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放射组学特征可预测接受治疗的直肠癌的反应。

Radiomic Features Are Predictive of Response in Rectal Cancer Undergoing Therapy.

作者信息

Santini Diletta, Danti Ginevra, Bicci Eleonora, Galluzzo Antonio, Bettarini Silvia, Busoni Simone, Innocenti Tommaso, Galli Andrea, Miele Vittorio

机构信息

Department of Radiology, Careggi University Hospital, Largo Brambilla 3, 50134 Florence, Italy.

Department of Health Physics, Careggi University Hospital, Largo Brambilla 3, 50134 Florence, Italy.

出版信息

Diagnostics (Basel). 2023 Aug 2;13(15):2573. doi: 10.3390/diagnostics13152573.

Abstract

BACKGROUND

Rectal cancer is a major mortality cause in the United States (US), and its treatment is based on individual risk factors for recurrence in each patient. In patients with rectal cancer, accurate assessment of response to chemoradiotherapy has increased in importance as the variety of treatment options has grown. In this scenario, a controversial non-operative approach may be considered in some patients for whom complete tumor regression is believed to have occurred. The recommended treatment for locally advanced rectal cancer (LARC, T3-4 ± N+) is total mesorectal excision (TME) after neoadjuvant chemoradiotherapy (nCRT). Magnetic resonance imaging (MRI) has become a standard technique for local staging of rectal cancer (tumor, lymph node, and circumferential resection margin [CRM] staging), in both the US and Europe, and it is getting widely used for restaging purposes.

AIM

In our study, we aimed to use an MRI radiomic model to identify features linked to the different responses of chemoradiotherapy of rectal cancer before surgery, and whether these features are helpful to understand the effectiveness of the treatments.

METHODS

We retrospectively evaluated adult patients diagnosed with LARC who were subjected to at least 2 MRI examinations in 10-12 weeks at our hospital, before and after nCRT. The MRI acquisition protocol for the 2 exams included T2 sequence and apparent diffusion coefficient (ADC) map. The patients were divided into 2 groups according to the treatment response: complete or good responders (Group 1) and incomplete or poor responders (Group 2). MRI images were segmented, and quantitative features were extracted and compared between the two groups. Features that showed significant differences (SF) were then included in a LASSO regression method to build a radiomic-based predictive model.

RESULTS

We included 38 patients (26 males and 12 females), who are classified from T2 and T4 stages in the rectal cancer TNM. After the nCRT, the patients were divided into Group 1 (13 patients), complete or good responders, and Group 2 (25 patients), incomplete or poor responders. Analysis at baseline generated the following significant features for the Mann-Whitney test (out of a total of 107) for each sequence. Also, the analysis at the end of the follow-up yielded a high number of significant features for the Mann-Whitney test (out of a total of 107) for each image. Features selected by the LASSO regression method for each image analyzed; ROC curves relative to each model are represented.

CONCLUSION

We developed an MRI-based radiomic model that is able to differentiate and predict between responders and non-responders who went through nCRT for rectal cancer. This approach might identify early lesions with high surgical potential from lesions potentially resolving after medical treatment.

摘要

背景

直肠癌是美国主要的致死原因,其治疗基于每位患者的个体复发风险因素。在直肠癌患者中,随着治疗选择的增多,准确评估放化疗反应的重要性日益增加。在这种情况下,对于一些被认为肿瘤已完全消退的患者,可能会考虑采用有争议的非手术方法。局部晚期直肠癌(LARC,T3 - 4 ± N +)的推荐治疗方法是新辅助放化疗(nCRT)后行全直肠系膜切除术(TME)。在美国和欧洲,磁共振成像(MRI)已成为直肠癌局部分期(肿瘤、淋巴结和环周切缘[CRM]分期)的标准技术,并且越来越广泛地用于再分期目的。

目的

在我们的研究中,我们旨在使用MRI影像组学模型来识别与术前直肠癌放化疗不同反应相关的特征,以及这些特征是否有助于理解治疗效果。

方法

我们回顾性评估了在我院接受nCRT前后10 - 12周内至少进行2次MRI检查的成年LARC患者。两次检查的MRI采集方案包括T2序列和表观扩散系数(ADC)图。根据治疗反应将患者分为两组:完全或良好反应者(第1组)和不完全或不良反应者(第2组)。对MRI图像进行分割,提取定量特征并在两组之间进行比较。然后将显示出显著差异(SF)的特征纳入套索回归方法,以建立基于影像组学的预测模型。

结果

我们纳入了38例患者(26例男性和12例女性),根据直肠癌TNM分期分为T2和T4期。nCRT后,患者分为第1组(13例患者),完全或良好反应者,和第2组(25例患者),不完全或不良反应者。基线分析为每个序列生成了以下Mann - Whitney检验的显著特征(总共107个)。此外,随访结束时的分析为每个图像生成了大量Mann - Whitney检验的显著特征(总共107个)。展示了套索回归方法为每个分析图像选择的特征;呈现了相对于每个模型的ROC曲线。

结论

我们开发了一种基于MRI的影像组学模型,能够区分和预测接受直肠癌nCRT的反应者和无反应者。这种方法可能会从经药物治疗后可能消退的病变中识别出具有高手术潜力的早期病变。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2966/10417449/07ecec3408db/diagnostics-13-02573-g001.jpg

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