Harnessing Flex Point Symmetry to Estimate Logistic Tumor Population Growth.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Stefano Pasetto, Isha Harshe, Renee Brady-Nicholls, Robert A Gatenby, Heiko Enderling
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引用次数: 0

Abstract

The observed time evolution of a population is well approximated by a logistic growth function in many research fields, including oncology, ecology, chemistry, demography, economy, linguistics, and artificial neural networks. Initial growth is exponential, then decelerates as the population approaches its limit size, i.e., the carrying capacity. In mathematical oncology, the tumor carrying capacity has been postulated to be dynamically evolving as the tumor overcomes several evolutionary bottlenecks and, thus, to be patient specific. As the relative tumor-over-carrying capacity ratio may be predictive and prognostic for tumor growth and treatment response dynamics, it is paramount to estimate it from limited clinical data. We show that exploiting the logistic function's rotation symmetry can help estimate the population's growth rate and carry capacity from fewer data points than conventional regression approaches. We test this novel approach against published pan-cancer animal and human breast cancer data, achieving a 30% to 40% reduction in the time at which subsequent data collection is necessary to estimate the logistic growth rate and carrying capacity correctly. These results could improve tumor dynamics forecasting and augment the clinical decision-making process.

利用柔性点对称性估算逻辑肿瘤群体增长
在许多研究领域,包括肿瘤学、生态学、化学、人口学、经济学、语言学和人工神经网络,观察到的种群时间演化都可以很好地用对数增长函数来近似。初始增长为指数增长,随着种群规模接近极限(即承载能力),增长速度逐渐减慢。在肿瘤数学中,肿瘤的承载能力被假定为随着肿瘤克服几个进化瓶颈而动态演化的,因此,肿瘤的承载能力是针对病人的。由于肿瘤相对于承载能力的比率可能对肿瘤生长和治疗反应动态具有预测性和预后性,因此从有限的临床数据中估算出肿瘤相对于承载能力的比率至关重要。我们的研究表明,与传统的回归方法相比,利用逻辑函数的旋转对称性,可以从更少的数据点估算出群体的生长率和携带能力。我们用已发表的泛癌症动物和人类乳腺癌数据测试了这种新方法,结果发现,要正确估计对数增长率和承载力,后续数据收集所需的时间减少了 30% 到 40%。这些结果可以改善肿瘤动态预测,增强临床决策过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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