RCMIX model based on pre-treatment MRI imaging predicts T-downstage in MRI-cT4 stage rectal cancer

IF 9.1 1区 医学 Q1 ONCOLOGY
Feiyu Bai , Leen Liao , Yuanling Tang , Yihang Wu , Zhangjie Wang , Hengyu Zhao , Jingming Huang , Xin Wang , Peirong Ding , Xiaojian Wu , Zerong Cai
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引用次数: 0

Abstract

Neoadjuvant therapy (NAT) is the standard treatment strategy for MRI-defined cT4 rectal cancer. Predicting tumor regression can guide the resection plane to some extent. Here, we covered pre-treatment MRI imaging of 363 cT4 rectal cancer patients receiving NAT and radical surgery from three hospitals: Center 1 (n = 205), Center 2 (n = 109) and Center 3 (n = 52). We propose a machine learning model named RCMIX, which incorporates a multilayer perceptron algorithm based on 19 pre-treatment MRI radiomic features and 2 clinical features in cT4 rectal cancer patients receiving NAT. The model was trained on 205 cases of cT4 rectal cancer patients, achieving an AUC of 0.903 (95 % confidence interval, 0.861–0.944) in predicting T-downstage. It also achieved AUC of 0.787 (0.699–0.874) and 0.773 (0.646–0.901) in two independent test cohorts, respectively. cT4 rectal cancer patients who were predicted as Well T-downstage by the RCMIX model had significantly better disease-free survival than those predicted as Poor T-downstage. Our study suggests that the RCMIX model demonstrates satisfactory performance in predicting T-downstage by NAT for cT4 rectal cancer patients, which may provide critical insights to improve surgical strategies.
基于治疗前MRI成像的RCMIX模型预测MRI- ct4期直肠癌的t期下降
新辅助治疗(NAT)是mri定义的cT4直肠癌的标准治疗策略。预测肿瘤消退可在一定程度上指导切除平面。在这里,我们收集了来自三家医院的363名接受NAT和根治性手术的cT4直肠癌患者的治疗前MRI成像:中心1 (n = 205),中心2 (n = 109)和中心3 (n = 52)。我们提出了一个名为RCMIX的机器学习模型,该模型结合了一种多层感知器算法,该算法基于接受NAT治疗的cT4直肠癌患者的19个治疗前MRI放射特征和2个临床特征。该模型对205例cT4直肠癌患者进行了训练,预测t -下行期的AUC为0.903(95%置信区间0.861-0.944)。在两个独立的试验队列中,AUC分别为0.787(0.699-0.874)和0.773(0.646-0.901)。通过RCMIX模型预测为良好t下降期的cT4直肠癌患者的无病生存期明显优于预测为不良t下降期的患者。我们的研究表明,RCMIX模型在预测cT4直肠癌患者的NAT t期下降方面表现令人满意,这可能为改进手术策略提供重要见解。
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来源期刊
Cancer letters
Cancer letters 医学-肿瘤学
CiteScore
17.70
自引率
2.10%
发文量
427
审稿时长
15 days
期刊介绍: Cancer Letters is a reputable international journal that serves as a platform for significant and original contributions in cancer research. The journal welcomes both full-length articles and Mini Reviews in the wide-ranging field of basic and translational oncology. Furthermore, it frequently presents Special Issues that shed light on current and topical areas in cancer research. Cancer Letters is highly interested in various fundamental aspects that can cater to a diverse readership. These areas include the molecular genetics and cell biology of cancer, radiation biology, molecular pathology, hormones and cancer, viral oncology, metastasis, and chemoprevention. The journal actively focuses on experimental therapeutics, particularly the advancement of targeted therapies for personalized cancer medicine, such as metronomic chemotherapy. By publishing groundbreaking research and promoting advancements in cancer treatments, Cancer Letters aims to actively contribute to the fight against cancer and the improvement of patient outcomes.
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