18F-FDG PET/CT-based deep radiomic models for enhancing chemotherapy response prediction in breast cancer.

IF 3.5 4区 医学 Q2 ONCOLOGY
Zirui Jiang, Joshua Low, Colin Huang, Yong Yue, Christopher Njeh, Oluwaseyi Oderinde
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引用次数: 0

Abstract

Enhancing the accuracy of tumor response predictions enables the development of tailored therapeutic strategies for patients with breast cancer. In this study, we developed deep radiomic models to enhance the prediction of chemotherapy response after the first treatment cycle. 18F-Fludeoxyglucose PET/CT imaging data and clinical record from 60 breast cancer patients were retrospectively obtained from the Cancer Imaging Archive. PET/CT scans were conducted at three distinct stages of treatment; prior to the initiation of chemotherapy (T1), following the first cycle of chemotherapy (T2), and after the full chemotherapy regimen (T3). The patient's primary gross tumor volume (GTV) was delineated on PET images using a 40% threshold of the maximum standardized uptake value (SUVmax). Radiomic features were extracted from the GTV based on the PET/CT images. In addition, a squeeze-and-excitation network (SENet) deep learning model was employed to generate additional features from the PET/CT images for combined analysis. A XGBoost machine learning model was developed and compared with the conventional machine learning algorithm [random forest (RF), logistic regression (LR) and support vector machine (SVM)]. The performance of each model was assessed using receiver operating characteristics area under the curve (ROC AUC) analysis, and prediction accuracy in a validation cohort. Model performance was evaluated through fivefold cross-validation on the entire cohort, with data splits stratified by treatment response categories to ensure balanced representation. The AUC values for the machine learning models using only radiomic features were 0.85(XGBoost), 0.76 (RF), 0.80 (LR), and 0.59 (SVM), with XGBoost showing the best performance. After incorporating additional deep learning-derived features from SENet, the AUC values increased to 0.92, 0.88, 0.90, and 0.61, respectively, demonstrating significant improvements in predictive accuracy. Predictions were based on pre-treatment (T1) and post-first-cycle (T2) imaging data, enabling early assessment of chemotherapy response after the initial treatment cycle. Integrating deep learning-derived features significantly enhanced the performance of predictive models for chemotherapy response in breast cancer patients. This study demonstrated the superior predictive capability of the XGBoost model, emphasizing its potential to optimize personalized therapeutic strategies by accurately identifying patients unlikely to respond to chemotherapy after the first treatment cycle.

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基于18F-FDG PET/ ct的深部放射学模型增强乳腺癌化疗反应预测
提高肿瘤反应预测的准确性可以为乳腺癌患者制定量身定制的治疗策略。在这项研究中,我们建立了深度放射学模型来增强对第一个治疗周期后化疗反应的预测。回顾性地从癌症影像档案中获得60例乳腺癌患者的18f -氟脱氧葡萄糖PET/CT影像资料和临床记录。PET/CT扫描在三个不同的治疗阶段进行;化疗开始前(T1)、第一周期化疗后(T2)和全方案化疗后(T3)。使用最大标准化摄取值(SUVmax)的40%阈值在PET图像上描绘患者的原发性总肿瘤体积(GTV)。基于PET/CT图像提取GTV的放射学特征。此外,采用挤压激励网络(SENet)深度学习模型从PET/CT图像中生成附加特征进行组合分析。开发了XGBoost机器学习模型,并与传统机器学习算法[随机森林(RF),逻辑回归(LR)和支持向量机(SVM)]进行了比较。采用受试者工作特征曲线下面积(ROC AUC)分析和验证队列中的预测准确性来评估每个模型的性能。通过对整个队列的五倍交叉验证来评估模型的性能,并根据治疗反应类别对数据进行分层,以确保平衡的代表性。仅使用放射学特征的机器学习模型的AUC值分别为0.85(XGBoost)、0.76 (RF)、0.80 (LR)和0.59 (SVM),其中XGBoost表现出最好的性能。在从SENet中加入额外的深度学习衍生特征后,AUC值分别增加到0.92、0.88、0.90和0.61,表明预测精度有了显着提高。预测基于治疗前(T1)和第一周期后(T2)成像数据,能够在初始治疗周期后早期评估化疗反应。整合深度学习衍生的特征显著提高了乳腺癌患者化疗反应预测模型的性能。该研究证明了XGBoost模型的卓越预测能力,强调了其通过准确识别第一个治疗周期后不太可能对化疗有反应的患者来优化个性化治疗策略的潜力。
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来源期刊
Medical Oncology
Medical Oncology 医学-肿瘤学
CiteScore
4.20
自引率
2.90%
发文量
259
审稿时长
1.4 months
期刊介绍: Medical Oncology (MO) communicates the results of clinical and experimental research in oncology and hematology, particularly experimental therapeutics within the fields of immunotherapy and chemotherapy. It also provides state-of-the-art reviews on clinical and experimental therapies. Topics covered include immunobiology, pathogenesis, and treatment of malignant tumors.
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