Chiloiro Giuditta, Rodriguez-Carnero Pablo, Lenkowicz Jacopo, Casà Calogero, Masciocchi Carlotta, Boldrini Luca, Cusumano Davide, Dinapoli Nicola, Meldolesi Elisa, Carano Davide, Damiani Andrea, Barbaro Brunella, Manfredi Riccardo, Valentini Vincenzo, Gambacorta Maria Antonietta
Dipartimento Diagnostica per Immagini, Radioterapia oncologica ed Ematologia, Fondazione Policlinico Universitario Agostino Gemelli IRCCS, Rome, Italy.
Radiology Department, La Princesa University Hospital, Madrid, Spain.
Front Oncol. 2020 Dec 3;10:595012. doi: 10.3389/fonc.2020.595012. eCollection 2020.
Distant metastases are currently the main cause of treatment failure in locally advanced rectal cancer (LARC) patients. The aim of this research is to investigate a correlation between the variation of radiomics features using pre- and post-neoadjuvant chemoradiation (nCRT) magnetic resonance imaging (MRI) with 2 years distant metastasis (2yDM) rate in LARC patients.
Diagnostic pre- and post- nCRT MRI of LARC patients, treated in a single institution from May 2008 to June 2015 with an adequate follow-up time, were retrospectively collected. Gross tumor volumes (GTV) were contoured by an abdominal radiologist and blindly reviewed by a radiation oncologist expert in rectal cancer. The dataset was firstly randomly split into 90% training data, for features selection, and 10% testing data, for the validation. The final set of features after the selection was used to train 15 different classifiers using accuracy as target metric. The models' performance was then assessed on the testing data and the best performing classifier was then selected, maximising the confusion matrix balanced accuracy (BA).
Data regarding 213 LARC patients (36% female, 64% male) were collected. Overall 2yDM was 17%. A total of 2,606 features extracted from the pre- and post- nCRT GTV were tested and 4 features were selected after features selection process. Among the 15 tested classifiers, logistic regression proved to be the best performing one with a testing set BA, sensitivity and specificity of 78.5%, 71.4% and 85.7%, respectively.
This study supports a possible role of delta radiomics in predicting following occurrence of distant metastasis. Further studies including a consistent external validation are needed to confirm these results and allows to translate radiomics model in clinical practice. Future integration with clinical and molecular data will be mandatory to fully personalized treatment and follow-up approaches.
远处转移是目前局部晚期直肠癌(LARC)患者治疗失败的主要原因。本研究旨在探讨使用新辅助放化疗(nCRT)前后的磁共振成像(MRI)的放射组学特征变化与LARC患者2年远处转移(2yDM)率之间的相关性。
回顾性收集2008年5月至2015年6月在单一机构接受治疗且随访时间充足的LARC患者的nCRT前后诊断性MRI。大体肿瘤体积(GTV)由一名腹部放射科医生勾勒轮廓,并由一位直肠癌放疗肿瘤学专家进行盲法复查。数据集首先随机分为90%的训练数据用于特征选择,10%的测试数据用于验证。选择后的最终特征集用于训练15种不同的分类器,以准确率作为目标指标。然后在测试数据上评估模型的性能,选择性能最佳的分类器,以最大化混淆矩阵平衡准确率(BA)。
收集了213例LARC患者的数据(女性36%,男性64%)。总体2yDM率为17%。从nCRT前后的GTV中提取了总共2606个特征进行测试,经过特征选择过程后选择了4个特征。在15个测试分类器中,逻辑回归被证明是性能最佳的,测试集的BA、敏感性和特异性分别为78.5%、71.4%和85.7%。
本研究支持放射组学差异在预测远处转移后续发生方面可能发挥的作用。需要进一步开展包括一致的外部验证在内的研究,以证实这些结果,并使放射组学模型能够应用于临床实践。未来与临床和分子数据的整合对于实现完全个性化的治疗和随访方法将是必不可少的。