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多中心REQUITE队列中乳腺癌放疗后急性脱皮的机器学习预测模型的开发与优化

Development and Optimization of a Machine-Learning Prediction Model for Acute Desquamation After Breast Radiation Therapy in the Multicenter REQUITE Cohort.

作者信息

Aldraimli Mahmoud, Osman Sarah, Grishchuck Diana, Ingram Samuel, Lyon Robert, Mistry Anil, Oliveira Jorge, Samuel Robert, Shelley Leila E A, Soria Daniele, Dwek Miriam V, Aguado-Barrera Miguel E, Azria David, Chang-Claude Jenny, Dunning Alison, Giraldo Alexandra, Green Sheryl, Gutiérrez-Enríquez Sara, Herskind Carsten, van Hulle Hans, Lambrecht Maarten, Lozza Laura, Rancati Tiziana, Reyes Victoria, Rosenstein Barry S, de Ruysscher Dirk, de Santis Maria C, Seibold Petra, Sperk Elena, Symonds R Paul, Stobart Hilary, Taboada-Valadares Begoña, Talbot Christopher J, Vakaet Vincent J L, Vega Ana, Veldeman Liv, Veldwijk Marlon R, Webb Adam, Weltens Caroline, West Catharine M, Chaussalet Thierry J, Rattay Tim

机构信息

Health Innovation Ecosystem, University of Westminster, London, United Kingdom.

Patrick G. Johnston Centre for Cancer Research, Queen's University Belfast, Belfast, United Kingdom.

出版信息

Adv Radiat Oncol. 2022 Jan 3;7(3):100890. doi: 10.1016/j.adro.2021.100890. eCollection 2022 May-Jun.

Abstract

PURPOSE

Some patients with breast cancer treated by surgery and radiation therapy experience clinically significant toxicity, which may adversely affect cosmesis and quality of life. There is a paucity of validated clinical prediction models for radiation toxicity. We used machine learning (ML) algorithms to develop and optimise a clinical prediction model for acute breast desquamation after whole breast external beam radiation therapy in the prospective multicenter REQUITE cohort study.

METHODS AND MATERIALS

Using demographic and treatment-related features (m = 122) from patients (n = 2058) at 26 centers, we trained 8 ML algorithms with 10-fold cross-validation in a 50:50 random-split data set with class stratification to predict acute breast desquamation. Based on performance in the validation data set, the logistic model tree, random forest, and naïve Bayes models were taken forward to cost-sensitive learning optimisation.

RESULTS

One hundred and ninety-two patients experienced acute desquamation. Resampling and cost-sensitive learning optimisation facilitated an improvement in classification performance. Based on maximising sensitivity (true positives), the "hero" model was the cost-sensitive random forest algorithm with a false-negative: false-positive misclassification penalty of 90:1 containing m = 114 predictive features. Model sensitivity and specificity were 0.77 and 0.66, respectively, with an area under the curve of 0.77 in the validation cohort.

CONCLUSIONS

ML algorithms with resampling and cost-sensitive learning generated clinically valid prediction models for acute desquamation using patient demographic and treatment features. Further external validation and inclusion of genomic markers in ML prediction models are worthwhile, to identify patients at increased risk of toxicity who may benefit from supportive intervention or even a change in treatment plan.

摘要

目的

一些接受手术和放射治疗的乳腺癌患者会出现具有临床意义的毒性反应,这可能会对美容效果和生活质量产生不利影响。目前缺乏经过验证的放射毒性临床预测模型。在前瞻性多中心REQUITE队列研究中,我们使用机器学习(ML)算法来开发和优化全乳外照射放疗后急性乳腺脱皮的临床预测模型。

方法和材料

我们使用了来自26个中心的2058例患者的人口统计学和治疗相关特征(m = 122),在一个具有类别分层的50:50随机分割数据集中,通过10倍交叉验证训练了8种ML算法,以预测急性乳腺脱皮。基于验证数据集中的表现,逻辑模型树、随机森林和朴素贝叶斯模型被推进到成本敏感学习优化中。

结果

192例患者出现急性脱皮。重采样和成本敏感学习优化有助于提高分类性能。基于最大化敏感性(真阳性),“英雄”模型是成本敏感随机森林算法,假阴性:假阳性误分类惩罚为90:1,包含m = 114个预测特征。验证队列中模型的敏感性和特异性分别为0.77和0.66,曲线下面积为0.77。

结论

采用重采样和成本敏感学习的ML算法利用患者人口统计学和治疗特征生成了急性脱皮的临床有效预测模型。进一步的外部验证以及在ML预测模型中纳入基因组标记是值得的,以识别毒性风险增加的患者,这些患者可能从支持性干预甚至治疗计划的改变中获益。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9e08/9133391/c4073f6db5b5/gr1.jpg

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