Department of Neuroscience, Imaging and Clinical Sciences, "G. D'Annunzio" University, Via dei Vestini, 66100, Chieti, Italy.
Department of Radiation Oncology, SS. Annunziata Hospital, "G. D'Annunzio" University of Chieti, Via Dei Vestini, 66100, Chieti, Italy.
Sci Rep. 2021 Mar 8;11(1):5379. doi: 10.1038/s41598-021-84816-3.
Neoadjuvant chemo-radiotherapy (CRT) followed by total mesorectal excision (TME) represents the standard treatment for patients with locally advanced (≥ T3 or N+) rectal cancer (LARC). Approximately 15% of patients with LARC shows a complete response after CRT. The use of pre-treatment MRI as predictive biomarker could help to increase the chance of organ preservation by tailoring the neoadjuvant treatment. We present a novel machine learning model combining pre-treatment MRI-based clinical and radiomic features for the early prediction of treatment response in LARC patients. MRI scans (3.0 T, T2-weighted) of 72 patients with LARC were included. Two readers independently segmented each tumor. Radiomic features were extracted from both the "tumor core" (TC) and the "tumor border" (TB). Partial least square (PLS) regression was used as the multivariate, machine learning, algorithm of choice and leave-one-out nested cross-validation was used to optimize hyperparameters of the PLS. The MRI-Based "clinical-radiomic" machine learning model properly predicted the treatment response (AUC = 0.793, p = 5.6 × 10). Importantly, the prediction improved when combining MRI-based clinical features and radiomic features, the latter extracted from both TC and TB. Prospective validation studies in randomized clinical trials are warranted to better define the role of radiomics in the development of rectal cancer precision medicine.
新辅助放化疗(CRT)后行全直肠系膜切除术(TME)是局部进展期(≥T3 或 N+)直肠癌(LARC)患者的标准治疗方法。约 15%的 LARC 患者在 CRT 后表现出完全缓解。使用治疗前 MRI 作为预测生物标志物有助于通过定制新辅助治疗来增加保留器官的机会。我们提出了一种新的机器学习模型,该模型结合了治疗前 MRI 基于临床和放射组学特征,用于早期预测 LARC 患者的治疗反应。纳入了 72 例 LARC 患者的 MRI 扫描(3.0T,T2 加权)。两位读者分别对每个肿瘤进行分割。从“肿瘤核心”(TC)和“肿瘤边界”(TB)提取放射组学特征。偏最小二乘(PLS)回归被用作多变量、机器学习算法的选择,留一法嵌套交叉验证用于优化 PLS 的超参数。基于 MRI 的“临床-放射组学”机器学习模型可以正确预测治疗反应(AUC=0.793,p=5.6×10)。重要的是,当结合 MRI 基于临床特征和放射组学特征时,后者从 TC 和 TB 两者提取时,预测得到了改善。需要前瞻性的随机临床试验验证研究,以更好地确定放射组学在直肠癌精准医学中的作用。