Giovanna Muggiolu, Sylvie Sauvaigo, Sarah Libert, Mathias Millet, Elisabeth Daguenet, Wafa Bouleftour, Thierry Maillet, Eric Deutsch, Nicolas Magné
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引用次数: 0
摘要
一小部分患者在放疗后期会出现严重的不良反应(AEs ≥ 3 级),这些不良反应通常是不可逆的,严重影响患者的生活质量。本研究采用了一种新型的 DNA 修复功能检测方法,该方法可确定双链断裂(DSB)修复机制的几个步骤。使用 NEXT-SPOT 检测法对 177 名乳腺癌和前列腺癌患者的外周血单核细胞的 DNA 修复活动进行了为期一周的监测。放疗开始 6 个月后,仅有 7 名患者出现≥ 3 级 AE。机器学习方法确定了人口统计学、临床和 DNA 修复数据中变量的重要性。其中最相关的变量都与DNA修复有关,因此被用来构建预测因子。用随机森林和最小边界球构建的预测因子可预测晚期≥3级AE,灵敏度为100%,特异度分别为77.17%和86.22%。这种多重功能方法有力地证明了DSB修复在慢性AE发展过程中的主导作用。它还表明,受影响的患者在 DSB 修复功能方面具有共同的特征。这种策略可能适用于常规临床分析,并为建立与放疗诱发的严重AE相关的DSB修复模型铺平了道路。
Baseline DSB repair prediction of chronic rare Grade ≥ 3 toxicities induced by radiotherapy using classification algorithms.
Small fractions of patients suffer from radiotherapy late severe adverse events (AEs Grade ≥ 3), which are usually irreversible and badly affect their quality of life. A novel functional DNA repair assay characterizing several steps of double-strand break (DSB) repair mechanisms was used. DNA repair activities of peripheral blood mononuclear cells were monitored for 1 week using NEXT-SPOT assay in 177 breast and prostate cancer patients. Only seven patients had Grade ≥ 3 AEs, 6 months after radiotherapy initiation. The machine learning method established the importance of variables among demographic, clinical and DNA repair data. The most relevant ones, all related to DNA repair, were employed to build a predictor. Predictors constructed with random forest and minimum bounding sphere predicted late Grade ≥ 3 AEs with a sensitivity of 100% and specificity of 77.17 and 86.22%, respectively. This multiplex functional approach strongly supports a dominant role for DSB repair in the development of chronic AEs. It also showed that affected patients share specific features related to functional aspects of DSB repair. This strategy may be suitable for routine clinical analysis and paves the way for modelling DSB repair associated with severe AEs induced by radiotherapy.
期刊介绍:
The Journal of Radiation Research (JRR) is an official journal of The Japanese Radiation Research Society (JRRS), and the Japanese Society for Radiation Oncology (JASTRO).
Since its launch in 1960 as the official journal of the JRRS, the journal has published scientific articles in radiation science in biology, chemistry, physics, epidemiology, and environmental sciences. JRR broadened its scope to include oncology in 2009, when JASTRO partnered with the JRRS to publish the journal.
Articles considered fall into two broad categories:
Oncology & Medicine - including all aspects of research with patients that impacts on the treatment of cancer using radiation. Papers which cover related radiation therapies, radiation dosimetry, and those describing the basis for treatment methods including techniques, are also welcomed. Clinical case reports are not acceptable.
Radiation Research - basic science studies of radiation effects on livings in the area of physics, chemistry, biology, epidemiology and environmental sciences.
Please be advised that JRR does not accept any papers of pure physics or chemistry.
The journal is bimonthly, and is edited and published by the JRR Editorial Committee.