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Computer Aided Decision Support Tool for Rectal Cancer TNM Staging Using MRI

机译:使用MRI的直肠癌TNM分期的计算机辅助决策支持工具

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Rectal cancer (RC) is associated with a poor prognosis because of the risk both for metastases and for local recurrence after total mesorectal excision (TME) surgery. Preoperative assessment (cTNM) for neoadjuvant therapy (radiation therapy and/or chemotherapy) is very important to minimize recurrence rates. Therefore, the challenge for preoperative imaging in RC is to determine the different risk of recurrence in different patients. TME has changed several strategies for treatment in RC patients in developed countries. Additionally the introduction of national training programs, such as the "Audited teaching program for the treatment of rectal cancer in Spain" (Viking Project), have decreased local recurrence and mortality rates and while increased survival. These programs aim at assessing TME including an evaluation of the use of MRI for preoperative assessment. This situation explains the increasing interest in computer aided diagnosis (CAD) tools for this pathology. However, MRI processing in RC is notoriously difficult due to the uncertainty of signal intensity changes along the mesorectal fascia and the different criteria used to predict nodal involvement. This paper presents a complete computer aided decision support tool for rectal cancer TNM staging following the "Viking Project" recommendations. We have applied image processing to extract and quantify the extension of the primary tumor (T staging) as well as to characterize and classify the lymph nodes to predict nodal involvement (N staging). Our tool includes tools for: (1) segmentation of the main structures of the mesorectum (lumen, primary tumor and mesorectal fascia) for T staging, (2) segmentation, feature extraction, and classification of the local lymph nodes for N staging, (3) 3D rendering of the segmented structures for surgery planning, and (4) automatic report generation. Accuracy of the results has been assessed with an expert radiologist. Remaining image processing challenges are indicated and some directions for future research are given.
机译:直肠癌(RC)与预后不良有关,因为既有转移和局部切除术后(TME)手术后局部复发的风险都存在差。术前评估(CTNM)用于新辅助治疗(放射治疗和/或化疗)对于最小化复发率非常重要。因此,RC中术前成像的挑战是确定不同患者复发的不同风险。 TME改变了发达国家RC患者治疗的几种策略。此外,介绍国家培训计划,例如“西班牙直肠癌的审计教学计划”(Viking Project),降低了局部复发和死亡率,而生存率增加。这些方案旨在评估TME,包括评估MRI用于术前评估。这种情况解释了对这种病理学的计算机辅助诊断(CAD)工具的兴趣日益增加。然而,由于信号强度变化的不确定度,RC中的MRI加工令人难以困难,因为沿中霉菌筋膜和用于预测节点参与的不同标准。本文介绍了一个完整的计算机辅助决策支持工具,用于在“Viking项目”建议之后的直肠癌TNM分期。我们已经应用了图像处理以提取和量化原发性肿瘤(T暂存)的延伸以及表征和分类淋巴结预测节点参与(N分段)。我们的工具包括用于的工具:(1)用于T分期,(2)分段,特征提取和N个分期的局部淋巴结分类和分类的霉菌(内腔,原发性肿瘤和介性筋膜)的主要结构分割,( 3)3D渲染分段结构进行手术规划,(4)自动报告生成。通过专家放射科医生评估结果的准确性。表示剩余的图像处理挑战,并给出了未来研究的某些方向。

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