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脑转移瘤放射治疗后放射性坏死:一种计算方法。

Radiation necrosis after radiation therapy treatment of brain metastases: A computational approach.

机构信息

Mathematical Oncology Laboratory, Universidad de Castilla-La Mancha, Ciudad Real, Spain.

Hospital La Paz Institute for Health Research, Madrid, Spain.

出版信息

PLoS Comput Biol. 2024 Jan 30;20(1):e1011400. doi: 10.1371/journal.pcbi.1011400. eCollection 2024 Jan.

Abstract

Metastasis is the process through which cancer cells break away from a primary tumor, travel through the blood or lymph system, and form new tumors in distant tissues. One of the preferred sites for metastatic dissemination is the brain, affecting more than 20% of all cancer patients. This figure is increasing steadily due to improvements in treatments of primary tumors. Stereotactic radiosurgery (SRS) is one of the main treatment options for patients with a small or moderate number of brain metastases (BMs). A frequent adverse event of SRS is radiation necrosis (RN), an inflammatory condition caused by late normal tissue cell death. A major diagnostic problem is that RNs are difficult to distinguish from BM recurrences, due to their similarities on standard magnetic resonance images (MRIs). However, this distinction is key to choosing the best therapeutic approach since RNs resolve often without further interventions, while relapsing BMs may require open brain surgery. Recent research has shown that RNs have a faster growth dynamics than recurrent BMs, providing a way to differentiate the two entities, but no mechanistic explanation has been provided for those observations. In this study, computational frameworks were developed based on mathematical models of increasing complexity, providing mechanistic explanations for the differential growth dynamics of BMs relapse versus RN events and explaining the observed clinical phenomenology. Simulated tumor relapses were found to have growth exponents substantially smaller than the group in which there was inflammation due to damage induced by SRS to normal brain tissue adjacent to the BMs, thus leading to RN. ROC curves with the synthetic data had an optimal threshold that maximized the sensitivity and specificity values for a growth exponent β* = 1.05, very close to that observed in patient datasets.

摘要

转移是癌细胞从原发性肿瘤脱离、通过血液或淋巴系统传播并在远处组织形成新肿瘤的过程。转移性传播的首选部位之一是大脑,超过 20%的癌症患者受到影响。由于对原发性肿瘤治疗的改善,这一数字在稳步增加。立体定向放射外科(SRS)是治疗少量或中等数量脑转移瘤(BMs)患者的主要治疗选择之一。SRS 的常见不良事件是放射性坏死(RN),这是一种由迟发性正常组织细胞死亡引起的炎症状态。一个主要的诊断问题是,由于 RN 和 BM 复发在标准磁共振图像(MRIs)上相似,因此很难将它们区分开来。然而,这种区分对于选择最佳治疗方法至关重要,因为 RN 通常无需进一步干预即可解决,而复发的 BMs 可能需要开颅手术。最近的研究表明,RN 的生长动态比复发的 BMs 更快,为区分这两种实体提供了一种方法,但尚未对这些观察结果提供机制解释。在这项研究中,开发了基于不断增加复杂性的数学模型的计算框架,为 BM 复发与 RN 事件的差异生长动态提供了机制解释,并解释了观察到的临床现象学。模拟肿瘤复发的生长指数明显小于由于 SRS 对 BMs 附近正常脑组织造成的损伤引起炎症的组,从而导致 RN。具有合成数据的 ROC 曲线具有最佳阈值,该阈值最大化了生长指数β*=1.05 的敏感性和特异性值,非常接近患者数据集观察到的值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/48da/10857744/4b0e4f7404c1/pcbi.1011400.g001.jpg

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