贝叶斯反事实机器学习个性化辐射模式选择以减轻免疫抑制。

IF 2.8 Q2 ONCOLOGY
JCO Clinical Cancer Informatics Pub Date : 2025-08-01 Epub Date: 2025-09-08 DOI:10.1200/CCI-25-00058
Duo Yu, Michael J Kane, Yiqing Chen, Steven H Lin, Radhe Mohan, Brian P Hobbs
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引用次数: 0

摘要

目的:淋巴细胞在肿瘤免疫和肿瘤监测中发挥重要作用。放射诱导淋巴细胞减少症(RIL)是在接受放化疗(CRT)的癌症患者中观察到的常见副作用,导致免疫功能受损和更差的临床结果。尽管与调强放疗(IMRT)相比,质子束治疗(PBT)被认为可以降低RIL风险,但本研究使用贝叶斯反事实机器学习来识别不同的患者概况,并为个性化的放疗方式选择提供信息。方法:介绍了一种新的贝叶斯因果推理技术,并将其应用于510名接受CRT治疗的食管癌患者的匹配回顾性队列,以确定可以通过放射方式选择减轻免疫抑制的患者资料。结果:BMI、年龄、基线绝对淋巴细胞计数(ALC)和计划靶体积决定了不同放疗方式对ALC降低的影响程度。确定了5名患者的资料。在三种患者亚型中,PBT和IMRT之间的ALC最低点有显著差异。值得注意的是,与PBT相比,接受IMRT治疗的体重正常的老年患者(年龄50 ~ 69岁)ALC最低点平均降低了两倍。对于基线ALC较低的IMRT患者,平均ALC最低点显著降低(结论:个体化放射治疗选择可以是减少高危患者免疫抑制的重要工具。本文中介绍的贝叶斯反事实建模技术足够灵活,可以捕获复杂的非线性模式,同时估计可解释的患者概况,以便转化为临床协议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Bayesian Counterfactual Machine Learning Individualizes Radiation Modality Selection to Mitigate Immunosuppression.

Bayesian Counterfactual Machine Learning Individualizes Radiation Modality Selection to Mitigate Immunosuppression.

Bayesian Counterfactual Machine Learning Individualizes Radiation Modality Selection to Mitigate Immunosuppression.

Bayesian Counterfactual Machine Learning Individualizes Radiation Modality Selection to Mitigate Immunosuppression.

Purpose: Lymphocytes play critical roles in cancer immunity and tumor surveillance. Radiation-induced lymphopenia (RIL) is a common side effect observed in patients with cancer undergoing chemoradiation therapy (CRT), leading to impaired immunity and worse clinical outcomes. Although proton beam therapy (PBT) has been suggested to reduce RIL risk compared with intensity-modulated radiation therapy (IMRT), this study used Bayesian counterfactual machine learning to identify distinct patient profiles and inform personalized radiation modality choice.

Methods: A novel Bayesian causal inferential technique is introduced and applied to a matched retrospective cohort of 510 patients with esophageal cancer undergoing CRT to identify patient profiles for which immunosuppression could have been mitigated from radiation modality selection.

Results: BMI, age, baseline absolute lymphocyte count (ALC), and planning target volume determined the extent to which reductions in ALCs varied by radiation modality. Five patient profiles were identified. Significant variation in ALC nadir between PBT and IMRT was observed in three of the patient subtypes. Notably, older patients (age >69 years) with normal weight experienced a two-fold reduction in mean ALC nadir when treated with IMRT versus PBT. Mean ALC nadir was reduced significantly for IMRT patients with lower ALC at baseline (<1.6 k/µL) who were overweight or obese when compared with PBT, whereas overweight patients with higher baseline ALC showed clinical equipoise between modalities.

Conclusion: Individualized radiation therapy selection can be an important tool to minimize immunosuppression for high-risk patients. The Bayesian counterfactual modeling techniques presented in this article are flexible enough to capture complex, nonlinear patterns while estimating interpretable patient profiles for translation into clinical protocols.

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来源期刊
CiteScore
6.20
自引率
4.80%
发文量
190
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