符号回归:构建放射生物学效应现象学模型的通用方法。

IF 2.5 3区 医学 Q2 BIOLOGY
Ankang Hu, Wanyi Zhou, Rui Qiu, Junli Li
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引用次数: 0

摘要

在放射治疗和辐射防护领域,将物理、化学和生物参数与放射生物学效应相关联的定量模型的发展是必不可少的。由于与量化潜在机制相关的挑战,现象学模型往往优于机制模型。然而,缺乏构建现象学模型的通用方法在该领域提出了重大挑战。我们采用符号回归作为构建现象学模型的方法。我们试图建立生存分数、微剂量学参数、辐射氧效应和闪光效应的模型。此外,我们将符号回归方法得到的结果与科学文献中的现有公式进行比较,以评估我们方法的有效性和有效性。符号回归为所承担的每个建模任务产生多个简单公式。这些公式显示出与以前科学出版物中提出的公式相当的预测放射生物学效应的能力。我们的研究结果表明,符号回归是一种自动化和灵活的策略,用于构建放射生物学效应的现象学模型。此外,他们强调模型的可解释性与其拟合的优度一样重要,因为符号回归可以识别充分拟合所提供数据点的各种不同公式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Symbolic Regression: A Versatile Approach for Constructing Phenomenological Models of Radiobiological Effects.

The development of quantitative models that correlate physical, chemical, and biological parameters with radiobiological effects is imperative in the domains of radiotherapy and radiation protection. Due to the challenges associated with quantifying underlying mechanisms, phenomenological models are frequently established in preference to mechanistic models. However, the lack of a universal methodology for constructing phenomenological models presents a significant challenge in the field. We employ symbolic regression as a method for constructing phenomenological models. We attempt to develop models for the survival fraction, microdosimetric parameters, the radiation oxygen effect, and the FLASH effect. Additionally, we compare the results obtained from our symbolic regression approach with existing formulas in the scientific literature to assess the efficacy and validity of our method. Symbolic regression yields multiple simple formulas for each modeling task undertaken. These formulas demonstrate a comparable ability to predict radiobiological effects as the formulas presented in previous scientific publications. Our findings propose that symbolic regression is an automated and flexible strategy for constructing phenomenological models of radiobiological effects. Additionally, they underscore that the interpretability of a model is as crucial as its goodness of fit, as symbolic regression can identify various distinct formulas that adequately fit the provided data points.

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来源期刊
Radiation research
Radiation research 医学-核医学
CiteScore
5.10
自引率
8.80%
发文量
179
审稿时长
1 months
期刊介绍: Radiation Research publishes original articles dealing with radiation effects and related subjects in the areas of physics, chemistry, biology and medicine, including epidemiology and translational research. The term radiation is used in its broadest sense and includes specifically ionizing radiation and ultraviolet, visible and infrared light as well as microwaves, ultrasound and heat. Effects may be physical, chemical or biological. Related subjects include (but are not limited to) dosimetry methods and instrumentation, isotope techniques and studies with chemical agents contributing to the understanding of radiation effects.
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