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基于手动与自动分割的影像组学特征用于膀胱癌淋巴结分期。

Radiomics Signature Using Manual Versus Automated Segmentation for Lymph Node Staging of Bladder Cancer.

机构信息

Department of Radiology, University Hospital, LMU Munich, Munich, Germany.

Department of Diagnostic and Interventional Radiology, University Hospital Würzburg, Würzburg, Germany.

出版信息

Eur Urol Focus. 2023 Jan;9(1):145-153. doi: 10.1016/j.euf.2022.08.015. Epub 2022 Sep 14.

Abstract

BACKGROUND

Bladder cancer (BC) treatment algorithms depend on accurate tumor staging. To date, computed tomography (CT) is recommended for assessment of lymph node (LN) metastatic spread in muscle-invasive and high-risk BC. However, the diagnostic efficacy of radiologist-evaluated CT imaging studies is limited.

OBJECTIVE

To evaluate the performance of quantitative radiomics signatures for detection of LN metastases in BC.

DESIGN, SETTING, AND PARTICIPANTS: Of 1354 patients with BC who underwent radical cystectomy (RC) with lymphadenectomy who were screened, 391 with pathological nodal staging (pN0: n = 297; pN+: n = 94) were included and randomized into training (n = 274) and test (n = 117) cohorts. Pelvic LNs were segmented manually and automatically. A total of 1004 radiomics features were extracted from each LN and a machine learning model was trained to assess pN status using histopathology labels as the ground truth.

OUTCOME MEASUREMENTS AND STATISTICAL ANALYSIS

Radiologist assessment was compared to radiomics-based analysis using manual and automated LN segmentations for detection of LN metastases in BC. Statistical analysis was performed using the receiver operating characteristics curve method and evaluated in terms of sensitivity, specificity, and area under the curve (AUC).

RESULTS AND LIMITATIONS

In total, 1845 LNs were manually segmented. Automated segmentation correctly located 361/557 LNs in the test cohort. Manual and automatic masks achieved an AUC of 0.80 (95% confidence interval [CI] 0.69-0.91; p = 0.64) and 0.70 (95% CI: 0.58-0.82; p = 0.17), respectively, in the test cohort compared to radiologist assessment, with an AUC of 0.78 (95% CI 0.67-0.89). A combined model of a manually segmented radiomics signature and radiologist assessment reached an AUC of 0.81 (95% CI 0.71-0.92; p = 0.63).

CONCLUSIONS

A radiomics signature allowed discrimination of nodal status with high diagnostic accuracy. The model based on manual LN segmentation outperformed the fully automated approach.

PATIENT SUMMARY

For patients with bladder cancer, evaluation of computed tomography (CT) scans before surgery using a computer-based method for image analysis, called radiomics, may help in standardizing and improving the accuracy of assessment of lymph nodes. This could be a valuable tool for optimizing treatment options.

摘要

背景

膀胱癌(BC)的治疗方案取决于准确的肿瘤分期。迄今为止,计算机断层扫描(CT)被推荐用于评估肌层浸润性和高危 BC 中的淋巴结(LN)转移扩散。然而,放射科医生评估的 CT 成像研究的诊断效果有限。

目的

评估定量放射组学特征在 BC 中检测 LN 转移的性能。

设计、设置和参与者:对 1354 例接受根治性膀胱切除术(RC)伴淋巴结清扫术的 BC 患者进行筛查,筛选出 391 例具有病理淋巴结分期(pN0:n=297;pN+:n=94)的患者,并随机分为训练(n=274)和测试(n=117)队列。手动和自动分割骨盆 LN。从每个 LN 中提取了总共 1004 个放射组学特征,并使用组织病理学标签作为金标准训练机器学习模型以评估 pN 状态。

结局测量和统计分析

使用放射科医生评估与基于手动和自动 LN 分割的放射组学分析比较,检测 BC 中的 LN 转移。使用接收器工作特征曲线法进行统计分析,并根据灵敏度、特异性和曲线下面积(AUC)进行评估。

结果和局限性

总共手动分割了 1845 个 LN。自动分割在测试队列中正确定位了 361/557 个 LN。手动和自动掩模在测试队列中的 AUC 分别为 0.80(95%置信区间 [CI]:0.69-0.91;p=0.64)和 0.70(95%CI:0.58-0.82;p=0.17),与放射科医生评估相比,AUC 为 0.78(95%CI 0.67-0.89)。手动分割的放射组学特征和放射科医生评估的组合模型达到了 0.81(95%CI:0.71-0.92;p=0.63)的 AUC。

结论

放射组学特征可实现高诊断准确性的淋巴结状态区分。基于手动 LN 分割的模型优于完全自动化方法。

患者总结

对于膀胱癌患者,在手术前使用基于计算机的图像分析方法(称为放射组学)评估 CT 扫描,可能有助于标准化和提高淋巴结评估的准确性。这可能是优化治疗方案的有价值工具。

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