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与脑转移瘤局部控制相关的因素:系统搜索和机器学习应用。

Factors associated with the local control of brain metastases: a systematic search and machine learning application.

机构信息

Department of Cognitive Neuropsychology, Tilburg University, Tilburg, The Netherlands.

Department of Neurosurgery, Elisabeth-TweeSteden Hospital, Tilburg, The Netherlands.

出版信息

BMC Med Inform Decis Mak. 2024 Jun 21;24(1):177. doi: 10.1186/s12911-024-02579-z.

Abstract

BACKGROUND

Enhancing Local Control (LC) of brain metastases is pivotal for improving overall survival, which makes the prediction of local treatment failure a crucial aspect of treatment planning. Understanding the factors that influence LC of brain metastases is imperative for optimizing treatment strategies and subsequently extending overall survival. Machine learning algorithms may help to identify factors that predict outcomes.

METHODS

This paper systematically reviews these factors associated with LC to select candidate predictor features for a practical application of predictive modeling. A systematic literature search was conducted to identify studies in which the LC of brain metastases is assessed for adult patients. EMBASE, PubMed, Web-of-Science, and the Cochrane Database were searched up to December 24, 2020. All studies investigating the LC of brain metastases as one of the endpoints were included, regardless of primary tumor type or treatment type. We first grouped studies based on primary tumor types resulting in lung, breast, and melanoma groups. Studies that did not focus on a specific primary cancer type were grouped based on treatment types resulting in surgery, SRT, and whole-brain radiotherapy groups. For each group, significant factors associated with LC were identified and discussed. As a second project, we assessed the practical importance of selected features in predicting LC after Stereotactic Radiotherapy (SRT) with a Random Forest machine learning model. Accuracy and Area Under the Curve (AUC) of the Random Forest model, trained with the list of factors that were found to be associated with LC for the SRT treatment group, were reported.

RESULTS

The systematic literature search identified 6270 unique records. After screening titles and abstracts, 410 full texts were considered, and ultimately 159 studies were included for review. Most of the studies focused on the LC of the brain metastases for a specific primary tumor type or after a specific treatment type. Higher SRT radiation dose was found to be associated with better LC in lung cancer, breast cancer, and melanoma groups. Also, a higher dose was associated with better LC in the SRT group, while higher tumor volume was associated with worse LC in this group. The Random Forest model predicted the LC of brain metastases with an accuracy of 80% and an AUC of 0.84.

CONCLUSION

This paper thoroughly examines factors associated with LC in brain metastases and highlights the translational value of our findings for selecting variables to predict LC in a sample of patients who underwent SRT. The prediction model holds great promise for clinicians, offering a valuable tool to predict personalized treatment outcomes and foresee the impact of changes in treatment characteristics such as radiation dose.

摘要

背景

提高脑转移瘤的局部控制率(LC)对于改善整体生存率至关重要,这使得局部治疗失败的预测成为治疗计划的一个关键方面。了解影响脑转移瘤 LC 的因素对于优化治疗策略并延长整体生存率至关重要。机器学习算法可能有助于确定预测结果的因素。

方法

本文系统地回顾了与 LC 相关的这些因素,以选择用于预测模型实际应用的候选预测因子特征。进行了系统的文献检索,以确定评估脑转移瘤 LC 的成人患者的研究。检索了 EMBASE、PubMed、Web-of-Science 和 Cochrane 数据库,截至 2020 年 12 月 24 日。纳入了所有将脑转移瘤 LC 作为终点之一的研究,无论原发肿瘤类型或治疗类型如何。我们首先根据原发肿瘤类型将研究分为肺癌、乳腺癌和黑色素瘤组。未关注特定原发性癌症类型的研究根据手术、SRT 和全脑放疗组的治疗类型进行分组。对于每个组,都确定并讨论了与 LC 相关的显著因素。作为第二个项目,我们使用随机森林机器学习模型评估了在立体定向放射治疗(SRT)后选择特征预测 LC 的实际重要性。报告了经过 SRT 治疗组中与 LC 相关的因素列表训练的随机森林模型的准确性和曲线下面积(AUC)。

结果

系统的文献检索确定了 6270 个独特的记录。在筛选标题和摘要后,考虑了 410 篇全文,最终纳入了 159 项研究进行综述。大多数研究都集中在特定原发性肿瘤类型或特定治疗类型后的脑转移瘤 LC 上。研究发现,肺癌、乳腺癌和黑色素瘤组中 SRT 辐射剂量越高,LC 越好。此外,在 SRT 组中,较高的剂量与较好的 LC 相关,而较高的肿瘤体积与该组中较差的 LC 相关。随机森林模型预测脑转移瘤 LC 的准确率为 80%,AUC 为 0.84。

结论

本文全面检查了与脑转移瘤 LC 相关的因素,并强调了我们的研究结果在选择变量以预测接受 SRT 的患者样本中的 LC 方面的转化价值。该预测模型为临床医生提供了一个有价值的工具,可以预测个性化的治疗结果,并预见治疗特征(如辐射剂量)变化的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4fb5/11191176/7e33b9b71696/12911_2024_2579_Fig1_HTML.jpg

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