.
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