Lang Xiong, Xiaofeng Tang, Xinhua Jiang, Haolin Chen, Binyan Qian, Biyun Chen, Xiaofeng Lin, Jianhua Zhou, Li Li
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Herein, we aim to investigate the value of automatic segmentation-based multi-modal radiomics signature and magnetic resonance imaging (MRI) features in predicting disease-free survival (DFS) of patients diagnosed with invasive breast cancer.</p><p><strong>Methods: </strong>This retrospective multicenter study included a total of 643 female patients with invasive breast cancer who underwent preoperative ultrasound (US) and MRI for prognostic analysis. Data (n = 480) from center 1 were divided into training and internal testing sets, while data (n = 163) from centers 2 and 3 were analyzed as the external testing set. We developed automatic segmentation frameworks for tumor segmentation by deep learning. Then, Least absolute shrinkage and selection operator Cox regression was used to select features to construct radiomics signature, and corresponding radiomics score (Rad-score) was calculated. Finally, six models for predicting DFS were constructed by using Cox regression and assessed in terms of discrimination, calibration, and clinical usefulness.</p><p><strong>Results: </strong>The multi-modal radiomics signature combining intra- and peri-tumoral radiomics signatures of US and MRI achieved a higher C-index in the internal (0.734) and external (0.708) testing sets than most other radiomics signatures in predicting DFS, and successfully stratified patients into low- and high-risk groups. The multi-modal clinical imaging model combining the multi-modal Rad-score and clinical traditional MRI model-score resulted in a higher C-index (0.795) than other models in the external testing set, and it had a better calibration and higher clinical benefit.</p><p><strong>Conclusions: </strong>This study demonstrates that the multi-modal radiomics signature derived from automatic segmentations of US and MRI is a promising risk stratification biomarker for breast cancer, and highlights that the appropriate combination of multi-modal radiomics signature, clinical characteristics, and MRI feature can improve performance of individualized DFS prediction, which might assist in guiding decision-making related to breast cancer.</p>","PeriodicalId":49227,"journal":{"name":"Breast Cancer Research","volume":"26 1","pages":"157"},"PeriodicalIF":7.4000,"publicationDate":"2024-11-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11555850/pdf/","citationCount":"0","resultStr":"{\"title\":\"Automatic segmentation-based multi-modal radiomics analysis of US and MRI for predicting disease-free survival of breast cancer: a multicenter study.\",\"authors\":\"Lang Xiong, Xiaofeng Tang, Xinhua Jiang, Haolin Chen, Binyan Qian, Biyun Chen, Xiaofeng Lin, Jianhua Zhou, Li Li\",\"doi\":\"10.1186/s13058-024-01909-3\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Several studies have confirmed the potential value of applying radiomics to predict prognosis of breast cancer. 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引用次数: 0
摘要
背景:多项研究证实了应用放射组学预测乳腺癌预后的潜在价值。然而,这些研究中的肿瘤分割依赖于放射科医生对乳腺癌的划定或注释,这往往费力、乏味,而且容易受到观察者之间和观察者内部差异的影响。自动分割有望克服这一困难。在此,我们旨在研究基于自动分割的多模态放射组学特征和磁共振成像(MRI)特征在预测浸润性乳腺癌患者无病生存期(DFS)方面的价值:这项回顾性多中心研究共纳入了643名女性浸润性乳腺癌患者,她们在术前接受了超声(US)和磁共振成像(MRI)预后分析。第一中心的数据(n = 480)被分为训练集和内部测试集,而第二和第三中心的数据(n = 163)作为外部测试集进行分析。我们通过深度学习开发了肿瘤自动分割框架。然后,利用最小绝对收缩和选择算子考克斯回归来选择特征,构建放射组学特征,并计算相应的放射组学得分(Rad-score)。最后,利用Cox回归构建了预测DFS的六个模型,并从区分度、校准和临床实用性方面进行了评估:结果:与其他大多数放射组学特征相比,结合了 US 和 MRI 的瘤内和瘤周放射组学特征的多模态放射组学特征在内部(0.734)和外部(0.708)测试集中获得了更高的预测 DFS 的 C 指数,并成功地将患者分为低危和高危两组。在外部测试集中,结合了多模态Rad-score和临床传统MRI模型-score的多模态临床成像模型比其他模型获得了更高的C指数(0.795),它具有更好的校准性和更高的临床效益:本研究表明,通过自动分割 US 和 MRI 得出的多模态放射组学特征是一种很有前景的乳腺癌风险分层生物标志物,并强调了多模态放射组学特征、临床特征和 MRI 特征的适当组合可以提高个体化 DFS 预测的性能,从而有助于指导乳腺癌的相关决策。
Automatic segmentation-based multi-modal radiomics analysis of US and MRI for predicting disease-free survival of breast cancer: a multicenter study.
Background: Several studies have confirmed the potential value of applying radiomics to predict prognosis of breast cancer. However, the tumor segmentation in these studies depended on delineation or annotation of breast cancer by radiologist, which is often laborious, tedious, and vulnerable to inter- and intra-observer variability. Automatic segmentation is expected to overcome this difficulty. Herein, we aim to investigate the value of automatic segmentation-based multi-modal radiomics signature and magnetic resonance imaging (MRI) features in predicting disease-free survival (DFS) of patients diagnosed with invasive breast cancer.
Methods: This retrospective multicenter study included a total of 643 female patients with invasive breast cancer who underwent preoperative ultrasound (US) and MRI for prognostic analysis. Data (n = 480) from center 1 were divided into training and internal testing sets, while data (n = 163) from centers 2 and 3 were analyzed as the external testing set. We developed automatic segmentation frameworks for tumor segmentation by deep learning. Then, Least absolute shrinkage and selection operator Cox regression was used to select features to construct radiomics signature, and corresponding radiomics score (Rad-score) was calculated. Finally, six models for predicting DFS were constructed by using Cox regression and assessed in terms of discrimination, calibration, and clinical usefulness.
Results: The multi-modal radiomics signature combining intra- and peri-tumoral radiomics signatures of US and MRI achieved a higher C-index in the internal (0.734) and external (0.708) testing sets than most other radiomics signatures in predicting DFS, and successfully stratified patients into low- and high-risk groups. The multi-modal clinical imaging model combining the multi-modal Rad-score and clinical traditional MRI model-score resulted in a higher C-index (0.795) than other models in the external testing set, and it had a better calibration and higher clinical benefit.
Conclusions: This study demonstrates that the multi-modal radiomics signature derived from automatic segmentations of US and MRI is a promising risk stratification biomarker for breast cancer, and highlights that the appropriate combination of multi-modal radiomics signature, clinical characteristics, and MRI feature can improve performance of individualized DFS prediction, which might assist in guiding decision-making related to breast cancer.
期刊介绍:
Breast Cancer Research, an international, peer-reviewed online journal, publishes original research, reviews, editorials, and reports. It features open-access research articles of exceptional interest across all areas of biology and medicine relevant to breast cancer. This includes normal mammary gland biology, with a special emphasis on the genetic, biochemical, and cellular basis of breast cancer. In addition to basic research, the journal covers preclinical, translational, and clinical studies with a biological basis, including Phase I and Phase II trials.