直肠癌患者新辅助放化疗反应的自动化预测
Automated Prediction of the Response to Neoadjuvant Chemoradiotherapy in Patients Affected by Rectal Cancer.
作者信息
Filitto Giuseppe, Coppola Francesca, Curti Nico, Giampieri Enrico, Dall'Olio Daniele, Merlotti Alessandra, Cattabriga Arrigo, Cocozza Maria Adriana, Taninokuchi Tomassoni Makoto, Remondini Daniel, Pierotti Luisa, Strigari Lidia, Cuicchi Dajana, Guido Alessandra, Rihawi Karim, D'Errico Antonietta, Di Fabio Francesca, Poggioli Gilberto, Morganti Alessio Giuseppe, Ricciardiello Luigi, Golfieri Rita, Castellani Gastone
机构信息
Department of Experimental, Diagnostic and Specialty Medicine, University of Bologna, 40138 Bologna, Italy.
Department of Radiology, IRCCS Azienda Ospedaliera-Universitaria di Bologna, 40138 Bologna, Italy.
出版信息
Cancers (Basel). 2022 Apr 29;14(9):2231. doi: 10.3390/cancers14092231.
BACKGROUND
Rectal cancer is a malignant neoplasm of the large intestine resulting from the uncontrolled proliferation of the rectal tract. Predicting the pathologic response of neoadjuvant chemoradiotherapy at an MRI primary staging scan in patients affected by locally advanced rectal cancer (LARC) could lead to significant improvement in the survival and quality of life of the patients. In this study, the possibility of automatizing this estimation from a primary staging MRI scan, using a fully automated artificial intelligence-based model for the segmentation and consequent characterization of the tumor areas using radiomic features was evaluated. The TRG score was used to evaluate the clinical outcome.
METHODS
Forty-three patients under treatment in the IRCCS Sant'Orsola-Malpighi Polyclinic were retrospectively selected for the study; a U-Net model was trained for the automated segmentation of the tumor areas; the radiomic features were collected and used to predict the tumor regression grade (TRG) score.
RESULTS
The segmentation of tumor areas outperformed the state-of-the-art results in terms of the Dice score coefficient or was comparable to them but with the advantage of considering mucinous cases. Analysis of the radiomic features extracted from the lesion areas allowed us to predict the TRG score, with the results agreeing with the state-of-the-art results.
CONCLUSIONS
The results obtained regarding TRG prediction using the proposed fully automated pipeline prove its possible usage as a viable decision support system for radiologists in clinical practice.
背景
直肠癌是一种因直肠失控性增殖而导致的大肠恶性肿瘤。预测局部晚期直肠癌(LARC)患者在MRI初次分期扫描时新辅助放化疗的病理反应,可能会显著提高患者的生存率和生活质量。在本研究中,评估了使用基于人工智能的全自动模型对肿瘤区域进行分割并利用放射组学特征进行后续特征描述,从而从初次分期MRI扫描中自动进行这种评估的可能性。使用肿瘤退缩分级(TRG)评分来评估临床结果。
方法
回顾性选取了43例正在IRCCS圣奥索拉-马尔皮基综合医院接受治疗的患者进行研究;训练了一个U-Net模型用于肿瘤区域的自动分割;收集放射组学特征并用于预测肿瘤退缩分级(TRG)评分。
结果
在骰子系数方面,肿瘤区域的分割优于现有最佳结果,或者与之相当,但具有考虑黏液性病例的优势。对从病变区域提取的放射组学特征进行分析,使我们能够预测TRG评分,结果与现有最佳结果一致。
结论
使用所提出的全自动流程在TRG预测方面获得的结果证明,它有可能在临床实践中作为放射科医生可行的决策支持系统使用。